Aggregate analysis of text captures performed by multiple users from rendered documents

Information

  • Patent Grant
  • 8515816
  • Patent Number
    8,515,816
  • Date Filed
    Friday, April 1, 2005
    19 years ago
  • Date Issued
    Tuesday, August 20, 2013
    11 years ago
Abstract
A facility for analyzing text capture operation traffic is described. The system receives indications of operations for capturing text from rendered documents performed by a plurality of users. The system performs collective analysis on the received indications, and outputs a result produced by the analysis.
Description
TECHNICAL FIELD

The described technology is directed to the field of document processing.


BACKGROUND

Paper documents have an enduring appeal, as can be seen by the proliferation of paper documents in the computer age. It has never been easier to print and publish paper documents than it is today. Paper documents prevail even though electronic documents are easier to duplicate, transmit, search and edit.


Given the popularity of paper documents and the advantages of electronic documents, it would be useful to combine the benefits of both.





BRIEF DESCRIPTION OF THE DRAWINGS


FIG. 1 is a data flow diagram that illustrates the flow of information in one embodiment of the core system.



FIG. 2 is a component diagram of components included in a typical implementation of the system in the context of a typical operating environment.



FIG. 3 is a block diagram of an embodiment of a scanner.



FIG. 4 is a block diagram showing some of the components typically incorporated in at least some of the computer systems and other devices used by the system.



FIG. 5 is a data flow diagram showing a typical manner in which the system uses context information.





DETAILED DESCRIPTION
Overview

A system for performing aggregate analysis of text captures performed by multiple users from rendered documents (“the system”) is described. The normal use of the system generates a by-product which is exceedingly valuable: the data about who is reading what and when. This datastream allows deductions to be made about the use of documents, the popularity of documents and sections of documents, the users and groups of users who read them, the habits of those readers and the topics of particular interest to them.


Such deductions are of value in offering new services to the readers, in creating and marketing new types of products, in planning new publications, in providing feedback to those producing existing publications and in the marketing and advertising associated with them.


Part I
Introduction

1. Nature of the System


For every paper document that has an electronic counterpart, there exists a discrete amount of information in the paper document that can identify the electronic counterpart. In some embodiments, the system uses a sample of text captured from a paper document, for example using a handheld scanner, to identify and locate an electronic counterpart of the document. In most cases, the amount of text needed by the facility is very small in that a few words of text from a document can often function as an identifier for the paper document and as a link to its electronic counterpart. In addition, the system may use those few words to identify not only the document, but also a location within the document.


Thus, paper documents and their digital counterparts can be associated in many useful ways using the system discussed herein.


1.1. A Quick Overview of the Future


Once the system has associated a piece of text in a paper document with a particular digital entity has been established, the system is able to build a huge amount of functionality on that association.


It is increasingly the case that most paper documents have an electronic counterpart that is accessible on the World Wide Web or from some other online database or document corpus, or can be made accessible, such as in response to the payment of a fee or subscription. At the simplest level, then, when a user scans a few words in a paper document, the system can retrieve that electronic document or some part of it, or display it, email it to somebody, purchase it, print it or post it to a web page. As additional examples, scanning a few words of a book that a person is reading over breakfast could cause the audio-book version in the person's car to begin reading from that point when s/he starts driving to work, or scanning the serial number on a printer cartridge could begin the process of ordering a replacement.


The system implements these and many other examples of “paper/digital integration” without requiring changes to the current processes of writing, printing and publishing documents, giving such conventional rendered documents a whole new layer of digital functionality.


1.2. Terminology


A typical use of the system begins with using an optical scanner to scan text from a paper document, but it is important to note that other methods of capture from other types of document are equally applicable. The system is therefore sometimes described as scanning or capturing text from a rendered document, where those terms are defined as follows:


A rendered document is a printed document or a document shown on a display or monitor. It is a document that is perceptible to a human, whether in permanent form or on a transitory display.


Scanning or capturing is the process of systematic examination to obtain information from a rendered document. The process may involve optical capture using a scanner or camera (for example a camera in a cellphone), or it may involve reading aloud from the document into an audio capture device or typing it on a keypad or keyboard. For more examples, see Section 15.


2. Introduction to the System


This section describes some of the devices, processes and systems that constitute a system for paper/digital integration. In various embodiments, the system builds a wide variety of services and applications on this underlying core that provides the basic functionality.


2.1. The Processes



FIG. 1 is a data flow diagram that illustrates the flow of information in one embodiment of the core system. Other embodiments may not use all of the stages or elements illustrated here, while some will use many more.


Text from a rendered document is captured 100, typically in optical form by an optical scanner or audio form by a voice recorder, and this image or sound data is then processed 102, for example to remove artifacts of the capture process or to improve the signal-to-noise ratio. A recognition process 104 such as OCR, speech recognition, or autocorrelation then converts the data into a signature, comprised in some embodiments of text, text offsets, or other symbols. Alternatively, the system performs an alternate form of extracting document signature from the rendered document. The signature represents a set of possible text transcriptions in some embodiments. This process may be influenced by feedback from other stages, for example, if the search process and context analysis 110 have identified some candidate documents from which the capture may originate, thus narrowing the possible interpretations of the original capture.


A post-processing 106 stage may take the output of the recognition process and filter it or perform such other operations upon it as may be useful. Depending upon the embodiment implemented, it may be possible at this stage to deduce some direct actions 107 to be taken immediately without reference to the later stages, such as where a phrase or symbol has been captured which contains sufficient information in itself to convey the user's intent. In these cases no digital counterpart document need be referenced, or even known to the system.


Typically, however, the next stage will be to construct a query 108 or a set of queries for use in searching. Some aspects of the query construction may depend on the search process used and so cannot be performed until the next stage, but there will typically be some operations, such as the removal of obviously misrecognized or irrelevant characters, which can be performed in advance.


The query or queries are then passed to the search and context analysis stage 110. Here, the system optionally attempts to identify the document from which the original data was captured. To do so, the system typically uses search indices and search engines 112, knowledge about the user 114 and knowledge about the user's context or the context in which the capture occurred 116. Search engine 112 may employ and/or index information specifically about rendered documents, about their digital counterpart documents, and about documents that have a web (internet) presence). It may write to, as well as read from, many of these sources and, as has been mentioned, it may feed information into other stages of the process, for example by giving the recognition system 104 information about the language, font, rendering and likely next words based on its knowledge of the candidate documents.


In some circumstances the next stage will be to retrieve 120 a copy of the document or documents that have been identified. The sources of the documents 124 may be directly accessible, for example from a local filing system or database or a web server, or they may need to be contacted via some access service 122 which might enforce authentication, security or payment or may provide other services such as conversion of the document into a desired format.


Applications of the system may take advantage of the association of extra functionality or data with part or all of a document. For example, advertising applications discussed in Section 10.4 may use an association of particular advertising messages or subjects with portions of a document. This extra associated functionality or data can be thought of as one or more overlays on the document, and is referred to herein as “markup”. The next stage of the process 130, then, is to identify any markup relevant to the captured data. Such markup may be provided by the user, the originator, or publisher of the document, or some other party, and may be directly accessible from some source 132 or may be generated by some service 134. In various embodiments, markup can be associated with, and apply to, a rendered document and/or the digital counterpart to a rendered document, or to groups of either or both of these documents.


Lastly, as a result of the earlier stages, some actions may be taken 140. These may be default actions such as simply recording the information found, they may be dependent on the data or document, or they may be derived from the markup analysis. Sometimes the action will simply be to pass the data to another system. In some cases the various possible actions appropriate to a capture at a specific point in a rendered document will be presented to the user as a menu on an associated display, for example on a local display 332, on a computer display 212 or a mobile phone or PDA display 216. If the user doesn't respond to the menu, the default actions can be taken.


2.2. The Components



FIG. 2 is a component diagram of components included in a typical implementation of the system in the context of a typical operating environment. As illustrated, the operating environment includes one or more optical scanning capture devices 202 or voice capture devices 204. In some embodiments, the same device performs both functions. Each capture device is able to communicate with other parts of the system such as a computer 212 and a mobile station 216 (e.g., a mobile phone or PDA) using either a direct wired or wireless connection, or through the network 220, with which it can communicate using a wired or wireless connection, the latter typically involving a wireless base station 214. In some embodiments, the capture device is integrated in the mobile station, and optionally shares some of the audio and/or optical components used in the device for voice communications and picture-taking.


Computer 212 may include a memory containing computer executable instructions for processing an order from scanning devices 202 and 204. As an example, an order can include an identifier (such as a serial number of the scanning device 202/204 or an identifier that partially or uniquely identifies the user of the scanner), scanning context information (e.g., time of scan, location of scan, etc.) and/or scanned information (such as a text string) that is used to uniquely identify the document being scanned. In alternative embodiments, the operating environment may include more or less components.


Also available on the network 220 are search engines 232, document sources 234, user account services 236, markup services 238 and other network services 239. The network 220 may be a corporate intranet, the public Internet, a mobile phone network or some other network, or any interconnection of the above.


Regardless of the manner by which the devices are coupled to each other, they may all may be operable in accordance with well-known commercial transaction and communication protocols (e.g., Internet Protocol (IP)). In various embodiments, the functions and capabilities of scanning device 202, computer 212, and mobile station 216 may be wholly or partially integrated into one device. Thus, the terms scanning device, computer, and mobile station can refer to the same device depending upon whether the device incorporates functions or capabilities of the scanning device 202, computer 212 and mobile station 216. In addition, some or all of the functions of the search engines 232, document sources 234, user account services 236, markup services 238 and other network services 239 may be implemented on any of the devices and/or other devices not shown.


2.3. The Capture Device


As described above, the capture device may capture text using an optical scanner that captures image data from the rendered document, or using an audio recording device that captures a user's spoken reading of the text, or other methods. Some embodiments of the capture device may also capture images, graphical symbols and icons, etc., including machine readable codes such as barcodes. The device may be exceedingly simple, consisting of little more than the transducer, some storage, and a data interface, relying on other functionality residing elsewhere in the system, or it may be a more full-featured device. For illustration, this section describes a device based around an optical scanner and with a reasonable number of features.


Scanners are well known devices that capture and digitize images. An offshoot of the photocopier industry, the first scanners were relatively large devices that captured an entire document page at once. Recently, portable optical scanners have been introduced in convenient form factors, such as a pen-shaped handheld device.


In some embodiments, the portable scanner is used to scan text, graphics, or symbols from rendered documents. The portable scanner has a scanning element that captures text, symbols, graphics, etc, from rendered documents. In addition to documents that have been printed on paper, in some embodiments, rendered documents include documents that have been displayed on a screen such as a CRT monitor or LCD display.



FIG. 3 is a block diagram of an embodiment of a scanner 302. The scanner 302 comprises an optical scanning head 308 to scan information from rendered documents and convert it to machine-compatible data, and an optical path 306, typically a lens, an aperture or an image conduit to convey the image from the rendered document to the scanning head. The scanning head 308 may incorporate a Charge-Coupled Device (CCD), a Complementary Metal Oxide Semiconductor (CMOS) imaging device, or an optical sensor of another type.


A microphone 310 and associated circuitry convert the sound of the environment (including spoken words) into machine-compatible signals, and other input facilities exist in the form of buttons, scroll-wheels or other tactile sensors such as touch-pads 314.


Feedback to the user is possible through a visual display or indicator lights 332, through a loudspeaker or other audio transducer 334 and through a vibrate module 336.


The scanner 302 comprises logic 326 to interact with the various other components, possibly processing the received signals into different formats and/or interpretations. Logic 326 may be operable to read and write data and program instructions stored in associated storage 330 such as RAM, ROM, flash, or other suitable memory. It may read a time signal from the clock unit 328. The scanner 302 also includes an interface 316 to communicate scanned information and other signals to a network and/or an associated computing device. In some embodiments, the scanner 302 may have an on-board power supply 332. In other embodiments, the scanner 302 may be powered from a tethered connection to another device, such as a Universal Serial Bus (USB) connection.


As an example of one use of scanner 302, a reader may scan some text from a newspaper article with scanner 302. The text is scanned as a bit-mapped image via the scanning head 308. Logic 326 causes the bit-mapped image to be stored in memory 330 with an associated time-stamp read from the clock unit 328. Logic 326 may also perform optical character recognition (OCR) or other post-scan processing on the bit-mapped image to convert it to text. Logic 326 may optionally extract a signature from the image, for example by performing a convolution-like process to locate repeating occurrences of characters, symbols or objects, and determine the distance or number of other characters, symbols, or objects between these repeated elements. The reader may then upload the bit-mapped image (or text or other signature, if post-scan processing has been performed by logic 326) to an associated computer via interface 316.


As an example of another use of scanner 302, a reader may capture some text from an article as an audio file by using microphone 310 as an acoustic capture port. Logic 326 causes audio file to be stored in memory 328. Logic 326 may also perform voice recognition or other post-scan processing on the audio file to convert it to text. As above, the reader may then upload the audio file (or text produced by post-scan processing performed by logic 326) to an associated computer via interface 316.


Part II
Overview of the Areas of the Core System

As paper-digital integration becomes more common, there are many aspects of existing technologies that can be changed to take better advantage of this integration, or to enable it to be implemented more effectively. This section highlights some of those issues.


3. Search


Searching a corpus of documents, even so large a corpus as the World Wide Web, has become commonplace for ordinary users, who use a keyboard to construct a search query which is sent to a search engine. This section and the next discuss the aspects of both the construction of a query originated by a capture from a rendered document, and the search engine that handles such a query.


3.1. Scan/Speak/Type as Search Query


Use of the described system typically starts with a few words being captured from a rendered document using any of several methods, including those mentioned in Section 1.2 above. Where the input needs some interpretation to convert it to text, for example in the case of OCR or speech input, there may be end-to-end feedback in the system so that the document corpus can be used to enhance the recognition process. End-to-end feedback can be applied by performing an approximation of the recognition or interpretation, identifying a set of one or more candidate matching documents, and then using information from the possible matches in the candidate documents to further refine or restrict the recognition or interpretation. Candidate documents can be weighted according to their probable relevance (for example, based on then number of other users who have scanned in these documents, or their popularity on the Internet), and these weights can be applied in this iterative recognition process.


3.2. Short Phrase Searching


Because the selective power of a search query based on a few words is greatly enhanced when the relative positions of these words are known, only a small amount of text need be captured for the system to identify the text's location in a corpus. Most commonly, the input text will be a contiguous sequence of words, such as a short phrase.

  • 3.2.1. Finding Document and Location in Document from Short Capture


In addition to locating the document from which a phrase originates, the system can identify the location in that document and can take action based on this knowledge.


3.2.2. Other Methods of Finding Location


The system may also employ other methods of discovering the document and location, such as by using watermarks or other special markings on the rendered document.


3.3. Incorporation of Other Factors in Search Query


In addition to the captured text, other factors (i.e., information about user identity, profile, and context) may form part of the search query, such as the time of the capture, the identity and geographical location of the user, knowledge of the user's habits and recent activities, etc.


The document identity and other information related to previous captures, especially if they were quite recent, may form part of a search query.


The identity of the user may be determined from a unique identifier associated with a capturing device, and/or biometric or other supplemental information (speech patterns, fingerprints, etc.).


3.4. Knowledge of Nature of Unreliability in Search Query (OCR Errors Etc)


The search query can be constructed taking into account the types of errors likely to occur in the particular capture method used. One example of this is an indication of suspected errors in the recognition of specific characters; in this instance a search engine may treat these characters as wildcards, or assign them a lower priority.


3.5. Local Caching of Index for Performance/Offline Use


Sometimes the capturing device may not be in communication with the search engine or corpus at the time of the data capture. For this reason, information helpful to the offline use of the device may be downloaded to the device in advance, or to some entity with which the device can communicate. In some cases, all or a substantial part of an index associated with a corpus may be downloaded. This topic is discussed further in Section 15.3.


3.6. Queries, in Whatever Form, May be Recorded and Acted on Later


If there are likely to be delays or cost associated with communicating a query or receiving the results, this pre-loaded information can improve the performance of the local device, reduce communication costs, and provide helpful and timely user feedback.


In the situation where no communication is available (the local device is “offline”), the queries may be saved and transmitted to the rest of the system at such a time as communication is restored.


In these cases it may be important to transmit a timestamp with each query. The time of the capture can be a significant factor in the interpretation of the query. For example, Section 13.1 discusses the importance of the time of capture in relation to earlier captures. It is important to note that the time of capture will not always be the same as the time that the query is executed.


3.7. Parallel Searching


For performance reasons, multiple queries may be launched in response to a single capture, either in sequence or in parallel. Several queries may be sent in response to a single capture, for example as new words are added to the capture, or to query multiple search engines in parallel.


For example, in some embodiments, the system sends queries to a special index for the current document, to a search engine on a local machine, to a search engine on the corporate network, and to remote search engines on the Internet.


The results of particular searches may be given higher priority than those from others.


The response to a given query may indicate that other pending queries are superfluous; these may be cancelled before completion.


4. Paper and Search Engines


Often it is desirable for a search engine that handles traditional online queries also to handle those originating from rendered documents. Conventional search engines may be enhanced or modified in a number of ways to make them more suitable for use with the described system.


The search engine and/or other components of the system may create and maintain indices that have different or extra features. The system may modify an incoming paper-originated query or change the way the query is handled in the resulting search, thus distinguishing these paper-originated queries from those coming from queries typed into web browsers and other sources. And the system may take different actions or offer different options when the results are returned by the searches originated from paper as compared to those from other sources. Each of these approaches is discussed below.


4.1. Indexing


Often, the same index can be searched using either paper-originated or traditional queries, but the index may be enhanced for use in the current system in a variety of ways.


4.1.1. Knowledge about the Paper Form


Extra fields can be added to such an index that will help in the case of a paper-based search.


Index Entry Indicating Document Availability in Paper Form


The first example is a field indicating that the document is known to exist or be distributed in paper form. The system may give such documents higher priority if the query comes from paper.


Knowledge of Popularity Paper Form


In this example statistical data concerning the popularity of paper documents (and, optionally, concerning sub-regions within these documents)—for example the amount of scanning activity, circulation numbers provided by the publisher or other sources, etc—is used to give such documents higher priority, to boost the priority of digital counterpart documents (for example, for browser-based queries or web searches), etc.


Knowledge of Rendered Format


Another important example may be recording information about the layout of a specific rendering of a document.


For a particular edition of a book, for example, the index may include information about where the line breaks and page breaks occur, which fonts were used, any unusual capitalization.


The index may also include information about the proximity of other items on the page, such as images, text boxes, tables and advertisements.


Use of Semantic Information in Original


Lastly, semantic information that can be deduced from the source markup but is not apparent in the paper document, such as the fact that a particular piece of text refers to an item offered for sale, or that a certain paragraph contains program code, may also be recorded in the index.


4.1.2. Indexing in the Knowledge of the Capture Method


A second factor that may modify the nature of the index is the knowledge of the type of capture likely to be used. A search initiated by an optical scan may benefit if the index takes into account characters that are easily confused in the OCR process, or includes some knowledge of the fonts used in the document. Similarly, if the query is from speech recognition, an index based on similar-sounding phonemes may be much more efficiently searched. An additional factor that may affect the use of the index in the described model is the importance of iterative feedback during the recognition process. If the search engine is able to provide feedback from the index as the text is being captured, it can greatly increase the accuracy of the capture.


Indexing Using Offsets


If the index is likely to be searched using the offset-based/autocorrelation OCR methods described in Section 9, in some embodiments, the system stores the appropriate offset or signature information in an index.


4.1.3. Multiple Indices


Lastly, in the described system, it may be common to conduct searches on many indices. Indices may be maintained on several machines on a corporate network. Partial indices may be downloaded to the capture device, or to a machine close to the capture device. Separate indices may be created for users or groups of users with particular interests, habits or permissions. An index may exist for each filesystem, each directory, even each file on a user's hard disk. Indexes are published and subscribed to by users and by systems. It will be important, then, to construct indices that can be distributed, updated, merged and separated efficiently.


4.2. Handling the Queries


4.2.1. Knowing the Capture is from Paper


A search engine may take different actions when it recognizes that a search query originated from a paper document. The engine might handle the query in a way that is more tolerant to the types of errors likely to appear in certain capture methods, for example.


It may be able to deduce this from some indicator included in the query (for example a flag indicating the nature of the capture), or it may deduce this from the query itself (for example, it may recognize errors or uncertainties typical of the OCR process).


Alternatively, queries from a capture device can reach the engine by a different channel or port or type of connection than those from other sources, and can be distinguished in that way. For example, some embodiments of the system will route queries to the search engine by way of a dedicated gateway. Thus, the search engine knows that all queries passing through the dedicated gateway were originated from a paper document.


4.2.2. Use of Context


Section 13 below describes a variety of different factors which are external to the captured text itself, yet which can be a significant aid in identifying a document. These include such things as the history of recent scans, the longer-term reading habits of a particular user, the geographic location of a user and the user's recent use of particular electronic documents. Such factors are referred to herein as “context”.


Some of the context may be handled by the search engine itself, and be reflected in the search results. For example, the search engine may keep track of a user's scanning history, and may also cross-reference this scanning history to conventional keyboard-based queries. In such cases, the search engine maintains and uses more state information about each individual user than do most conventional search engines, and each interaction with a search engine may be considered to extend over several searches and a longer period of time than is typical today.


Some of the context may be transmitted to the search engine in the search query (Section 3.3), and may possibly be stored at the engine so as to play a part in future queries. Lastly, some of the context will best be handled elsewhere, and so becomes a filter or secondary search applied to the results from the search engine.


Data-Stream Input to Search


An important input into the search process is the broader context of how the community of users is interacting with the rendered version of the document—for example, which documents are most widely read and by whom. There are analogies with a web search returning the pages that are most frequently linked to, or those that are most frequently selected from past search results. For further discussion of this topic, see Sections 13.4 and 14.2.


4.2.3. Document Sub-Regions


The described system can emit and use not only information about documents as a whole, but also information about sub-regions of documents, even down to individual words. Many existing search engines concentrate simply on locating a document or file that is relevant to a particular query. Those that can work on a finer grain and identify a location within a document will provide a significant benefit for the described system.


4.3. Returning the Results


The search engine may use some of the further information it now maintains to affect the results returned.


The system may also return certain documents to which the user has access only as a result of being in possession of the paper copy (Section 7.4).


The search engine may also offer new actions or options appropriate to the described system, beyond simple retrieval of the text.


5. Markup, Annotations and Metadata


In addition to performing the capture-search-retrieve process, the described system also associates extra functionality with a document, and in particular with specific locations or segments of text within a document. This extra functionality is often, though not exclusively, associated with the rendered document by being associated with its electronic counterpart. As an example, hyperlinks in a web page could have the same functionality when a printout of that web page is scanned. In some cases, the functionality is not defined in the electronic document, but is stored or generated elsewhere.


This layer of added functionality is referred to herein as “markup”.


5.1. Overlays, Static and Dynamic


One way to think of the markup is as an “overlay” on the document, which provides further information about—and may specify actions associated with—the document or some portion of it. The markup may include human-readable content, but is often invisible to a user and/or intended for machine use. Examples include options to be displayed in a popup-menu on a nearby display when a user captures text from a particular area in a rendered document, or audio samples that illustrate the pronunciation of a particular phrase.


5.1.1. Several Layers, Possibly from Several Sources


Any document may have multiple overlays simultaneously, and these may be sourced from a variety of locations. Markup data may be created or supplied by the author of the document, or by the user, or by some other party.


Markup data may be attached to the electronic document or embedded in it. It may be found in a conventional location (for example, in the same place as the document but with a different filename suffix). Markup data may be included in the search results of the query that located the original document, or may be found by a separate query to the same or another search engine. Markup data may be found using the original captured text and other capture information or contextual information, or it may be found using already-deduced information about the document and location of the capture. Markup data may be found in a location specified in the document, even if the markup itself is not included in the document.


The markup may be largely static and specific to the document, similar to the way links on a traditional html web page are often embedded as static data within the html document, but markup may also be dynamically generated and/or applied to a large number of documents. An example of dynamic markup is information attached to a document that includes the up-to-date share price of companies mentioned in that document. An example of broadly applied markup is translation information that is automatically available on multiple documents or sections of documents in a particular language.


5.1.2. Personal “Plug-In” Layers


Users may also install, or subscribe to particular sources of, markup data, thus personalizing the system's response to particular captures.


5.2. Keywords and Phrases, Trademarks and Logos


Some elements in documents may have particular “markup” or functionality associated with them based on their own characteristics rather than their location in a particular document. Examples include special marks that are printed in the document purely for the purpose of being scanned, as well as logos and trademarks that can link the user to further information about the organization concerned. The same applies to “keywords” or “key phrases” in the text. Organizations might register particular phrases with which they are associated, or with which they would like to be associated, and attach certain markup to them that would be available wherever that phrase was scanned.


Any word, phrase, etc. may have associated markup. For example, the system may add certain items to a pop-up menu (e.g., a link to an online bookstore) whenever the user captures the word “book,” or the title of a book, or a topic related to books. In some embodiments, of the system, digital counterpart documents or indices are consulted to determine whether a capture occurred near the word “book,” or the title of a book, or a topic related to books—and the system behavior is modified in accordance with this proximity to keyword elements. In the preceding example, note that markup enables data captured from non-commercial text or documents to trigger a commercial transaction.


5.3. User-Supplied Content


5.3.1. User Comments and Annotations, Including Multimedia


Annotations are another type of electronic information that may be associated with a document. For example, a user can attach an audio file of his/her thoughts about a particular document for later retrieval as voice annotations. As another example of a multimedia annotation, a user may attach photographs of places referred to in the document. The user generally supplies annotations for the document but the system can associate annotations from other sources (for example, other users in a work group may share annotations).


5.3.2. Notes from Proof-Reading


An important example of user-sourced markup is the annotation of paper documents as part of a proofreading, editing or reviewing process.


5.4. Third-Party Content


As mentioned earlier, markup data may often be supplied by third parties, such as by other readers of the document. Online discussions and reviews are a good example, as are community-managed information relating to particular works, volunteer-contributed translations and explanations.


Another example of third-party markup is that provided by advertisers.


5.5. Dynamic Markup Based on Other Users' Data Streams


By analyzing the data captured from documents by several or all users of the system, markup can be generated based on the activities and interests of a community. An example might be an online bookstore that creates markup or annotations that tell the user, in effect, “People who enjoyed this book also enjoyed . . . ”. The markup may be less anonymous, and may tell the user which of the people in his/her contact list have also read this document recently. Other examples of datastream analysis are included in Section 14.


5.6. Markup Based on External Events and Data Sources


Markup will often be based on external events and data sources, such as input from a corporate database, information from the public Internet, or statistics gathered by the local operating system.


Data sources may also be more local, and in particular may provide information about the user's context—his/her identity, location and activities. For example, the system might communicate with the user's mobile phone and offer a markup layer that gives the user the option to send a document to somebody that the user has recently spoken to on the phone.


6. Authentication, Personalization and Security


In many situations, the identity of the user will be known. Sometimes this will be an “anonymous identity”, where the user is identified only by the serial number of the capture device, for example. Typically, however, it is expected that the system will have a much more detailed knowledge of the user, which can be used for personalizing the system and to allow activities and transactions to be performed in the user's name.


6.1. User History and “Life Library”


One of the simplest and yet most useful functions that the system can perform is to keep a record for a user of the text that s/he has captured and any further information related to that capture, including the details of any documents found, the location within that document and any actions taken as a result.


This stored history is beneficial for both the user and the system.


6.1.1. For the User


The user can be presented with a “Life Library”, a record of everything s/he has read and captured. This may be simply for personal interest, but may be used, for example, in a library by an academic who is gathering material for the bibliography of his next paper.


In some circumstances, the user may wish to make the library public, such as by publishing it on the web in a similar manner to a weblog, so that others may see what s/he is reading and finds of interest.


Lastly, in situations where the user captures some text and the system cannot immediately act upon the capture (for example, because an electronic version of the document is not yet available) the capture can be stored in the library and can be processed later, either automatically or in response to a user request. A user can also subscribe to new markup services and apply them to previously captured scans.


6.1.2. For the System


A record of a user's past captures is also useful for the system. Many aspects of the system operation can be enhanced by knowing the user's reading habits and history. The simplest example is that any scan made by a user is more likely to come from a document that the user has scanned in the recent past, and in particular if the previous scan was within the last few minutes it is very likely to be from the same document. Similarly, it is more likely that a document is being read in start-to-finish order. Thus, for English documents, it is also more likely that later scans will occur farther down in the document. Such factors can help the system establish the location of the capture in cases of ambiguity, and can also reduce the amount of text that needs to be captured.


6.2. Scanner as Payment, Identity and Authentication Device


Because the capture process generally begins with a device of some sort, typically an optical scanner or voice recorder, this device may be used as a key that identifies the user and authorizes certain actions.


6.2.1. Associate Scanner with Phone or Other Account


The device may be embedded in a mobile phone or in some other way associated with a mobile phone account. For example, a scanner may be associated with a mobile phone account by inserting a SIM card associated with the account into the scanner. Similarly, the device may be embedded in a credit card or other payment card, or have the facility for such a card to be connected to it. The device may therefore be used as a payment token, and financial transactions may be initiated by the capture from the rendered document.


6.2.2. Using Scanner Input for Authentication


The scanner may also be associated with a particular user or account through the process of scanning some token, symbol or text associated with that user or account. In addition, scanner may be used for biometric identification, for example by scanning the fingerprint of the user. In the case of an audio-based capture device, the system may identify the user by matching the voice pattern of the user or by requiring the user to speak a certain password or phrase.


For example, where a user scans a quote from a book and is offered the option to buy the book from an online retailer, the user can select this option, and is then prompted to scan his/her fingerprint to confirm the transaction.


See also Sections 15.5 and 15.6.


6.2.3. Secure Scanning Device


When the capture device is used to identify and authenticate the user, and to initiate transactions on behalf of the user, it is important that communications between the device and other parts of the system are secure. It is also important to guard against such situations as another device impersonating a scanner, and so-called “man in the middle” attacks where communications between the device and other components are intercepted.


Techniques for providing such security are well understood in the art; in various embodiments, the hardware and software in the device and elsewhere in the system are configured to implement such techniques.


7. Publishing Models and Elements


An advantage of the described system is that there is no need to alter the traditional processes of creating, printing or publishing documents in order to gain many of the system's benefits. There are reasons, though, that the creators or publishers of a document—hereafter simply referred to as the “publishers”—may wish to create functionality to support the described system.


This section is primarily concerned with the published documents themselves. For information about other related commercial transactions, such as advertising, see Section 10 entitled “P-Commerce”.


7.1. Electronic Companions to Printed Documents


The system allows for printed documents to have an associated electronic presence. Conventionally publishers often ship a CD-ROM with a book that contains further digital information, tutorial movies and other multimedia data, sample code or documents, or further reference materials. In addition, some publishers maintain web sites associated with particular publications which provide such materials, as well as information which may be updated after the time of publishing, such as errata, further comments, updated reference materials, bibliographies and further sources of relevant data, and translations into other languages. Online forums allow readers to contribute their comments about the publication.


The described system allows such materials to be much more closely tied to the rendered document than ever before, and allows the discovery of and interaction with them to be much easier for the user. By capturing a portion of text from the document, the system can automatically connect the user to digital materials associated with the document, and more particularly associated with that specific part of the document. Similarly, the user can be connected to online communities that discuss that section of the text, or to annotations and commentaries by other readers. In the past, such information would typically need to be found by searching for a particular page number or chapter.


An example application of this is in the area of academic textbooks (Section 17.5).


7.2. “Subscriptions” to Printed Documents


Some publishers may have mailing lists to which readers can subscribe if they wish to be notified of new relevant matter or when a new edition of the book is published. With the described system, the user can register an interest in particular documents or parts of documents more easily, in some cases even before the publisher has considered providing any such functionality. The reader's interest can be fed to the publisher, possibly affecting their decision about when and where to provide updates, further information, new editions or even completely new publications on topics that have proved to be of interest in existing books.


7.3. Printed Marks with Special Meaning or Containing Special Data


Many aspects of the system are enabled simply through the use of the text already existing in a document. If the document is produced in the knowledge that it may be used in conjunction with the system, however, extra functionality can be added by printing extra information in the form of special marks, which may be used to identify the text or a required action more closely, or otherwise enhance the document's interaction with the system. The simplest and most important example is an indication to the reader that the document is definitely accessible through the system. A special icon might be used, for example, to indicate that this document has an online discussion forum associated with it.


Such symbols may be intended purely for the reader, or they may be recognized by the system when scanned and used to initiate some action. Sufficient data may be encoded in the symbol to identify more than just the symbol: it may also store information, for example about the document, edition, and location of the symbol, which could be recognized and read by the system.


7.4. Authorization Through Possession of the Paper Document


There are some situations where possession of or access to the printed document would entitle the user to certain privileges, for example, the access to an electronic copy of the document or to additional materials. With the described system, such privileges could be granted simply as a result of the user capturing portions of text from the document, or scanning specially printed symbols. In cases where the system needed to ensure that the user was in possession of the entire document, it might prompt the user to scan particular items or phrases from particular pages, e.g. “the second line of page 46”.


7.5. Documents which Expire


If the printed document is a gateway to extra materials and functionality, access to such features can also be time-limited. After the expiry date, a user may be required to pay a fee or obtain a newer version of the document to access the features again. The paper document will, of course, still be usable, but will lose some of its enhanced electronic functionality. This may be desirable, for example, because there is profit for the publisher in receiving fees for access to electronic materials, or in requiring the user to purchase new editions from time to time, or because there are disadvantages associated with outdated versions of the printed document remaining in circulation. Coupons are an example of a type of commercial document that can have an expiration date.


7.6. Popularity Analysis and Publishing Decisions


Section 10.5 discusses the use of the system's statistics to influence compensation of authors and pricing of advertisements.


In some embodiments, the system deduces the popularity of a publication from the activity in the electronic community associated with it as well as from the use of the paper document. These factors may help publishers to make decisions about what they will publish in future. If a chapter in an existing book, for example, turns out to be exceedingly popular, it may be worth expanding into a separate publication.


8. Document Access Services


An important aspect of the described system is the ability to provide to a user who has access to a rendered copy of a document access to an electronic version of that document. In some cases, a document is freely available on a public network or a private network to which the user has access. The system uses the captured text to identify, locate and retrieve the document, in some cases displaying it on the user's screen or depositing it in their email inbox.


In some cases, a document will be available in electronic form, but for a variety of reasons may not be accessible to the user. There may not be sufficient connectivity to retrieve the document, the user may not be entitled to retrieve it, there may be a cost associated with gaining access to it, or the document may have been withdrawn and possibly replaced by a new version, to name just a few possibilities. The system typically provides feedback to the user about these situations.


As mentioned in Section 7.4, the degree or nature of the access granted to a particular user may be different if it is known that the user already has access to a printed copy of the document.


8.1. Authenticated Document Access


Access to the document may be restricted to specific users, or to those meeting particular criteria, or may only be available in certain circumstances, for example when the user is connected to a secure network. Section 6 describes some of the ways in which the credentials of a user and scanner may be established.


8.2. Document Purchase—Copyright-Owner Compensation


Documents that are not freely available to the general public may still be accessible on payment of a fee, often as compensation to the publisher or copyright-holder. The system may implement payment facilities directly or may make use of other payment methods associated with the user, including those described in Section 6.2.


8.3. Document Escrow and Proactive Retrieval


Electronic documents are often transient; the digital source version of a rendered document may be available now but inaccessible in future. The system may retrieve and store the existing version on behalf of the user, even if the user has not requested it, thus guaranteeing its availability should the user request it in future. This also makes it available for the system's use, for example for searching as part of the process of identifying future captures.


In the event that payment is required for access to the document, a trusted “document escrow” service can retrieve the document on behalf of the user, such as upon payment of a modest fee, with the assurance that the copyright holder will be fully compensated in future if the user should ever request the document from the service.


Variations on this theme can be implemented if the document is not available in electronic form at the time of capture. The user can authorize the service to submit a request for or make a payment for the document on his/her behalf if the electronic document should become available at a later date.


8.4. Association with Other Subscriptions and Accounts


Sometimes payment may be waived, reduced or satisfied based on the user's existing association with another account or subscription. Subscribers to the printed version of a newspaper might automatically be entitled to retrieve the electronic version, for example.


In other cases, the association may not be quite so direct: a user may be granted access based on an account established by their employer, or based on their scanning of a printed copy owned by a friend who is a subscriber.


8.5. Replacing Photocopying with Scan-and-Print


The process of capturing text from a paper document, identifying an electronic original, and printing that original, or some portion of that original associated with the capture, forms an alternative to traditional photocopying with many advantages:

    • the paper document need not be in the same location as the final printout, and in any case need not be there at the same time
    • the wear and damage caused to documents by the photocopying process, especially to old, fragile and valuable documents, can be avoided
    • the quality of the copy is typically be much higher
    • records may be kept about which documents or portions of documents are the most frequently copied
    • payment may be made to the copyright owner as part of the process
    • unauthorized copying may be prohibited


8.6. Locating Valuable Originals from Photocopies


When documents are particularly valuable, as in the case of legal instruments or documents that have historical or other particular significance, people may typically work from copies of those documents, often for many years, while the originals are kept in a safe location.


The described system could be coupled to a database which records the location of an original document, for example in an archiving warehouse, making it easy for somebody with access to a copy to locate the archived original paper document.


9. Text Recognition Technologies


Optical Character Recognition (OCR) technologies have traditionally focused on images that include a large amount of text, for example from a flat-bed scanner capturing a whole page. OCR technologies often need substantial training and correcting by the user to produce useful text. OCR technologies often require substantial processing power on the machine doing the OCR, and, while many systems use a dictionary, they are generally expected to operate on an effectively infinite vocabulary.


All of the above traditional characteristics may be improved upon in the described system.


While this section focuses on OCR, many of the issues discussed map directly onto other recognition technologies, in particular speech recognition. As mentioned in Section 3.1, the process of capturing from paper may be achieved by a user reading the text aloud into a device which captures audio. Those skilled in the art will appreciate that principles discussed here with respect to images, fonts, and text fragments often also apply to audio samples, user speech models and phonemes.


9.1. Optimization for Appropriate Devices


A scanning device for use with the described system will often be small, portable, and low power. The scanning device may capture only a few words at a time, and in some implementations does not even capture a whole character at once, but rather a horizontal slice through the text, many such slices being stitched together to form a recognizable signal from which the text may be deduced. The scanning device may also have very limited processing power or storage so, while in some embodiments it may perform all of the OCR process itself, many embodiments will depend on a connection to a more powerful device, possibly at a later time, to convert the captured signals into text. Lastly, it may have very limited facilities for user interaction, so may need to defer any requests for user input until later, or operate in a “best-guess” mode to a greater degree than is common now.


9.2. “Uncertain” OCR


The primary new characteristic of OCR within the described system is the fact that it will, in general, examine images of text which exists elsewhere and which may be retrieved in digital form. An exact transcription of the text is therefore not always required from the OCR engine. The OCR system may output a set or a matrix of possible matches, in some cases including probability weightings, which can still be used to search for the digital original.


9.3. Iterative OCR—Guess, Disambiguate, Guess . . .


If the device performing the recognition is able to contact the document index at the time of processing, then the OCR process can be informed by the contents of the document corpus as it progresses, potentially offering substantially greater recognition accuracy.


Such a connection will also allow the device to inform the user when sufficient text has been captured to identify the digital source.


9.4. Using Knowledge of Likely Rendering


When the system has knowledge of aspects of the likely printed rendering of a document—such as the font typeface used in printing, or the layout of the page, or which sections are in italics—this too can help in the recognition process. (Section 4.1.1)


9.5. Font Caching—Determine Font on Host, Download to Client


As candidate source texts in the document corpus are identified, the font, or a rendering of it, may be downloaded to the device to help with the recognition.


9.6. Autocorrelation and Character Offsets


While component characters of a text fragment may be the most recognized way to represent a fragment of text that may be used as a document signature, other representations of the text may work sufficiently well that the actual text of a text fragment need not be used when attempting to locate the text fragment in a digital document and/or database, or when disambiguating the representation of a text fragment into a readable form. Other representations of text fragments may provide benefits that actual text representations lack. For example, optical character recognition of text fragments is often prone to errors, unlike other representations of captured text fragments that may be used to search for and/or recreate a text fragment without resorting to optical character recognition for the entire fragment. Such methods may be more appropriate for some devices used with the current system.


Those of ordinary skill in the art and others will appreciate that there are many ways of describing the appearance of text fragments. Such characterizations of text fragments may include, but are not limited to, word lengths, relative word lengths, character heights, character widths, character shapes, character frequencies, token frequencies, and the like. In some embodiments, the offsets between matching text tokens (i.e., the number of intervening tokens plus one) are used to characterize fragments of text.


Conventional OCR uses knowledge about fonts, letter structure and shape to attempt to determine characters in scanned text. Embodiments of the present invention are different; they employ a variety of methods that use the rendered text itself to assist in the recognition process. These embodiments use characters (or tokens) to “recognize each other.” One way to refer to such self-recognition is “template matching,” and is similar to “convolution.” To perform such self-recognition, the system slides a copy of the text horizontally over itself and notes matching regions of the text images. Prior template matching and convolution techniques encompass a variety of related techniques. These techniques to tokenize and/or recognize characters/tokens will be collectively referred to herein as “autocorrelation,” as the text is used to correlate with its own component parts when matching characters/tokens.


When autocorrelating, complete connected regions that match are of interest. This occurs when characters (or groups of characters) overlay other instances of the same character (or group). Complete connected regions that match automatically provide tokenizing of the text into component tokens. As the two copies of the text are slid past each other, the regions where perfect matching occurs (i.e., all pixels in a vertical slice are matched) are noted. When a character/token matches itself, the horizontal extent of this matching (e.g., the connected matching portion of the text) also matches.


Note that at this stage there is no need to determine the actual identity of each token (i.e., the particular letter, digit or symbol, or group of these, that corresponds to the token image), only the offset to the next occurrence of the same token in the scanned text. The offset number is the distance (number of tokens) to the next occurrence of the same token. If the token is unique within the text string, the offset is zero (0). The sequence of token offsets thus generated is a signature that can be used to identify the scanned text.


In some embodiments, the token offsets determined for a string of scanned tokens are compared to an index that indexes a corpus of electronic documents based upon the token offsets of their contents (Section 4.1.2). In other embodiments, the token offsets determined for a string of scanned tokens are converted to text, and compared to a more conventional index that indexes a corpus of electronic documents based upon their contents


As has been noted earlier, a similar token-correlation process may be applied to speech fragments when the capture process consists of audio samples of spoken words.


9.7. Font/Character “Self-Recognition”


Conventional template-matching OCR compares scanned images to a library of character images. In essence, the alphabet is stored for each font and newly scanned images are compared to the stored images to find matching characters. The process generally has an initial delay until the correct font has been identified. After that, the OCR process is relatively quick because most documents use the same font throughout. Subsequent images can therefore be converted to text by comparison with the most recently identified font library.


The shapes of characters in most commonly used fonts are related. For example, in most fonts, the letter “c” and the letter “e” are visually related—as are “t” and “f”, etc. The OCR process is enhanced by use of this relationship to construct templates for letters that have not been scanned yet. For example, where a reader scans a short string of text from a paper document in a previously unencountered font such that the system does not have a set of image templates with which to compare the scanned images the system can leverage the probable relationship between certain characters to construct the font template library even though it has not yet encountered all of the letters in the alphabet. The system can then use the constructed font template library to recognize subsequent scanned text and to further refine the constructed font library.


9.8. Send Anything Unrecognized (Including Graphics) to Server


When images cannot be machine-transcribed into a form suitable for use in a search process, the images themselves can be saved for later use by the user, for possible manual transcription, or for processing at a later date when different resources may be available to the system.


10. P-Commerce


Many of the actions made possible by the system result in some commercial transaction taking place. The phrase p-commerce is used herein to describe commercial activities initiated from paper via the system.


10.1. Sales of Documents from their Physical Printed Copies


When a user captures text from a document, the user may be offered that document for purchase either in paper or electronic form. The user may also be offered related documents, such as those quoted or otherwise referred to in the paper document, or those on a similar subject, or those by the same author.


10.2. Sales of Anything Else Initiated or Aided by Paper


The capture of text may be linked to other commercial activities in a variety of ways. The captured text may be in a catalog that is explicitly designed to sell items, in which case the text will be associated fairly directly with the purchase of an item (Section 18.2). The text may also be part of an advertisement, in which case a sale of the item being advertised may ensue.


In other cases, the user captures other text from which their potential interest in a commercial transaction may be deduced. A reader of a novel set in a particular country, for example, might be interested in a holiday there. Someone reading a review of a new car might be considering purchasing it. The user may capture a particular fragment of text knowing that some commercial opportunity will be presented to them as a result, or it may be a side-effect of their capture activities.


10.3. Capture of Labels, Icons, Serial Numbers, Barcodes on an Item Resulting in a Sale


Sometimes text or symbols are actually printed on an item or its packaging. An example is the serial number or product id often found on a label on the back or underside of a piece of electronic equipment. The system can offer the user a convenient way to purchase one or more of the same items by capturing that text. They may also be offered manuals, support or repair services.


10.4. Contextual Advertisements


In addition to the direct capture of text from an advertisement, the system allows for a new kind of advertising which is not necessarily explicitly in the rendered document, but is nonetheless based on what people are reading.


10.4.1. Advertising Based on Scan Context and History


In a traditional paper publication, advertisements generally consume a large amount of space relative to the text of a newspaper article, and a limited number of them can be placed around a particular article. In the described system, advertising can be associated with individual words or phrases, and can selected according to the particular interest the user has shown by capturing that text and possibly taking into account their history of past scans.


With the described system, it is possible for a purchase to be tied to a particular printed document and for an advertiser to get significantly more feedback about the effectiveness of their advertising in particular print publications.


10.4.2. Advertising Based on User Context and History


The system may gather a large amount of information about other aspects of a user's context for its own use (Section 13); estimates of the geographical location of the user are a good example. Such data can also be used to tailor the advertising presented to a user of the system.


10.5. Models of Compensation


The system enables some new models of compensation for advertisers and marketers. The publisher of a printed document containing advertisements may receive some income from a purchase that originated from their document. This may be true whether or not the advertisement existed in the original printed form; it may have been added electronically either by the publisher, the advertiser or some third party, and the sources of such advertising may have been subscribed to by the user.


10.5.1. Popularity-Based Compensation


Analysis of the statistics generated by the system can reveal the popularity of certain parts of a publication (Section 14.2). In a newspaper, for example, it might reveal the amount of time readers spend looking at a particular page or article, or the popularity of a particular columnist. In some circumstances, it may be appropriate for an author or publisher to receive compensation based on the activities of the readers rather than on more traditional metrics such as words written or number of copies distributed. An author whose work becomes a frequently read authority on a subject might be considered differently in future contracts from one whose books have sold the same number of copies but are rarely opened. (See also Section 7.6)


10.5.2. Popularity-Based Advertising


Decisions about advertising in a document may also be based on statistics about the readership. The advertising space around the most popular columnists may be sold at a premium rate. Advertisers might even be charged or compensated some time after the document is published based on knowledge about how it was received.


10.6. Marketing Based on Life Library


The “Life Library” or scan history described in Sections 6.1 and 16.1 can be an extremely valuable source of information about the interests and habits of a user. Subject to the appropriate consent and privacy issues, such data can inform offers of goods or services to the user. Even in an anonymous form, the statistics gathered can be exceedingly useful.


10.7. Sale/Information at Later Date (when Available)


Advertising and other opportunities for commercial transactions may not be presented to the user immediately at the time of text capture. For example, the opportunity to purchase a sequel to a novel may not be available at the time the user is reading the novel, but the system may present them with that opportunity when the sequel is published.


A user may capture data that relates to a purchase or other commercial transaction, but may choose not to initiate and/or complete the transaction at the time the capture is made. In some embodiments, data related to captures is stored in a user's Life Library, and these Life Library entries can remain “active” (i.e., capable of subsequent interactions similar to those available at the time the capture was made). Thus a user may review a capture at some later time, and optionally complete a transaction based on that capture. Because the system can keep track of when and where the original capture occurred, all parties involved in the transaction can be properly compensated. For example, the author who wrote the story—and the publisher who published the story—that appeared next to the advertisement from which the user captured data can be compensated when, six months later, the user visits their Life Library, selects that particular capture from the history, and chooses “Purchase this item at Amazon” from the pop-up menu (which can be similar or identical to the menu optionally presented at the time of the capture).


11. Operating System and Application Integration


Modern Operating Systems (OSs) and other software packages have many characteristics that can be advantageously exploited for use with the described system, and may also be modified in various ways to provide an even better platform for its use.


11.1. Incorporation of Scan and Print-Related Information in Metadata and Indexing


New and upcoming file systems and their associated databases often have the ability to store a variety of metadata associated with each file. Traditionally, this metadata has included such things as the ID of the user who created the file, the dates of creation, last modification, and last use. Newer file systems allow such extra information as keywords, image characteristics, document sources and user comments to be stored, and in some systems this metadata can be arbitrarily extended. File systems can therefore be used to store information that would be useful in implementing the current system. For example, the date when a given document was last printed can be stored by the file system, as can details about which text from it has been captured from paper using the described system, and when and by whom.


Operating systems are also starting to incorporate search engine facilities that allow users to find local files more easily. These facilities can be advantageously used by the system. It means that many of the search-related concepts discussed in Sections 3 and 4 apply not just to today's Internet-based and similar search engines, but also to every personal computer.


In some cases specific software applications will also include support for the system above and beyond the facilities provided by the OS.


11.2. OS Support for Capture Devices


As the use of capture devices such as pen scanners becomes increasingly common, it will become desirable to build support for them into the operating system, in much the same way as support is provided for mice and printers, since the applicability of capture devices extends beyond a single software application. The same will be true for other aspects of the system's operation. Some examples are discussed below. In some embodiments, the entire described system, or the core of it, is provided by the OS. In some embodiments, support for the system is provided by Application Programming Interfaces (APIs) that can be used by other software packages, including those directly implementing aspects of the system.


11.2.1. Support for OCR and Other Recognition Technologies


Most of the methods of capturing text from a rendered document require some recognition software to interpret the source data, typically a scanned image or some spoken words, as text suitable for use in the system. Some OSs include support for speech or handwriting recognition, though it is less common for OSs to include support for OCR, since in the past the use of OCR has typically been limited to a small range of applications.


As recognition components become part of the OS, they can take better advantage of other facilities provided by the OS. Many systems include spelling dictionaries, grammar analysis tools, internationalization and localization facilities, for example, all of which can be advantageously employed by the described system for its recognition process, especially since they may have been customized for the particular user to include words and phrases that he/she would commonly encounter.


If the operating system includes full-text indexing facilities, then these can also be used to inform the recognition process, as described in Section 9.3.

    • 11.2.2. Action to be Taken on Scans


If an optical scan or other capture occurs and is presented to the OS, it may have a default action to be taken under those circumstances in the event that no other subsystem claims ownership of the capture. An example of a default action is presenting the user with a choice of alternatives, or submitting the captured text to the OS's built-in search facilities.

    • 11.2.3. OS has Default Action for Particular Documents or Document Types


If the digital source of the rendered document is found, the OS may have a standard action that it will take when that particular document, or a document of that class, is scanned. Applications and other subsystems may register with the OS as potential handlers of particular types of capture, in a similar manner to the announcement by applications of their ability to handle certain file types.


Markup data associated with a rendered document, or with a capture from a document, can include instructions to the operating system to launch specific applications, pass applications arguments, parameters, or data, etc.


11.2.4. Interpretation of Gestures and Mapping into Standard Actions


In Section 12.1.3 the use of “gestures” is discussed, particularly in the case of optical scanning, where particular movements made with a handheld scanner might represent standard actions such as marking the start and end of a region of text.


This is analogous to actions such as pressing the shift key on a keyboard while using the cursor keys to select a region of text, or using the wheel on a mouse to scroll a document. Such actions by the user are sufficiently standard that they are interpreted in a system-wide way by the OS, thus ensuring consistent behavior. The same is desirable for scanner gestures and other scanner-related actions.


11.2.5. Set Response to Standard (and Non-Standard) Iconic/Text Printed Menu Items


In a similar way, certain items of text or other symbols may, when scanned, cause standard actions to occur, and the OS may provide a selection of these. An example might be that scanning the text “[print]” in any document would cause the OS to retrieve and print a copy of that document. The OS may also provide a way to register such actions and associate them with particular scans.


11.3. Support in System GUI Components for Typical Scan-Initiated Activities


Most software applications are based substantially on standard Graphical User Interface components provided by the OS.


Use of these components by developers helps to ensure consistent behavior across multiple packages, for example that pressing the left-cursor key in any text-editing context should move the cursor to the left, without every programmer having to implement the same functionality independently.


A similar consistency in these components is desirable when the activities are initiated by text-capture or other aspects of the described system. Some examples are given below.


11.3.1. Interface to Find Particular Text Content


A typical use of the system may be for the user to scan an area of a paper document, and for the system to open the electronic counterpart in a software package that is able to display or edit it, and cause that package to scroll to and highlight the scanned text (Section 12.2.1). The first part of this process, finding and opening the electronic document, is typically provided by the OS and is standard across software packages. The second part, however—locating a particular piece of text within a document and causing the package to scroll to it and highlight it—is not yet standardized and is often implemented differently by each package. The availability of a standard API for this functionality could greatly enhance the operation of this aspect of the system.


11.3.2. Text Interactions


Once a piece of text has been located within a document, the system may wish to perform a variety of operations upon that text. As an example, the system may request the surrounding text, so that the user's capture of a few words could result in the system accessing the entire sentence or paragraph containing them. Again, this functionality can be usefully provided by the OS rather than being implemented in every piece of software that handles text.


11.3.3. Contextual (Popup) Menus


Some of the operations that are enabled by the system will require user feedback, and this may be optimally requested within the context of the application handling the data. In some embodiments, the system uses the application pop-up menus traditionally associated with clicking the right mouse button on some text. The system inserts extra options into such menus, and causes them to be displayed as a result of activities such as scanning a paper document.


11.4. Web/Network Interfaces


In today's increasingly networked world, much of the functionality available on individual machines can also be accessed over a network, and the functionality associated with the described system is no exception. As an example, in an office environment, many paper documents received by a user may have been printed by other users' machines on the same corporate network. The system on one computer, in response to a capture, may be able to query those other machines for documents which may correspond to that capture, subject to the appropriate permission controls.


11.5. Printing of Document Causes Saving


An important factor in the integration of paper and digital documents is maintaining as much information as possible about the transitions between the two. In some embodiments, the OS keeps a simple record of when any document was printed and by whom. In some embodiments, the OS takes one or more further actions that would make it better suited for use with the system. Examples include:

    • Saving the digital rendered version of every document printed along with information about the source from which it was printed
    • Saving a subset of useful information about the printed version—for example, the fonts used and where the line breaks occur—which might aid future scan interpretation
    • Saving the version of the source document associated with any printed copy
    • Indexing the document automatically at the time of printing and storing the results for future searching


11.6. My (Printed/Scanned) Documents


An OS often maintains certain categories of folders or files that have particular significance. A user's documents may, by convention or design, be found in a “My Documents” folder, for example. Standard file-opening dialogs may automatically include a list of recently opened documents.


On an OS optimized for use with the described system, such categories may be enhanced or augmented in ways that take into account a user's interaction with paper versions of the stored files. Categories such as “My Printed Documents” or “My Recently-Read Documents” might usefully be identified and incorporated in its operations.


11.7. OS-Level Markup Hierarchies


Since important aspects of the system are typically provided using the “markup” concepts discussed in Section 5, it would clearly be advantageous to have support for such markup provided by the OS in a way that was accessible to multiple applications as well as to the OS itself. In addition, layers of markup may be provided by the OS, based on its own knowledge of documents under its control and the facilities it is able to provide.


11.8. Use of OS DRM Facilities


An increasing number of operating systems support some form of “Digital Rights Management”: the ability to control the use of particular data according to the rights granted to a particular user, software entity or machine. It may inhibit unauthorized copying or distribution of a particular document, for example.


12. User Interface


The user interface of the system may be entirely on a PC, if the capture device is relatively dumb and is connected to it by a cable, or entirely on the device, if it is sophisticated and with significant processing power of its own. In some cases, some functionality resides in each component. Part, or indeed all, of the system's functionality may also be implemented on other devices such as mobile phones or PDAs.


The descriptions in the following sections are therefore indications of what may be desirable in certain implementations, but they are not necessarily appropriate for all and may be modified in several ways.


12.1. On the Capture Device


With all capture devices, but particularly in the case of an optical scanner, the user's attention will generally be on the device and the paper at the time of scanning. It is very desirable, then, that any input and feedback needed as part of the process of scanning do not require the user's attention to be elsewhere, for example on the screen of a computer, more than is necessary.


12.1.1. Feedback on Scanner


A handheld scanner may have a variety of ways of providing feedback to the user about particular conditions. The most obvious types are direct visual, where the scanner incorporates indicator lights or even a full display, and auditory, where the scanner can make beeps, clicks or other sounds. Important alternatives include tactile feedback, where the scanner can vibrate, buzz, or otherwise stimulate the user's sense of touch, and projected feedback, where it indicates a status by projecting onto the paper anything from a colored spot of light to a sophisticated display.


Important immediate feedback that may be provided on the device includes:

    • feedback on the scanning process—user scanning too fast, at too great an angle, or drifting too high or low on a particular line
    • sufficient content—enough has been scanned to be pretty certain of finding a match if one exists—important for disconnected operation
    • context known—a source of the text has been located
    • unique context known—one unique source of the text has been located
    • availability of content—indication of whether the content is freely available to the user, or at a cost


Many of the user interactions normally associated with the later stages of the system may also take place on the capture device if it has sufficient abilities, for example, to display part or all of a document.


12.1.2. Controls on Scanner


The device may provide a variety of ways for the user to provide input in addition to basic text capture. Even when the device is in close association with a host machine that has input options such as keyboards and mice, it can be disruptive for the user to switch back and forth between manipulating the scanner and using a mouse, for example.


The handheld scanner may have buttons, scroll/jog-wheels, touch-sensitive surfaces, and/or accelerometers for detecting the movement of the device. Some of these allow a richer set of interactions while still holding the scanner.


For example, in response to scanning some text, the system presents the user with a set of several possible matching documents. The user uses a scroll-wheel on the side of the scanner is to select one from the list, and clicks a button to confirm the selection.


12.1.3. Gestures


The primary reason for moving a scanner across the paper is to capture text, but some movements may be detected by the device and used to indicate other user intentions. Such movements are referred to herein as “gestures”.


As an example, the user can indicate a large region of text by scanning the first few words in conventional left-to-right order, and the last few in reverse order, i.e. right to left. The user can also indicate the vertical extent of the text of interest by moving the scanner down the page over several lines. A backwards scan might indicate cancellation of the previous scan operation.


12.1.4. Online/Offline behavior


Many aspects of the system may depend on network connectivity, either between components of the system such as a scanner and a host laptop, or with the outside world in the form of a connection to corporate databases and Internet search. This connectivity may not be present all the time, however, and so there will be occasions when part or all of the system may be considered to be “offline”. It is desirable to allow the system to continue to function usefully in those circumstances.


The device may be used to capture text when it is out of contact with other parts of the system. A very simple device may simply be able to store the image or audio data associated with the capture, ideally with a timestamp indicating when it was captured. The various captures may be uploaded to the rest of the system when the device is next in contact with it, and handled then. The device may also upload other data associated with the captures, for example voice annotations associated with optical scans, or location information.


More sophisticated devices may be able to perform some or all of the system operations themselves despite being disconnected. Various techniques for improving their ability to do so are discussed in Section 15.3. Often it will be the case that some, but not all, of the desired actions can be performed while offline. For example, the text may be recognized, but identification of the source may depend on a connection to an Internet-based search engine. In some embodiments, the device therefore stores sufficient information about how far each operation has progressed for the rest of the system to proceed efficiently when connectivity is restored.


The operation of the system will, in general, benefit from immediately available connectivity, but there are some situations in which performing several captures and then processing them as a batch can have advantages. For example, as discussed in Section 13 below, the identification of the source of a particular capture may be greatly enhanced by examining other captures made by the user at approximately the same time. In a fully connected system where live feedback is being provided to the user, the system is only able to use past captures when processing the current one. If the capture is one of a batch stored by the device when offline, however, the system will be able to take into account any data available from later captures as well as earlier ones when doing its analysis.


12.2. On a Host Device


A scanner will often communicate with some other device, such as a PC, PDA, phone or digital camera to perform many of the functions of the system, including more detailed interactions with the user.


12.2.1. Activities Performed in Response to a Capture


When the host device receives a capture, it may initiate a variety of activities. An incomplete list of possible activities performed by the system after locating and electronic counterpart document associated with the capture and a location within that document follows.

    • The details of the capture may be stored in the user's history. (Section 6.1)
    • The document may be retrieved from local storage or a remote location. (Section 8)
    • The operating system's metadata and other records associated with the document may be updated. (Section 11.1)
    • Markup associated with the document may be examined to determine the next relevant operations. (Section 5)
    • A software application may be started to edit, view or otherwise operate on the document. The choice of application may depend on the source document, or on the contents of the scan, or on some other aspect of the capture. (Section 11.2.2, 11.2.3)
    • The application may scroll to, highlight, move the insertion point to, or otherwise indicate the location of the capture. (Section 11.3)
    • The precise bounds of the captured text may be modified, for example to select whole words, sentences or paragraphs around the captured text. (Section 11.3.2)
    • The user may be given the option to copy the capture text to the clipboard or perform other standard operating system or application-specific operations upon it.
    • Annotations may be associated with the document or the captured text. These may come from immediate user input, or may have been captured earlier, for example in the case of voice annotations associated with an optical scan. (Section 19.4)
    • Markup may be examined to determine a set of further possible operations for the user to select.


12.2.2. Contextual Popup Menus


Sometimes the appropriate action to be taken by the system will be obvious, but sometimes it will require a choice to be made by the user. One good way to do this is through the use of “popup menus” or, in cases where the content is also being displayed on a screen, with so-called “contextual menus” that appear close to the content. (See Section 11.3.3). In some embodiments, the scanner device projects a popup menu onto the paper document. A user may select from such menus using traditional methods such as a keyboard and mouse, or by using controls on the capture device (Section 12.1.2), gestures (Section 12.1.3), or by interacting with the computer display using the scanner (Section 12.2.4). In some embodiments, the popup menus which can appear as a result of a capture include default items representing actions which occur if the user does not respond—for example, if the user ignores the menu and makes another capture.


12.2.3. Feedback on Disambiguation


When a user starts capturing text, there will initially be several documents or other text locations that it could match. As more text is captured, and other factors are taken into account (Section 13), the number of candidate locations will decrease until the actual location is identified, or further disambiguation is not possible without user input. In some embodiments, the system provides a real-time display of the documents or the locations found, for example in list, thumbnail-image or text-segment form, and for the number of elements in that display to reduce in number as capture continues. In some embodiments, the system displays thumbnails of all candidate documents, where the size or position of the thumbnail is dependent on the probability of it being the correct match.


When a capture is unambiguously identified, this fact may be emphasized to the user, for example using audio feedback.


Sometimes the text captured will occur in many documents and will be recognized to be a quotation. The system may indicate this on the screen, for example by grouping documents containing a quoted reference around the original source document.


12.2.4. Scanning from Screen


Some optical scanners may be able to capture text displayed on a screen as well as on paper. Accordingly, the term rendered document is used herein to indicate that printing onto paper is not the only form of rendering, and that the capture of text or symbols for use by the system may be equally valuable when that text is displayed on an electronic display.


The user of the described system may be required to interact with a computer screen for a variety of other reasons, such as to select from a list of options. It can be inconvenient for the user to put down the scanner and start using the mouse or keyboard. Other sections have described physical controls on the scanner (Section 12.1.2) or gestures (Section 12.1.3) as methods of input which do not require this change of tool, but using the scanner on the screen itself to scan some text or symbol is an important alternative provided by the system.


In some embodiments, the optics of the scanner allow it to be used in a similar manner to a light-pen, directly sensing its position on the screen without the need for actual scanning of text, possibly with the aid of special hardware or software on the computer.


13. Context Interpretation


An important aspect of the described system is the use of other factors, beyond the simple capture of a string of text, to help identify the document in use. A capture of a modest amount of text may often identify the document uniquely, but in many situations it will identify a few candidate documents. One solution is to prompt the user to confirm the document being scanned, but a preferable alternative is to make use of other factors to narrow down the possibilities automatically. Such supplemental information can dramatically reduce the amount of text that needs to be captured and/or increase the reliability and speed with which the location in the electronic counterpart can be identified. This extra material is referred to as “context”, and it was discussed briefly in Section 4.2.2. We now consider it in more depth.


13.1. System and Capture Context


Perhaps the most important example of such information is the user's capture history.


It is highly probable that any given capture comes from the same document as the previous one, or from an associated document, especially if the previous capture took place in the last few minutes (Section 6.1.2). Conversely, if the system detects that the font has changed between two scans, it is more likely that they are from different documents.


Also useful are the user's longer-term capture history and reading habits. These can also be used to develop a model of the user's interests and associations.


13.2. User's Real-World Context


Another example of useful context is the user's geographical location. A user in Paris is much more likely to be reading Le Monde than the Seattle Times, for example. The timing, size and geographical distribution of printed versions of the documents can therefore be important, and can to some degree be deduced from the operation of the system.


The time of day may also be relevant, for example in the case of a user who always reads one type of publication on the way to work, and a different one at lunchtime or on the train going home.


13.3. Related Digital Context


The user's recent use of electronic documents, including those searched for or retrieved by more conventional means, can also be a helpful indicator.


In some cases, such as on a corporate network, other factors may be usefully considered:

    • Which documents have been printed recently?
    • Which documents have been modified recently on the corporate file server?
    • Which documents have been emailed recently?


All of these examples might suggest that a user was more likely to be reading a paper version of those documents. In contrast, if the repository in which a document resides can affirm that the document has never been printed or sent anywhere where it might have been printed, then it can be safely eliminated in any searches originating from paper.


13.4. Other Statistics—the Global Context


Section 14 covers the analysis of the data stream resulting from paper-based searches, but it should be noted here that statistics about the popularity of documents with other readers, about the timing of that popularity, and about the parts of documents most frequently scanned are all examples of further factors which can be beneficial in the search process. The system brings the possibility of Google-type page-ranking to the world of paper.


See also Section 4.2.2 for some other implications of the use of context for search engines.


14. Data-Stream Analysis


The use of the system generates an exceedingly valuable data-stream as a side effect. This stream is a record of what users are reading and when, and is in many cases a record of what they find particularly valuable in the things they read. Such data has never really been available before for paper documents.


Some ways in which this data can be useful for the system, and for the user of the system, are described in Section 6.1. This section concentrates on its use for others. There are, of course, substantial privacy issues to be considered with any distribution of data about what people are reading, but such issues as preserving the anonymity of data are well known to those of skill in the art.


14.1. Document Tracking


When the system knows which documents any given user is reading, it can also deduce who is reading any given document. This allows the tracking of a document through an organization, to allow analysis, for example, of who is reading it and when, how widely it was distributed, how long that distribution took, and who has seen current versions while others are still working from out-of-date copies.


For published documents that have a wider distribution, the tracking of individual copies is more difficult, but the analysis of the distribution of readership is still possible.


14.2. Read Ranking—Popularity of Documents and Sub-Regions


In situations where users are capturing text or other data that is of particular interest to them, the system can deduce the popularity of certain documents and of particular sub-regions of those documents. This forms a valuable input to the system itself (Section 4.2.2) and an important source of information for authors, publishers and advertisers (Section 7.6, Section 10.5). This data is also useful when integrated in search engines and search indices—for example, to assist in ranking search results for queries coming from rendered documents, and/or to assist in ranking conventional queries typed into a web browser.


14.3. Analysis of Users—Building Profiles


Knowledge of what a user is reading enables the system to create a quite detailed model of the user's interests and activities. This can be useful on an abstract statistical basis—“35% of users who buy this newspaper also read the latest book by that author”—but it can also allow other interactions with the individual user, as discussed below.


14.3.1. Social Networking


One example is connecting one user with others who have related interests. These may be people already known to the user. The system may ask a university professor, “Did you know that your colleague at XYZ University has also just read this paper?” The system may ask a user, “Do you want to be linked up with other people in your neighborhood who are also how reading Jane Eyre?” Such links may be the basis for the automatic formation of book clubs and similar social structures, either in the physical world or online.


14.3.2. Marketing


Section 10.6 has already mentioned the idea of offering products and services to an individual user based on their interactions with the system. Current online booksellers, for example, often make recommendations to a user based on their previous interactions with the bookseller. Such recommendations become much more useful when they are based on interactions with the actual books.


14.4. Marketing Based on Other Aspects of the Data-Stream


We have discussed some of the ways in which the system may influence those publishing documents, those advertising through them, and other sales initiated from paper (Section 10). Some commercial activities may have no direct interaction with the paper documents at all and yet may be influenced by them. For example, the knowledge that people in one community spend more time reading the sports section of the newspaper than they do the financial section might be of interest to somebody setting up a health club.


14.5. Types of Data that May be Captured


In addition to the statistics discussed, such as who is reading which bits of which documents, and when and where, it can be of interest to examine the actual contents of the text captured, regardless of whether or not the document has been located.


In many situations, the user will also not just be capturing some text, but will be causing some action to occur as a result. It might be emailing a reference to the document to an acquaintance, for example. Even in the absence of information about the identity of the user or the recipient of the email, the knowledge that somebody considered the document worth emailing is very useful.


In addition to the various methods discussed for deducing the value of a particular document or piece of text, in some circumstances the user will explicitly indicate the value by assigning it a rating.


Lastly, when a particular set of users are known to form a group, for example when they are known to be employees of a particular company, the aggregated statistics of that group can be used to deduce the importance of a particular document to that group.


15. Device Features and Functions


A capture device for use with the system needs little more than a way of capturing text from a rendered version of the document. As described earlier (Section 1.2), this capture may be achieved through a variety of methods including taking a photograph of part of the document or typing some words into a mobile phone keypad. This capture may be achieved using a small hand-held optical scanner capable of recording a line or two of text at a time, or an audio capture device such as a voice-recorder into which the user is reading text from the document. The device used may be a combination of these—an optical scanner which could also record voice annotations, for example—and the capturing functionality may be built into some other device such as a mobile phone, PDA, digital camera or portable music player.


15.1. Input and Output


Many of the possibly beneficial additional input and output facilities for such a device have been described in Section 12.1. They include buttons, scroll-wheels and touch-pads for input, and displays, indicator lights, audio and tactile transducers for output. Sometimes the device will incorporate many of these, sometimes very few. Sometimes the capture device will be able to communicate with another device that already has them (Section 15.6), for example using a wireless link, and sometimes the capture functionality will be incorporated into such other device (Section 15.7).


15.2. Connectivity


In some embodiments, the device implements the majority of the system itself. In some embodiments, however, it often communicates with a PC or other computing device and with the wider world using communications facilities.


Often these communications facilities are in the form of a general-purpose data network such as Ethernet, 802.11 or UWB or a standard peripheral-connecting network such as USB, IEEE-1394 (Firewire), Bluetooth™ or infra-red. When a wired connection such as Firewire or USB is used, the device may receive electrical power though the same connection. In some circumstances, the capture device may appear to a connected machine to be a conventional peripheral such as a USB storage device.


Lastly, the device may in some circumstances “dock” with another device, either to be used in conjunction with that device or for convenient storage.


15.3. Caching and Other Online/Offline Functionality


Sections 3.5 and 12.1.4 have raised the topic of disconnected operation. When a capture device has a limited subset of the total system's functionality, and is not in communication with the other parts of the system, the device can still be useful, though the functionality available will sometimes be reduced. At the simplest level, the device can record the raw image or audio data being captured and this can be processed later. For the user's benefit, however, it can be important to give feedback where possible about whether the data captured is likely to be sufficient for the task in hand, whether it can be recognized or is likely to be recognizable, and whether the source of the data can be identified or is likely to be identifiable later. The user will then know whether their capturing activity is worthwhile. Even when all of the above are unknown, the raw data can still be stored so that, at the very least, the user can refer to them later. The user may be presented with the image of a scan, for example, when the scan cannot be recognized by the OCR process.


To illustrate some of the range of options available, both a rather minimal optical scanning device and then a much more full-featured one are described below. Many devices occupy a middle ground between the two.


15.3.1. The SimpleScanner—a Low-End Offline Example


The SimpleScanner has a scanning head able to read pixels from the page as it is moved along the length of a line of text. It can detect its movement along the page and record the pixels with some information about the movement. It also has a clock, which allows each scan to be time-stamped. The clock is synchronized with a host device when the SimpleScanner has connectivity. The clock may not represent the actual time of day, but relative times may be determined from it so that the host can deduce the actual time of a scan, or at worst the elapsed time between scans.


The SimpleScanner does not have sufficient processing power to perform any OCR itself, but it does have some basic knowledge about typical word-lengths, word-spacings, and their relationship to font size. It has some basic indicator lights which tell the user whether the scan is likely to be readable, whether the head is being moved too fast, too slowly or too inaccurately across the paper, and when it determines that sufficient words of a given size are likely to have been scanned for the document to be identified.


The SimpleScanner has a USB connector and can be plugged into the USB port on a computer, where it will be recharged. To the computer it appears to be a USB storage device on which time-stamped data files have been recorded, and the rest of the system software takes over from this point.


15.3.2. The SuperScanner—a High-End Offline Example


The SuperScanner also depends on connectivity for its full operation, but it has a significant amount of on-board storage and processing which can help it make better judgments about the data captured while offline.


As it moves along the line of text, the captured pixels are stitched together and passed to an OCR engine that attempts to recognize the text. A number of fonts, including those from the user's most-read publications, have been downloaded to it to help perform this task, as has a dictionary that is synchronized with the user's spelling-checker dictionary on their PC and so contains many of the words they frequently encounter. Also stored on the scanner is a list of words and phrases with the typical frequency of their use—this may be combined with the dictionary. The scanner can use the frequency statistics both to help with the recognition process and also to inform its judgment about when a sufficient quantity of text has been captured; more frequently used phrases are less likely to be useful as the basis for a search query.


In addition, the full index for the articles in the recent issues of the newspapers and periodicals most commonly read by the user are stored on the device, as are the indices for the books the user has recently purchased from an online bookseller, or from which the user has scanned anything within the last few months. Lastly, the titles of several thousand of the most popular publications which have data available for the system are stored so that, in the absence of other information the user can scan the title and have a good idea as to whether or not captures from a particular work are likely to be retrievable in electronic form later.


During the scanning process, the system informs user that the captured data has been of sufficient quality and of a sufficient nature to make it probable that the electronic copy can be retrieved when connectivity is restored. Often the system indicates to the user that the scan is known to have been successful and that the context has been recognized in one of the on-board indices, or that the publication concerned is known to be making its data available to the system, so the later retrieval ought to be successful.


The SuperScanner docks in a cradle connected to a PC's Firewire or USB port, at which point, in addition to the upload of captured data, its various onboard indices and other databases are updated based on recent user activity and new publications. It also has the facility to connect to wireless public networks or to communicate via Bluetooth to a mobile phone and thence with the public network when such facilities are available.


15.4. Features for Optical Scanning


We now consider some of the features that may be particularly desirable in an optical scanner device.


15.4.1. Flexible Positioning and Convenient Optics


One of the reasons for the continuing popularity of paper is the ease of its use in a wide variety of situations where a computer, for example, would be impractical or inconvenient. A device intended to capture a substantial part of a user's interaction with paper should therefore be similarly convenient in use. This has not been the case for scanners in the past; even the smallest hand-held devices have been somewhat unwieldy. Those designed to be in contact with the page have to be held at a precise angle to the paper and moved very carefully along the length of the text to be scanned. This is acceptable when scanning a business report on an office desk, but may be impractical when scanning a phrase from a novel while waiting for a train. Scanners based on camera-type optics that operate at a distance from the paper may similarly be useful in some circumstances.


Some embodiments of the system use a scanner that scans in contact with the paper, and which, instead of lenses, uses an image conduit a bundle of optical fibers to transmit the image from the page to the optical sensor device. Such a device can be shaped to allow it to be held in a natural position; for example, in some embodiments, the part in contact with the page is wedge-shaped, allowing the user's hand to move more naturally over the page in a movement similar to the use of a highlighter pen. The conduit is either in direct contact with the paper or in close proximity to it, and may have a replaceable transparent tip that can protect the image conduit from possible damage. As has been mentioned in Section 12.2.4, the scanner may be used to scan from a screen as well as from paper, and the material of the tip can be chosen to reduce the likelihood of damage to such displays.


Lastly, some embodiments of the device will provide feedback to the user during the scanning process which will indicate through the use of light, sound or tactile feedback when the user is scanning too fast, too slow, too unevenly or is drifting too high or low on the scanned line.


15.5. Security, Identity, Authentication, Personalization and Billing


As described in Section 6, the capture device may form an important part of identification and authorization for secure transactions, purchases, and a variety of other operations. It may therefore incorporate, in addition to the circuitry and software required for such a role, various hardware features that can make it more secure, such as a smartcard reader, RFID, or a keypad on which to type a PIN.


It may also include various biometric sensors to help identify the user. In the case of an optical scanner, for example, the scanning head may also be able to read a fingerprint. For a voice recorder, the voice pattern of the user may be used.


15.6. Device Associations


In some embodiments, the device is able to form an association with other nearby devices to increase either its own or their functionality. In some embodiments, for example, it uses the display of a nearby PC or phone to give more detailed feedback about its operation, or uses their network connectivity. The device may, on the other hand, operate in its role as a security and identification device to authenticate operations performed by the other device. Or it may simply form an association in order to function as a peripheral to that device.


An interesting aspect of such associations is that they may be initiated and authenticated using the capture facilities of the device. For example, a user wishing to identify themselves securely to a public computer terminal may use the scanning facilities of the device to scan a code or symbol displayed on a particular area of the terminal's screen and so effect a key transfer. An analogous process may be performed using audio signals picked up by a voice-recording device.


15.7. Integration with Other Devices


In some embodiments, the functionality of the capture device is integrated into some other device that is already in use. The integrated devices may be able to share a power supply, data capture and storage capabilities, and network interfaces. Such integration may be done simply for convenience, to reduce cost, or to enable functionality that would not otherwise be available.


Some examples of devices into which the capture functionality can be integrated include:

    • an existing peripheral such as a mouse, a stylus, a USB “webcam” camera, a Bluetooth™ headset or a remote control
    • another processing/storage device, such as a PDA, an MP3 player, a voice recorder, a digital camera or a mobile phone
    • other often-carried items, just for convenience—a watch, a piece of jewelry, a pen, a car key fob


15.7.1. Mobile Phone Integration


As an example of the benefits of integration, we consider the use of a modified mobile phone as the capture device.


In some embodiments, the phone hardware is not modified to support the system, such as where the text capture can be adequately done through voice recognition, where they can either be processed by the phone itself, or handled by a system at the other end of a telephone call, or stored in the phone's memory for future processing. Many modern phones have the ability to download software that could implement some parts of the system. Such voice capture is likely to be suboptimal in many situations, however, for example when there is substantial background noise, and accurate voice recognition is a difficult task at the best of times. The audio facilities may best be used to capture voice annotations.


In some embodiments, the camera built into many mobile phones is used to capture an image of the text. The phone display, which would normally act as a viewfinder for the camera, may overlay on the live camera image information about the quality of the image and its suitability for OCR, which segments of text are being captured, and even a transcription of the text if the OCR can be performed on the phone.


In some embodiments, the phone is modified to add dedicated capture facilities, or to provide such functionality in a clip-on adaptor or a separate Bluetooth-connected peripheral in communication with the phone. Whatever the nature of the capture mechanism, the integration with a modern cellphone has many other advantages. The phone has connectivity with the wider world, which means that queries can be submitted to remote search engines or other parts of the system, and copies of documents may be retrieved for immediate storage or viewing. A phone typically has sufficient processing power for many of the functions of the system to be performed locally, and sufficient storage to capture a reasonable amount of data. The amount of storage can also often be expanded by the user. Phones have reasonably good displays and audio facilities to provide user feedback, and often a vibrate function for tactile feedback. They also have good power supplies.


Most significantly of all, they are a device that most users are already carrying.


Part III
Example Applications of the System

This section lists example uses of the system and applications that may be built on it. This list is intended to be purely illustrative and in no sense exhaustive.


16. Personal Applications


16.1. Life Library


The Life Library (see also Section 6.1.1) is a digital archive of any important documents that the subscriber wishes to save and is a set of embodiments of services of this system. Important books, magazine articles, newspaper clippings, etc., can all be saved in digital form in the Life Library. Additionally, the subscriber's annotations, comments, and notes can be saved with the documents. The Life Library can be accessed via the Internet and World Wide Web.


The system creates and manages the Life Library document archive for subscribers. The subscriber indicates which documents the subscriber wishes to have saved in his life library by scanning information from the document or by otherwise indicating to the system that the particular document is to be added to the subscriber's Life Library. The scanned information is typically text from the document but can also be a barcode or other code identifying the document. The system accepts the code and uses it to identify the source document. After the document is identified the system can store either a copy of the document in the user's Life Library or a link to a source where the document may be obtained.


One embodiment of the Life Library system can check whether the subscriber is authorized to obtain the electronic copy. For example, if a reader scans text or an identifier from a copy of an article in the New York Times (NYT) so that the article will be added to the reader's Life Library, the Life Library system will verify with the NYT whether the reader is subscribed to the online version of the NYT; if so, the reader gets a copy of the article stored in his Life Library account; if not, information identifying the document and how to order it is stored in his Life Library account.


In some embodiments, the system maintains a subscriber profile for each subscriber that includes access privilege information. Document access information can be compiled in several ways, two of which are: 1) the subscriber supplies the document access information to the Life Library system, along with his account names and passwords, etc., or 2) the Life Library service provider queries the publisher with the subscriber's information and the publisher responds by providing access to an electronic copy if the Life Library subscriber is authorized to access the material. If the Life Library subscriber is not authorized to have an electronic copy of the document, the publisher provides a price to the Life Library service provider, which then provides the customer with the option to purchase the electronic document. If so, the Life Library service provider either pays the publisher directly and bills the Life Library customer later or the Life Library service provider immediately bills the customer's credit card for the purchase. The Life Library service provider would get a percentage of the purchase price or a small fixed fee for facilitating the transaction.


The system can archive the document in the subscriber's personal library and/or any other library to which the subscriber has archival privileges. For example, as a user scans text from a printed document, the Life Library system can identify the rendered document and its electronic counterpart. After the source document is identified, the Life Library system might record information about the source document in the user's personal library and in a group library to which the subscriber has archival privileges. Group libraries are collaborative archives such as a document repository for: a group working together on a project, a group of academic researchers, a group web log, etc.


The life library can be organized in many ways: chronologically, by topic, by level of the subscriber's interest, by type of publication (newspaper, book, magazine, technical paper, etc.), where read, when read, by ISBN or by Dewey decimal, etc. In one alternative, the system can learn classifications based on how other subscribers have classified the same document. The system can suggest classifications to the user or automatically classify the document for the user.


In various embodiments, annotations may be inserted directly into the document or may be maintained in a separate file. For example, when a subscriber scans text from a newspaper article, the article is archived in his Life Library with the scanned text highlighted. Alternatively, the article is archived in his Life Library along with an associated annotation file (thus leaving the archived document unmodified). Embodiments of the system can keep a copy of the source document in each subscriber's library, a copy in a master library that many subscribers can access, or link to a copy held by the publisher.


In some embodiments, the Life Library stores only the user's modifications to the document (e.g., highlights, etc.) and a link to an online version of the document (stored elsewhere). The system or the subscriber merges the changes with the document when the subscriber subsequently retrieves the document.


If the annotations are kept in a separate file, the source document and the annotation file are provided to the subscriber and the subscriber combines them to create a modified document. Alternatively, the system combines the two files prior to presenting them to the subscriber. In another alternative, the annotation file is an overlay to the document file and can be overlaid on the document by software in the subscriber's computer.


Subscribers to the Life Library service pay a monthly fee to have the system maintain the subscriber's archive. Alternatively, the subscriber pays a small amount (e.g., a micro-payment) for each document stored in the archive. Alternatively, the subscriber pays to access the subscriber's archive on a per-access fee. Alternatively, subscribers can compile libraries and allow others to access the materials/annotations on a revenue share model with the Life Library service provider and copyright holders. Alternatively, the Life Library service provider receives a payment from the publisher when the Life Library subscriber orders a document (a revenue share model with the publisher, where the Life Library service provider gets a share of the publisher's revenue).


In some embodiments, the Life Library service provider acts as an intermediary between the subscriber and the copyright holder (or copyright holder's agent, such as the Copyright Clearance Center, a.k.a. CCC) to facilitate billing and payment for copyrighted materials. The Life Library service provider uses the subscriber's billing information and other user account information to provide this intermediation service. Essentially, the Life Library service provider leverages the pre-existing relationship with the subscriber to enable purchase of copyrighted materials on behalf of the subscriber.


In some embodiments, the Life Library system can store excerpts from documents. For example, when a subscriber scans text from a paper document, the regions around the scanned text are excerpted and placed in the Life Library, rather than the entire document being archived in the life library. This is especially advantageous when the document is long because preserving the circumstances of the original scan prevents the subscriber from re-reading the document to find the interesting portions. Of course, a hyperlink to the entire electronic counterpart of the paper document can be included with the excerpt materials.


In some embodiments, the system also stores information about the document in the Life Library, such as author, publication title, publication date, publisher, copyright holder (or copyright holder's licensing agent), ISBN, links to public annotations of the document, readrank, etc. Some of this additional information about the document is a form of paper document metadata. Third parties may create public annotation files for access by persons other than themselves, such the general public. Linking to a third party's commentary on a document is advantageous because reading annotation files of other users enhances the subscriber's understanding of the document.


In some embodiments, the system archives materials by class. This feature allows a Life Library subscriber to quickly store electronic counterparts to an entire class of paper documents without access to each paper document. For example, when the subscriber scans some text from a copy of National Geographic magazine, the system provides the subscriber with the option to archive all back issues of the National Geographic. If the subscriber elects to archive all back issues, the Life Library service provider would then verify with the National Geographic Society whether the subscriber is authorized to do so. If not, the Life Library service provider can mediate the purchase of the right to archive the National Geographic magazine collection.


16.2. Life Saver


A variation on, or enhancement of, the Life Library concept is the “Life Saver”, where the system uses the text captured by a user to deduce more about their other activities. The scanning of a menu from a particular restaurant, a program from a particular theater performance, a timetable at a particular railway station, or an article from a local newspaper allows the system to make deductions about the user's location and social activities, and could construct an automatic diary for them, for example as a website. The user would be able to edit and modify the diary, add additional materials such as photographs and, of course, look again at the items scanned.


17. Academic Applications


Portable scanners supported by the described system have many compelling uses in the academic setting. They can enhance student/teacher interaction and augment the learning experience. Among other uses, students can annotate study materials to suit their unique needs; teachers can monitor classroom performance; and teachers can automatically verify source materials cited in student assignments.


17.1. Children's Books


A child's interaction with a paper document, such as a book, is monitored by a literacy acquisition system that employs a specific set of embodiments of this system. The child uses a portable scanner that communicates with other elements of the literacy acquisition system. In addition to the portable scanner, the literacy acquisition system includes a computer having a display and speakers, and a database accessible by the computer. The scanner is coupled with the computer (hardwired, short range RF, etc.). When the child sees an unknown word in the book, the child scans it with the scanner. In one embodiment, the literacy acquisition system compares the scanned text with the resources in its database to identify the word. The database includes a dictionary, thesaurus, and/or multimedia files (e.g., sound, graphics, etc.). After the word has been identified, the system uses the computer speakers to pronounce the word and its definition to the child. In another embodiment, the word and its definition are displayed by the literacy acquisition system on the computer's monitor. Multimedia files about the scanned word can also be played through the computer's monitor and speakers. For example, if a child reading “Goldilocks and the Three Bears” scanned the word “bear”, the system might pronounce the word “bear” and play a short video about bears on the computer's monitor. In this way, the child learns to pronounce the written word and is visually taught what the word means via the multimedia presentation.


The literacy acquisition system provides immediate auditory and/or visual information to enhance the learning process. The child uses this supplementary information to quickly acquire a deeper understanding of the written material. The system can be used to teach beginning readers to read, to help children acquire a larger vocabulary, etc. This system provides the child with information about words with which the child is unfamiliar or about which the child wants more information.


17.2. Literacy Acquisition


In some embodiments, the system compiles personal dictionaries. If the reader sees a word that is new, interesting, or particularly useful or troublesome, the reader saves it (along with its definition) to a computer file. This computer file becomes the reader's personalized dictionary. This dictionary is generally smaller in size than a general dictionary so can be downloaded to a mobile station or associated device and thus be available even when the system isn't immediately accessible. In some embodiments, the personal dictionary entries include audio files to assist with proper word pronunciation and information identifying the paper document from which the word was scanned.


In some embodiments, the system creates customized spelling and vocabulary tests for students. For example, as a student reads an assignment, the student may scan unfamiliar words with the portable scanner. The system stores a list of all the words that the student has scanned. Later, the system administers a customized spelling/vocabulary test to the student on an associated monitor (or prints such a test on an associated printer).


17.3. Music Teaching


The arrangement of notes on a musical staff is similar to the arrangement of letters in a line of text. The same scanning device discussed for capturing text in this system can be used to capture music notation, and an analogous process of constructing a search against databases of known musical pieces would allow the piece from which the capture occurred to be identified which can then be retrieved, played, or be the basis for some further action.


17.4. Detecting Plagiarism


Teachers can use the system to detect plagiarism or to verify sources by scanning text from student papers and submitting the scanned text to the system. For example, a teacher who wishes to verify that a quote in a student paper came from the source that the student cited can scan a portion of the quote and compare the title of the document identified by the system with the title of the document cited by the student. Likewise, the system can use scans of text from assignments submitted as the student's original work to reveal if the text was instead copied.


17.5. Enhanced Textbook


In some embodiments, capturing text from an academic textbook links students or staff to more detailed explanations, further exercises, student and staff discussions about the material, related example past exam questions, further reading on the subject, recordings of the lectures on the subject, and so forth. (See also Section 7.1.)


17.6. Language Learning


In some embodiments, the system is used to teach foreign languages. Scanning a Spanish word, for example, might cause the word to be read aloud in Spanish along with its definition in English.


The system provides immediate auditory and/or visual information to enhance the new language acquisition process. The reader uses this supplementary information to acquire quickly a deeper understanding of the material. The system can be used to teach beginning students to read foreign languages, to help students acquire a larger vocabulary, etc. The system provides information about foreign words with which the reader is unfamiliar or for which the reader wants more information.


Reader interaction with a paper document, such as a newspaper or book, is monitored by a language skills system. The reader has a portable scanner that communicates with the language skills system. In some embodiments, the language skills system includes a computer having a display and speakers, and a database accessible by the computer. The scanner communicates with the computer (hardwired, short range RF, etc.). When the reader sees an unknown word in an article, the reader scans it with the scanner. The database includes a foreign language dictionary, thesaurus, and/or multimedia files (sound, graphics, etc.). In one embodiment, the system compares the scanned text with the resources in its database to identify the scanned word. After the word has been identified, the system uses the computer speakers to pronounce the word and its definition to the reader. In some embodiments, the word and its definition are both displayed on the computer's monitor. Multimedia files about grammar tips related to the scanned word can also be played through the computer's monitor and speakers. For example, if the words “to speak” are scanned, the system might pronounce the word “hablar,” play a short audio clip that demonstrates the proper Spanish pronunciation, and display a complete list of the various conjugations of “hablar”. In this way, the student learns to pronounce the written word, is visually taught the spelling of the word via the multimedia presentation, and learns how to conjugate the verb. The system can also present grammar tips about the proper usage of “hablar” along with common phrases.


In some embodiments, the user scans a word or short phrase from a rendered document in a language other than the user's native language (or some other language that the user knows reasonably well). In some embodiments, the system maintains a prioritized list of the user's “preferred” languages. The system identifies the electronic counterpart of the rendered document, and determines the location of the scan within the document. The system also identifies a second electronic counterpart of the document that has been translated into one of the user's preferred languages, and determines the location in the translated document corresponding to the location of the scan in the original document. When the corresponding location is not known precisely, the system identifies a small region (e.g., a paragraph) that includes the corresponding location of the scanned location. The corresponding translated location is then presented to the user. This provides the user with a precise translation of the particular usage at the scanned location, including any slang or other idiomatic usage that is often difficult to accurately translate on a word-by-word basis.


17.7. Gathering Research Materials


A user researching a particular topic may encounter all sorts of material, both in print and on screen, which they might wish to record as relevant to the topic in some personal archive. The system would enable this process to be automatic as a result of scanning a short phrase in any piece of material, and could also create a bibliography suitable for insertion into a publication on the subject.


18. Commercial Applications


Obviously, commercial activities could be made out of almost any process discussed in this document, but here we concentrate on a few obvious revenue streams.


18.1. Fee-Based Searching and Indexing


Conventional Internet search engines typically provide free search of electronic documents, and also make no charge to the content providers for including their content in the index. In some embodiments, the system provides for charges to users and/or payments to search engines and/or content providers in connection with the operation and use of the system.


In some embodiments, subscribers to the system's services pay a fee for searches originating from scans of paper documents. For example, a stockbroker may be reading a Wall Street Journal article about a new product offered by Company X. By scanning the Company X name from the paper document and agreeing to pay the necessary fees, the stockbroker uses the system to search special or proprietary databases to obtain premium information about the company, such as analyst's reports. The system can also make arrangements to have priority indexing of the documents most likely to be read in paper form, for example by making sure all of the newspapers published on a particular day are indexed and available by the time they hit the streets.


Content providers may pay a fee to be associated with certain terms in search queries submitted from paper documents. For example, in one embodiment, the system chooses a most preferred content provider based on additional context about the provider (the context being, in this case, that the content provider has paid a fee to be moved up the results list). In essence, the search provider is adjusting paper document search results based on pre-existing financial arrangements with a content provider. See also the description of keywords and key phrases in Section 5.2.


Where access to particular content is to be restricted to certain groups of people (such as clients or employees), such content may be protected by a firewall and thus not generally indexable by third parties. The content provider may nonetheless wish to provide an index to the protected content. In such a case, the content provider can pay a service provider to provide the content provider's index to system subscribers. For example, a law firm may index all of a client's documents. The documents are stored behind the law firm's firewall. However, the law firm wants its employees and the client to have access to the documents through the portable scanner so it provides the index (or a pointer to the index) to the service provider, which in turn searches the law firm's index when employees or clients of the law firm submit paper-scanned search terms via their portable scanners. The law firm can provide a list of employees and/or clients to the service provider's system to enable this function or the system can verify access rights by querying the law firm prior to searching the law firm's index. Note that in the preceding example, the index provided by the law firm is only of that client's documents, not an index of all documents at the law firm. Thus, the service provider can only grant the law firm's clients access to the documents that the law firm indexed for the client.


There are at least two separate revenue streams that can result from searches originating from paper documents: one revenue stream from the search function, and another from the content delivery function. The search function revenue can be generated from paid subscriptions from the scanner users, but can also be generated on a per-search charge. The content delivery revenue can be shared with the content provider or copyright holder (the service provider can take a percentage of the sale or a fixed fee, such as a micropayment, for each delivery), but also can be generated by a “referral” model in which the system gets a fee or percentage for every item that the subscriber orders from the online catalog and that the system has delivered or contributed to, regardless of whether the service provider intermediates the transaction. In some embodiments, the system service provider receives revenue for all purchases that the subscriber made from the content provider, either for some predetermined period of time or at any subsequent time when a purchase of an identified product is made.


18.2. Catalogs


Consumers may use the portable scanner to make purchases from paper catalogs. The subscriber scans information from the catalog that identifies the catalog. This information is text from the catalog, a bar code, or another identifier of the catalog. The subscriber scans information identifying the products that s/he wishes to purchase. The catalog mailing label may contain a customer identification number that identifies the customer to the catalog vendor. If so, the subscriber can also scan this customer identification number. The system acts as an intermediary between the subscriber and the vendor to facilitate the catalog purchase by providing the customer's selection and customer identification number to the vendor.


18.3. Coupons


A consumer scans paper coupons and saves an electronic copy of the coupon in the scanner, or in a remote device such as a computer, for later retrieval and use. An advantage of electronic storage is that the consumer is freed from the burden of carrying paper coupons. A further advantage is that the electronic coupons may be retrieved from any location. In some embodiments, the system can track coupon expiration dates, alert the consumer about coupons that will expire soon, and/or delete expired coupons from storage. An advantage for the issuer of the coupons is the possibility of receiving more feedback about who is using the coupons and when and where they are captured and used.


19. General Applications


19.1. Forms


The system may be used to auto-populate an electronic document that corresponds to a paper form. A user scans in some text or a barcode that uniquely identifies the paper form. The scanner communicates the identity of the form and information identifying the user to a nearby computer. The nearby computer has an Internet connection. The nearby computer can access a first database of forms and a second database having information about the user of the scanner (such as a service provider's subscriber information database). The nearby computer accesses an electronic version of the paper form from the first database and auto-populates the fields of the form from the user's information obtained from the second database. The nearby computer then emails the completed form to the intended recipient. Alternatively, the computer could print the completed form on a nearby printer.


Rather than access an external database, in some embodiments, the system has a portable scanner that contains the user's information, such as in an identity module, SIM, or security card. The scanner provides information identifying the form to the nearby PC. The nearby PC accesses the electronic form and queries the scanner for any necessary information to fill out the form.


19.2. Business Cards


The system can be used to automatically populate electronic address books or other contact lists from paper documents. For example, upon receiving a new acquaintance's business card, a user can capture an image of the card with his/her cellular phone. The system will locate an electronic copy of the card, which can be used to update the cellular phone's onboard address book with the new acquaintance's contact information. The electronic copy may contain more information about the new acquaintance than can be squeezed onto a business card. Further, the onboard address book may also store a link to the electronic copy such that any changes to the electronic copy will be automatically updated in the cell phone's address book. In this example, the business card optionally includes a symbol or text that indicates the existence of an electronic copy. If no electronic copy exists, the cellular phone can use OCR and knowledge of standard business card formats to fill out an entry in the address book for the new acquaintance. Symbols may also aid in the process of extracting information directly from the image. For example, a phone icon next to the phone number on the business card can be recognized to determine the location of the phone number.


19.3. Proofreading/Editing


The system can enhance the proofreading and editing process. One way the system can enhance the editing process is by linking the editor's interactions with a paper document to its electronic counterpart. As an editor reads a paper document and scans various parts of the document, the system will make the appropriate annotations or edits to an electronic counterpart of the paper document. For example, if the editor scans a portion of text and makes the “new paragraph” control gesture with the scanner, a computer in communication with the scanner would insert a “new paragraph” break at the location of the scanned text in the electronic copy of the document.


19.4. Voice Annotation


A user can make voice annotations to a document by scanning a portion of text from the document and then making a voice recording that is associated with the scanned text. In some embodiments, the scanner has a microphone to record the user's verbal annotations. After the verbal annotations are recorded, the system identifies the document from which the text was scanned, locates the scanned text within the document, and attaches the voice annotation at that point. In some embodiments, the system converts the speech to text and attaches the annotation as a textual comment.


In some embodiments, the system keeps annotations separate from the document, with only a reference to the annotation kept with the document. The annotations then become an annotation markup layer to the document for a specific subscriber or group of users.


In some embodiments, for each capture and associated annotation, the system identifies the document, opens it using a software package, scrolls to the location of the scan and plays the voice annotation. The user can then interact with a document while referring to voice annotations, suggested changes or other comments recorded either by themselves or by somebody else.


19.5. Help in Text


The described system can be used to enhance paper documents with electronic help menus. In some embodiments, a markup layer associated with a paper document contains help menu information for the document. For example, when a user scans text from a certain portion of the document, the system checks the markup associated with the document and presents a help menu to the user. The help menu is presented on a display on the scanner or on an associated nearby display.


19.6. Use with Displays


In some situations, it is advantageous to be able to scan information from a television, computer monitor, or other similar display. In some embodiments, the portable scanner is used to scan information from computer monitors and televisions. In some embodiments, the portable optical scanner has an illumination sensor that is optimized to work with traditional cathode ray tube (CRT) display techniques such as rasterizing, screen blanking, etc.


A voice capture device which operates by capturing audio of the user reading text from a document will typically work regardless of whether that document is on paper, on a display, or on some other medium.


19.6.1. Public Kiosks and Dynamic Session IDs


One use of the direct scanning of displays is the association of devices as described in Section 15.6. For example, in some embodiments, a public kiosk displays a dynamic session ID on its monitor. The kiosk is connected to a communication network such as the Internet or a corporate intranet. The session ID changes periodically but at least every time that the kiosk is used so that a new session ID is displayed to every user. To use the kiosk, the subscriber scans in the session ID displayed on the kiosk; by scanning the session ID, the user tells the system that he wishes to temporarily associate the kiosk with his scanner for the delivery of content resulting from scans of printed documents or from the kiosk screen itself. The scanner may communicate the Session ID and other information authenticating the scanner (such as a serial number, account number, or other identifying information) directly to the system. For example, the scanner can communicate directly (where “directly” means without passing the message through the kiosk) with the system by sending the session initiation message through the user's cell phone (which is paired with the user's scanner via Bluetooth™). Alternatively, the scanner can establish a wireless link with the kiosk and use the kiosk's communication link by transferring the session initiation information to the kiosk (perhaps via short range RF such as Bluetooth™, etc.); in response, the kiosk sends the session initiation information to the system via its Internet connection.


The system can prevent others from using a device that is already associated with a scanner during the period (or session) in which the device is associated with the scanner. This feature is useful to prevent others from using a public kiosk before another person's session has ended. As an example of this concept related to use of a computer at an Internet café, the user scans a barcode on a monitor of a PC which s/he desires to use; in response, the system sends a session ID to the monitor that it displays; the user initiates the session by scanning the session ID from the monitor (or entering it via a keypad or touch screen or microphone on the portable scanner); and the system associates in its databases the session ID with the serial number (or other identifier that uniquely identifies the user's scanner) of his/her scanner so another scanner cannot scan the session ID and use the monitor during his/her session. The scanner is in communication (through wireless link such as Bluetooth™, a hardwired link such as a docking station, etc.) with a PC associated with the monitor or is in direct (i.e., w/o going through the PC) communication with the system via another means such as a cellular phone, etc.


Part IV
System Details

Introduction


In addition to the functionality provided by the system to its users, in some embodiments, the system also gathers and generates useful statistics about what people are reading and finding to be of interest. In various embodiments, the system analyzes these statistics and related data to discover facts about the use of particular documents, the characteristics of users, and the level of interest in particular documents, parts of documents and the topics mentioned therein. Such information has never been available for paper documents before at this level of detail.


This topic has been introduced in section 14. This section examines in more detail the advantages that can be gained through analysis of this “datastream,” the commercial applications to which it can be put, and the new techniques that arise from the understanding of users' interactions with paper that the system provides.



FIG. 4 is a block diagram showing some of the components typically incorporated in at least some of the computer systems and other devices used by the system. These computer systems and devices 400 may include one or more central processing units (“CPUs”) 401 for executing computer programs; a computer memory 402 for storing programs and data while they are being used; a persistent storage device 403, such as a hard drive for persistently storing programs and data; a computer-readable media drive 404, such as a CD-ROM drive, for reading programs and data stored on a computer-readable medium; and a network connection 405 for connecting the computer system to other computer systems, such as via the Internet. While computer systems configured as described above are typically used to support the operation of the system, those skilled in the art will appreciate that the system may be implemented using devices of various types and configurations, and having various components.



FIG. 5 is a data flow diagram showing a typical manner in which the system processes and uses information. The system 510 receives information 520 about data capture operations performed by a number of users from rendered documents. The system performs collective analysis on this capture information. In some embodiments, the system considers together information about capture operations performed by all of the users of the system. In some embodiments, the system considers together information about text capture operations performed by proper subsets of the users of the system. Users may be selected for a particular subset on a variety of bases, including random selection for a statistical sample, or purposeful selection based upon one or more shared characteristics of the users of the subset, such as home address; present geographic location; age; sex; income level; reading, browsing, or spending patterns; profession; employer identity; educational institution; etc. Based upon this analysis, the system in various embodiments produces any of a variety of useful analysis results. As examples: In some embodiments, the system produces document reading and document reading location tracking results 531. In some embodiments, the facility produces results 532 for tracking advertising impressions received by users in order to assess the reach of advertising and/or calculate advertising fees due to the publisher. In some embodiments, the system produces results 533 for pursuing sales of particular kinds of advertising in connection with either particular key words or documents or portions thereof. In some embodiments, the facility produces results 534 for triggering particular decisions about document publication, such as the creation, design, geographic distribution, or retention schedule for one or more documents. Those skilled in the art will appreciate that the system may produce other kinds of useful results based upon its collective analysis of text capture operations by multiple users.


Document Tracking


Much of the foregoing discussion concerns the functionality provided by the system to a user of the system relative to the documents with which he interacts. In contrast, in this section on document tracking, we concentrate on the document, and the users who interact with it.


In some cases this involves a unique instance of a rendered document. In some embodiments, the system identifies the particular rendered copy of the document in use, for example because only one rendered copy is available, or likely to be available to users in a given context, or because sufficient data is encoded uniquely in each copy that the copy can be identified. In these cases, in some embodiments the system analyzes the usage of that document in detail to determine, for example, how it passes from hand to hand, how it moves through an organization, and what happened to the copy that was lent to somebody and never returned. Sometimes the system can deduce the identity of a copy of a document even when precise identification is not available. For example, if two people work in the same part of an organization and one stops capturing from a document shortly before another starts, then there is some probability that the document has passed from one to the other.


In some cases the particular copy cannot be identified, but the system may know or deduce the version or edition of the document. This can be helpful in finding answers to questions such as:


How many people read the draft before the final version was published?


Did anybody notice the errors in the previous edition?


Were the changes in this version of significant interest?


Did anybody ever actually read the revised version?


Are out-of-date copies still in circulation? Who is still using them?


Often, however, the more general information about a document, rather than version- or copy-specific details, are of the most interest. A manager reading a book about a new management technique may be interested to know how many other people in his organisation have read the same book. An academic faculty producing a report may be interested in how far it spreads beyond the boundaries of that faculty or university. A newspaper publisher can discover how many people are still reading yesterday's edition of the paper, and how quickly particular editions get to particular geographical regions.


Accordingly, in various embodiments, the system associates histories and usage patterns with documents in a variety of ways. In some embodiments, the system maintains an archive which details the life of a document. The system enables this archive to be accessed in a variety of ways. In some embodiments, capturing data from a paper document causes the system to display a web page about that document which includes a section on “how it came to you” and “who else is reading this document”. Such an archive may also include information about actions taken by readers of the document: “20% of readers bought another copy”, for example.


Read Ranking


“Read ranking” is a statistical analysis of the popularity of documents based on the activities of users of the system. Such analysis need not be purely at the granularity of individual documents, however; the aggregated statistics from captures allow the system to determine the most popular chapters, sections, pages, paragraphs, even sentences and words in a document or across multiple documents. The aggregated statistics from captures also allow the system to determine the most popular most popular books and magazines, articles, quotations, topics, authors, images, and products in a document or across multiple documents.


In the past, publishers have worked largely from statistics that operate at the document level, since that is the typical unit of distribution and sale. The described system allows for more detailed analysis within the document. A newspaper can discover the most popular article of the year, for example, or can decide the topics for tomorrow's front page based on those that had the most interest today. Examples of other uses that publishers can make of such data are described below.


Similarly, a reader who doesn't have the time to read a whole book can take advantage of the statistics compiled by the system by skipping straight to the chapters that other readers have found most valuable. In some cases, the statistics from other users can be a valuable indication of the quality of the book as a whole. In some embodiments, a user in a bookstore considering the purchase of a book types the ISBN number into his mobile phone and is informed, in effect, that “60% of the people who started this book never made it beyond the second chapter”, or that “Most readers of this book later read another one by the same author”.


In some embodiments, the system produces a web-based interface of “What the world is reading”. If the system presents users visiting the web site with a ranked list of the most popular documents in the paper world, enabling them to click on items in the list to jump to the electronic counterpart of any document. The web site may be subdivided by topic, and may be searchable. The entries may represent individual documents, or parts of documents. Users may be able to expand the view of a reference to a particular document to see which bits of it were the most popular.


Use as an Input to the System


The aggregated data about the popularity of particular documents may also, of course, be an important input to the system itself and used in determining the likely origin of particular captures and the appropriate presentation to the user of various aspects of the system's operation. Such use of the data is described elsewhere herein.


Use as Input to Other Systems


In some embodiments, the system provides the statistical information that it generates as an input to other systems such as web search engines. The popularity of a printed version of a document may be an important factor in determining the ranking of its electronic counterpart in search results. Similarly, an online bookseller can use it to determine which books should be given priority on any of its web pages.


Analysis by Topic


In some embodiments, the system analyzes the topics that are of interest to particular users, or groups of users, or users in general, by examining the contents of their captures or the text surrounding those captures. In the simplest case, this is an analysis of the frequency of words included in captures. In a more complex example, the system considers the sentence, paragraph or page from which the capture occurred, a semantic analysis to identify the key words and phrases, an identification of related topics either by looking up synonyms in a database or by analysis of phrases used in conjunction with these key words and phrases in other documents, and a statistical analysis combining not only the key words and phrases but also these related topics.


For example, a user scans from a book a part of a sentence that refers to “rainfall” and “agriculture”. In response, the system performs a search and discovers that many paragraphs mentioning those words also contain the word “irrigation,” and so deduces not only that rainfall and agriculture may be topics of interest to the user, but also irrigation. When such examples are aggregated across large numbers of scans, the system can build up a picture of the user's interests; this is discussed in more detail below. When the system aggregates the statistics across large numbers of users, it can extract important statistics about the interests of the community as a whole.


Such information is useful, for example, for politicians, for newspaper editors, and for anybody involved in marketing decisions. A company might decide to launch a new range of products that use recycled paper, based on the fact that a large number of people have recently been capturing information about rainforests. In some embodiments, the system enables the company to market the products directly to those people.


Section 5.2 discusses the concept of Keywords and Key Phrases, elements of a text that have functionality or extra information directly associated with them, regardless of where they occur. A particular distributor may use the system to register the phrase “Mercedes dealer”, for example, so that captures including that phrase result in users being offered options which include a link to the distributor's site. In some embodiments, the system uses analysis of the datastream produced by the system to determine which phrases are available for sale and how much to charge for them.


Analysis of the Users


In some embodiments, the system analyzes the datastream resulting from use of the system by a particular user to create a profile of the user. In some embodiments, the system does the same for a group of users where the system knows users to form a particular group, such as “inhabitants of Paris” or “employees of XYZ Corp.”, the system creates a profile for that group in some embodiments. In some embodiments, the system defines groups in terms of their characteristics as measured by the system.


Such profiles can be valuable for the users or groups concerned, and, subject to the appropriate privacy concerns being dealt with, can be exceedingly valuable for others. In the past, while online booksellers may have been able to trace the sale of a book to a particular customer, they generally had no knowledge of whether it was read by the customer, or purchased as a gift for someone else or for use by their company or other organization. There was also no way of telling whether the final recipient ever actually read the book. The described system provides information that is much more closely related to the users' activities and their interaction with the actual document.


In some embodiments, the system uses a user profile generated by the system to market products or services to the associated user based on what he or she has read in the past or is reading now. In some embodiments, the system uses such profiles to make recommendations of other reading materials, websites, or products. In some embodiments, the system augments such profiles with other information that is known about the user's context (see section §13) such as geographical location.


In some embodiments, the system provides feedback to the publisher of the document about the types of users who find the document interesting. For example, “This article was widely read by programmers in Europe”. In some embodiments, the system targets marketing of other products at specific users or groups of users, for example, to all those who have read a book by Jane Austen or Emily Bronte in the last year.


While there is obviously significant benefit for those involved in marketing to be able to make direct contact with individual users, much of this statistical information is also useful in a purely anonymous form.


Analysis of User Interactions


In some embodiments, the system analyzes the datastream resulting not only from captures by users, but also from additional user interactions with rendered documents In various embodiments of the described system users are able to interact with rendered documents. For example, captures by a user can be processed according to markup data and instructions. In response to captures at certain locations in a document, or to captures containing specific data (e.g., keywords), the markup data can specify that a menu of possible actions should be presented to the user. The menu can be presented either at the time of the capture, or when the user optionally reviews a capture at a later time (for example, in the user's Life Library). Menu selections and other actions by the user can highlight sections of a document, forward excerpts to colleagues via email, purchase products mentioned in a document from online vendors like Amazon.com, etc. Data about these additional user interactions (e.g., interactions associated with or derived from captures) can be a useful component in the various analyses and uses of the datastream described here.


In some embodiments, data about actual product purchases associated with printed advertisements can be provided as feedback to advertisers. In some embodiments, how often a segment of text is forwarded to a user's colleagues provides valuable data to publishers about the attention received by specific material. In some embodiments, document publishers, copyright holders, authors, and distributors can participate in revenues that result when user interactions with rendered documents lead to product sales and other commercial transactions.


Cross-Correlation


The preceding sections have discussed analysis of the datastream by document or sub-region, by topic and by user. In some embodiments, the system cross-correlates these broad areas to form other interesting analyses. For example:


Social Networking


In some embodiments, the system connects users who have related interests. These may be people already known to each other. For example, the system may ask a university professor, “Did you know that your colleague at XYZ University has also just read this paper?” In some embodiments, the system provides introductions to new people. For example, the system may ask a user, “Do you want to be linked up with other people in your neighborhood who have also read several of Patrick O'Brian's books?” In some embodiments, such links to automatically form book clubs and similar social structures, either in the physical world or online.


Recommendations


While the system may use documents to connect readers, in some embodiments, the system uses readers to connect documents. In some embodiments, the system compares the capture history of a user with the capture history of others, and uses the results to make recommendations: “Other people who liked this article also read this (other) book”.


Further Reading


Not all such correlations require other users. In some embodiments, the system simply uses the topics that are of interest to the user to suggest documents that are known to contain them. For example, “You seem to be interested in topics X, Y and Z in the newspaper. You might be interested in this book, which covers them all!”


Feedback to Publishers


In some embodiments, the system uses the statistics captured from document use to provide feedback to the publishers of those documents. Such feedback can provide publishers with better information about the use, distribution and life cycle of their products. It can also provide them with more detailed information about their typical customers. Some of these topics are discussed elsewhere herein, including the tracking of documents, analysis of their distribution, understanding the topics of interest and creating profiles of users.


These issues can be of particular interest to publishers considering new publications, or new editions of existing publications. In particular, the feedback that the system provides about which sections of a document were of greatest interest can lead to some interesting decisions by publishers. The publisher might decide to expand on a popular chapter in the second edition. The publisher might emphasize the subject of one particular chapter in the descriptive material on the back cover and in other advertising materials.


Furthermore, a publisher that (1) publishes a book on accounting software and identifies a greater interest in the chapter about databases, and that also (2) publishes a book on data standards that has a popular chapter on XML may decide to commission a whole new book on the use of XML in accounting databases. Such a decision can be strongly reinforced if the system makes known that in a substantial proportion of the statistics gathered about the original books, it was the same readers who found the two chapters interesting, or the same classes of readers according to some profile model. Finally, the publisher can market the new book, when available, to those same readers.


Another topic relevant to the publishers of documents that are more than a few pages long is the layout of those documents. Particularly in the case of newspapers and magazines, publishers most often make decisions about which articles go on which pages, how many words to allow a particular columnist, which articles should be close to which other articles and how to mix advertising in with the other content. The described system provides valuable feedback which can assist those involved in making these decisions.


For example, a newspaper publisher may discover through use of the datastream from the system that one of its writers is more popular than others. The newspaper publisher may choose to compensate that writer accordingly. The newspaper publisher may also charge advertisers more for content placed close to that particular writers contributions. Use of the system also enables publishers to pay, or to charge, based on the activities of readers after the time of publication. In this model, a writer's compensation is based in some degree on the use that was made of the article by the readers. Similarly, a publisher may charge an advertiser a lower price if the system that determines the advertiser's advertisement was placed on a page that nobody read.


In some embodiments, the system analyzes the order in which users read a document. The system may determine that large numbers of readers jump straight to a particular column and read that before anything else, that few people read anything other than the cover story, or that people are substantially less likely to read the second half of articles that are continued over more than one page, for example. Such information can be very useful to a publisher in planning the layout of future editions of the publication.


Feedback to Advertisers


In some embodiments, the system provides advertisers with valuable feedback about the ways in which their advertising material was received. In the most direct case, a user may make a capture from the printed advertisement, and possibly go on to complete a purchase. In some embodiments, the system compensates the publisher as a result. In other cases, the user may not directly capture from the advertisement, but the fact that they have seen it may be deduced from the knowledge that they have read other articles on the page, or from their later activity, such as visiting the website of the advertiser.


In some embodiments, the system informs advertisers that “readers who saw your advertisement also read this”, where “this” may refer to articles in the same publication, other advertisements, including those placed by competitors, or it may refer to the contents of completely different publications—for example: “12% of the readers who saw your advertisement also read the latest book by Dan Brown”.


Advertisers may make decisions based on such information. For example, a company may decide to pay a newspaper publisher to include a catalog for sports goods in the distribution of the newspaper, but only in regions where a majority of readers turn to the sports pages first.


Other Marketing Based on the Datastream


The datastream may also be of use to those who have no other direct relationship with the publisher. In some embodiments, the system informs a provider of financial products about users who spend a noticeable amount of time reading the financial pages of the newspaper.


CONCLUSION

It will be appreciated by those skilled in the art that the above-described system may be straightforwardly adapted or extended in various ways. While the foregoing description makes reference to particular embodiments, the scope of the invention is defined solely by the claims that following and the elements recited therein.

Claims
  • 1. A method performed by a processor in a computing system for analyzing text capture operation traffic, the method comprising: receiving, by the computing system, a plurality of indications of operations for capturing text from rendered documents, each of the plurality of the received indications specifying a text sequence captured as part of the indicated text capture sequence;for each of the plurality of received indications, identifying, by the processor, an electronic document containing the captured text sequence;performing, by the processor, collective analysis on the plurality of received indications and the electronic documents; andoutputting, by the processor, a result produced by the performed analysis.
  • 2. The method of claim 1 wherein the outputted result is a list of documents organized in a particular manner.
  • 3. The method of claim 1 wherein the collective analysis comprises identifying behavior patterns of a plurality of users, and wherein the outputted result indicates a plan for marketing to users among the plurality.
  • 4. The method of claim 1 wherein the collective analysis comprises identifying most-frequently read documents, and wherein the outputted result identifies these most-frequently read documents.
  • 5. The method of claim 4 wherein the outputting comprises displaying an identification of the most-frequently read documents in a web page.
  • 6. The method of claim 4 wherein the outputting comprises including an identification of the most-frequently read documents in a marketing report.
  • 7. The method of claim 4 wherein the outputting comprises presenting an identification of the most-frequently read documents to document publishers.
  • 8. The method of claim 1 wherein the collective analysis comprises identifying most-frequently captured documents, and wherein the outputted result identifies these most-frequently captured documents.
  • 9. The method of claim 8, further comprising: receiving a search query;generating a search result for the received search query, the search result comprising a plurality of items, at least a portion of the plurality of items being documents; andbefore presenting the generated search result, organizing the generated search result in accordance with the capture frequencies of the documents among the items of the search result.
  • 10. The method of claim 9, further comprising marketing additional documents directed to a distinguished one of the most popular topics.
  • 11. The method of claim 8, further comprising: receiving a request to present a list of documents; andpresenting the requested list of documents in an order consistent with the capture frequencies of the documents among the items of the search result.
  • 12. The method of claim 1 wherein the collective analysis comprises determining a most popular set of topics.
  • 13. The method of claim 12, further comprising: publishing new rendered documents directed to one or more of the determined most popular topics.
  • 14. The method of claim 12, further comprising: informing a document publisher of the one or more determined most popular topics.
  • 15. The method of claim 1 wherein the collective analysis comprises identifying most-frequently captured words, and wherein the outputted result solicits advertising subscriptions for one or more of the identified words from one or more potential advertisers.
  • 16. The method of claim 1 wherein the collective analysis comprises determining a frequency of phrases captured by the text captures.
  • 17. The method of claim 1 wherein at least a portion of the received indications indicate a geographic location at which the indicated text capture operation was performed, and wherein the collective analysis comprises determining a geographic distribution for captures from a distinguished document, and wherein the outputted result indicates the determined geographic distribution.
  • 18. The method of claim 1 wherein at least a portion of the received indications indicate a time at which the indicated text capture operation was performed, and wherein the collective analysis comprises determining a chronological distribution for captures from a distinguished document, and wherein the outputted result indicates the determined chronological distribution.
  • 19. The method of claim 1 wherein the collective analysis comprises determining a rate at which a distinguished document is being read, the method further comprising compensating an author of the distinguished document in accordance with the determined rate.
  • 20. The method of claim 1 wherein the collective analysis comprises determining a number of users who complete a purchase after performing a capture from a distinguished document, the method further comprising compensating an author of the distinguished document in accordance with the determined number of users.
  • 21. The method of claim 1 wherein the collective analysis comprises determining a number of users who perform a capture from an advertisement at a time proximate to performing a capture from a distinguished document, the method further comprising compensating an author of the distinguished document in accordance with the determined number of users.
  • 22. The method of claim 1 wherein the collective analysis comprises analyzing interactions with a distinguished document, the method further comprising modifying the distinguished document based upon the analysis of interactions with the distinguished document.
  • 23. The method of claim 22 wherein the collective analysis determines that the frequency of text captures from a distinguished portion of the distinguished document is lower than a pre-determined frequency, and wherein the distinguished document is modified by deleting the distinguished portion.
  • 24. The method of claim 22 wherein the collective analysis determines that the frequency of text captures from a distinguished portion of the distinguished document is higher than a pre-determined frequency, and wherein the distinguished document is modified by expanding the distinguished portion.
  • 25. The method of claim 22 wherein the collective analysis determines that the frequency of text captures from a distinguished portion of the distinguished document is higher than a pre-determined frequency, and wherein the distinguished document is modified by adding advertising to the distinguished document near the distinguished portion.
  • 26. The method of claim 22 wherein the collective analysis determines that the frequency of text captures from a distinguished portion of the distinguished document is higher than a pre-determined frequency, and wherein the distinguished document is modified by revising advertising to the distinguished document near the distinguished portion.
  • 27. The method of claim 1 wherein the collective analysis is performed on indications of text capture operations performed by all of the users of the plurality.
  • 28. The method of claim 1 wherein the analysis is performed on a proper subset of the plurality of received indications of operations.
  • 29. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yields a text sequence that is a proper subset of text contained in a single line of a rendered document.
  • 30. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yields a text sequence that is a proper subset of text contained in a single page of a rendered document.
  • 31. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the yielded text sequence is comprised of words, and wherein the text capture operation involved specific interactions with each of the words of the yielded text sequence.
  • 32. The method of claim 31 wherein one or more of the text captures comprises receiving the yielded text sequence via words of the yielded text sequence spoken into a microphone of a hand-held text capture device.
  • 33. The method of claim 31 wherein one or more of the text captures comprises receiving via an optical sensor of a hand-held text capture device each of the words of the yielded text sequence.
  • 34. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the yielded text sequence is comprised of ordered words, and wherein the text capture operation involved capturing physical phenomenon corresponding to each of the words of the yielded text sequence in the order of the yielded text sequence.
  • 35. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the yielded text sequence is comprised of ordered words, and wherein the text capture operation involved capturing physical phenomena corresponding to each of the words of the yielded text sequence in the reverse order of the yielded text sequence.
  • 36. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the text capture operation involved manually moving an optical sensor across the rendered document.
  • 37. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the text capture operation involved capturing image data from a nonrectangular region of the rendered document.
  • 38. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the text sequence yielded by the text capture operation comprises fewer than ten words.
  • 39. The method of claim 1 wherein at least one of the text capture operations indicated by a received indication yielded a text sequence, and wherein the text capture operation involved capturing an image of fewer than ten words.
  • 40. The method of claim 1, wherein at least one of the plurality of received indications indicates a text capture operation performed with a wireless telephone handset.
  • 41. One or more computer memories storing machine executable instructions which when executed by a computer cause the computer to: store information formatted in a communal text capture data structure, the communal text capture data structure comprising a plurality of entries, each entry indicating a text sequence captured from a rendered document; anduse the contents of the communal text capture data structure to analyze aggregate text capture behavior.
  • 42. The computer memories of claim 41 wherein each indicated text sequence constitutes a proper subset of text appearing on a page of a rendered document.
  • 43. One or more computer memories storing machine executable instructions which when executed by a computer cause the computer to: store information formatted in a data structure, the data structure comprising one or more records, each record relating to a different rendered document and indicating a result of a performed analysis of a plurality of indications of text capture operations within the rendered document to capture a sequence of text from the rendered document, the result indicating a frequency of text capture operations from the rendered document.
  • 44. The computer memories of claim 43, wherein each record contains information related to one or more documents identified by the result.
  • 45. The computer memories of claim 43, wherein the result indicates a frequency of text capture operations from a distinguished location in a distinguished rendered document.
  • 46. A method, performed by a processor in a computing system, of making a recommendation, the method comprising: in response to a first distinguished text capture operation to capture a sequence of text from a distinguished rendered document, determining, by the processor, a result that identifies an electronic document containing the captured sequence of text;comparing, by the processor, the determined result to a group of text capture operations; andidentifying, by the processor, an action to be performed based on the comparison.
  • 47. The method of claim 46, wherein the comparison determines that the distinguished rendered document has been captured from and that a second distinguished text capture operation has been performed, the identified action comprising: identifying the distinguished rendered document.
  • 48. The method of claim 46, wherein the comparison determines that the distinguished rendered document has been captured from by the distinguished user and has been captured from by a second distinguished one of the users in the group of users, the identified action comprising: identifying a distinguished user associated with the second distinguished text operation.
  • 49. A system for determining a result based on data capture operations, comprising: a memory containing instruction components;a processor that executes instructions stored in the memory, including:a text capture component that receives indications of operations for capturing text from rendered documents by users of hand-held data capture devices, each received indication specifying a text sequence captured as part of the indicated text capture operation;an analysis component that determines a result based on the received indications, the result determined from an analysis of a total of two or more indications of data captures;an output component that outputs the result.
CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a Continuation-In-Part of U.S. patent application Ser. No. 11/004,637 filed on Dec. 3, 2004 now U.S. Pat. No. 7,707,039, which is hereby incorporated by reference in its entirety. This application is related to, and incorporates by reference in their entirety, the following U.S. Patent Applications, filed concurrently herewith: U.S. patent application Ser. No. 11/097,961, entitled METHODS AND SYSTEMS FOR INITIATING APPLICATION PROCESSES BY DATA CAPTURE FROM RENDERED DOCUMENTS U.S. patent application Ser. No. 11/097,093, entitled DETERMINING ACTIONS INVOLVING CAPTURED INFORMATION AND ELECTRONIC CONTENT ASSOCIATED WITH RENDERED DOCUMENTS, U.S. patent application Ser. No. 11/098,038, entitled CONTENT ACCESS WITH HANDHELD DOCUMENT DATA CAPTURE DEVICES, U.S. patent application Ser. No. 11/098,014, entitled SEARCH ENGINES AND SYSTEMS WITH HANDHELD DOCUMENT DATA CAPTURE DEVICES, U.S. patent application Ser. No. 11/097,103, entitled TRIGGERING ACTIONS IN RESPONSE TO OPTICALLY OR ACOUSTICALLY CAPTURING KEYWORDS FROM A RENDERED DOCUMENT, U.S. patent application Ser. No. 11/098,043, entitled SEARCHING AND ACCESSING DOCUMENTS ON PRIVATE NETWORKS FOR USE WITH CAPTURES FROM RENDERED DOCUMENTS, U.S. patent application Ser. No. 11/097,981, entitled INFORMATION GATHERING SYSTEM AND METHOD, U.S. patent application Ser. No. 11/097,089, entitled DOCUMENT ENHANCEMENT SYSTEM AND METHOD, U.S. patent application Ser. No. 11/097,835, entitled PUBLISHING TECHNIQUES FOR ADDING VALUE TO A RENDERED DOCUMENT, U.S. patent application Ser. No. 11/098,016, entitled ARCHIVE OF TEXT CAPTURES FROM RENDERED DOCUMENTS, U.S. patent application Ser. No. 11/097,828, entitled ADDING INFORMATION OR FUNCTIONALITY TO A RENDERED DOCUMENT VIA ASSOCIATION WITH AN ELECTRONIC COUNTERPART, U.S. patent application Ser. No. 11/097,836, entitled ESTABLISHING AN INTERACTIVE ENVIRONMENT FOR RENDERED DOCUMENTS, U.S. patent application Ser. No. 11/098,042, entitled DATA CAPTURE FROM RENDERED DOCUMENTS USING HANDHELD DEVICE, and U.S. patent application Ser. No. 11/096,704, entitled CAPTURING TEXT FROM RENDERED DOCUMENTS USING SUPPLEMENTAL INFORMATION. This application claims priority to, and incorporates by reference in their entirety, the following U.S. Provisional Patent Applications: Application No. 60/559,226 filed on Apr. 1, 2004, Application No. 60/558,893 filed on Apr. 1, 2004, Application No. 60/558,968 filed on Apr. 1, 2004, Application No. 60/558,867 filed on Apr. 1, 2004, Application No. 60/559,278 filed on Apr. 1, 2004, Application No. 60/559,279 filed on Apr. 1, 2004, Application No. 60/559,265 filed on Apr. 1, 2004, Application No. 60/559,277 filed on Apr. 1, 2004, Application No. 60/558,969 filed on Apr. 1, 2004, Application No. 60/558,892 filed on Apr. 1, 2004, Application No. 60/558,760 filed on Apr. 1, 2004, Application No. 60/558,717 filed on Apr. 1, 2004, Application No. 60/558,499 filed on Apr. 1, 2004, Application No. 60/558,370 filed on Apr. 1, 2004, Application No. 60/558,789 filed on Apr. 1, 2004, Application No. 60/558,791 filed on Apr. 1, 2004, Application No. 60/558,527 filed on Apr. 1, 2004, Application No. 60/559,125 filed on Apr. 2, 2004, Application No. 60/558,909 filed on Apr. 2, 2004, Application No. 60/559,033 filed on Apr. 2, 2004, Application No. 60/559,127 filed on Apr. 2, 2004, Application No. 60/559,087 filed on Apr. 2, 2004, Application No. 60/559,131 filed on Apr. 2, 2004, Application No. 60/559,766 filed on Apr. 6, 2004, Application No. 60/561,768 filed on Apr. 12, 2004, Application No. 60/563,520 filed on Apr. 19, 2004, Application No. 60/563,485 filed on Apr. 19, 2004, Application No. 60/564,688 filed on Apr. 23, 2004, Application No. 60/564,846 filed on Apr. 23, 2004, Application No. 60/566,667, filed on Apr. 30, 2004, Application No. 60/571,381 filed on May 14, 2004, Application No. 60/571,560 filed on May 14, 2004, Application No. 60/571,715 filed on May 17, 2004, Application No. 60/589,203 filed on Jul. 19, 2004, Application No. 60/589,201 filed on Jul. 19, 2004, Application No. 60/589,202 filed on Jul. 19, 2004, Application No. 60/598,821 filed on Aug. 2, 2004, Application No. 60/602,956 filed on Aug. 18, 2004, Application No. 60/602,925 filed on Aug. 18, 2004, Application No. 60/602,947 filed on Aug. 18, 2004, Application No. 60/602,897 filed on Aug. 18, 2004, Application No. 60/602,896 filed on Aug. 18, 2004, Application No. 60/602,930 filed on Aug. 18, 2004, Application No. 60/602,898 filed on Aug. 18, 2004, Application No. 60/603,466 filed on Aug. 19, 2004, Application No. 60/603,082 filed on Aug. 19, 2004, Application No. 60/603,081 filed on Aug. 19, 2004, Application No. 60/603,498 filed on Aug. 20, 2004, Application No. 60/603,358 filed on Aug. 20, 2004, Application No. 60/604,103 filed on Aug. 23, 2004, Application No. 60/604,098 filed on Aug. 23, 2004, Application No. 60/604,100 filed on Aug. 23, 2004, Application No. 60/604,102 filed on Aug. 23, 2004, Application No. 60/605,229 filed on Aug. 27, 2004, Application No. 60/605,105 filed on Aug. 27, 2004, Application No. 60/613,243 filed on Sep. 27, 2004, Application No. 60/613,628 filed on Sep. 27, 2004, Application No. 60/613,632 filed on Sep. 27, 2004, Application No. 60/613,589 filed on Sep. 27, 2004, Application No. 60/613,242 filed on Sep. 27, 2004, Application No. 60/613,602 filed on Sep. 27, 2004, Application No. 60/613,340 filed on Sep. 27, 2004, Application No. 60/613,634 filed on Sep. 27, 2004, Application No. 60/613,461 filed on Sep. 27, 2004, Application No. 60/613,455 filed on Sep. 27, 2004, Application No. 60/613,460 filed on Sep. 27, 2004, Application No. 60/613,400 filed on Sep. 27, 2004, Application No. 60/613,456 filed on Sep. 27, 2004, Application No. 60/613,341 filed on Sep. 27, 2004, Application No. 60/613,361 filed on Sep. 27, 2004, Application No. 60/613,454 filed on Sep. 27, 2004, Application No. 60/613,339 filed on Sep. 27, 2004, Application No. 60/613,633 filed on Sep. 27, 2004, Application No. 60/615,378 filed on Oct. 1, 2004, Application No. 60/615,112 filed on Oct. 1, 2004, Application No. 60/615,538 filed on Oct. 1, 2004, Application No. 60/617,122 filed on Oct. 7, 2004, Application No. 60/622,906 filed on Oct. 28, 2004, Application No. 60/633,452 filed on Dec. 6, 2004, Application No. 60/633,678 filed on Dec. 6, 2004, Application No. 60/633,486 filed on Dec. 6, 2004, Application No. 60/633,453 filed on Dec. 6, 2004, Application No. 60/634,627 filed on Dec. 9, 2004, Application No. 60/634,739 filed on Dec. 9, 2004, Application No. 60/647,684 filed on Jan. 26, 2005, Application No. 60/648,746 filed on Jan. 31, 2005, Application No. 60/653,372 filed on Feb. 15, 2005, Application No. 60/653,663 filed on Feb. 16, 2005, Application No. 60/653,669 filed on Feb. 16, 2005, Application No. 60/653,899 filed on Feb. 16, 2005, Application No. 60/653,679 filed on Feb. 16, 2005, Application No. 60/653,847 filed on Feb. 16, 2005, Application No. 60/654,379 filed on Feb. 17, 2005, Application No. 60/654,368 filed on Feb. 18, 2005, Application No. 60/654,326 filed on Feb. 18, 2005, Application No. 60/654,196 filed on Feb. 18, 2005, Application No. 60/655,279 filed on Feb. 22, 2005, Application No. 60/655,280 filed on Feb. 22, 2005, Application No. 60/655,987 filed on Feb. 22, 2005, Application No. 60/655,697 filed on Feb. 22, 2005, Application No. 60/655,281 filed on Feb. 22, 2005, and Application No. 60/657,309 filed on Feb. 28, 2005.

US Referenced Citations (1067)
Number Name Date Kind
3899687 Jones Aug 1975 A
3917317 Ryan Nov 1975 A
4052058 Hintz Oct 1977 A
4065778 Harvey Dec 1977 A
4135791 Govignon Jan 1979 A
4358824 Glickman et al. Nov 1982 A
4526078 Chadabe Jul 1985 A
4538072 Immler et al. Aug 1985 A
4553261 Froessl Nov 1985 A
4610025 Blum et al. Sep 1986 A
4633507 Cannistra et al. Dec 1986 A
4636848 Yamamoto et al. Jan 1987 A
4713008 Stocker et al. Dec 1987 A
4716804 Chadabe Jan 1988 A
4748678 Takeda et al. May 1988 A
4776464 Miller et al. Oct 1988 A
4804949 Faulkerson Feb 1989 A
4805099 Huber Feb 1989 A
4829453 Katsuta et al. May 1989 A
4829872 Topic et al. May 1989 A
4890230 Tanoshima et al. Dec 1989 A
D306162 Faulkerson et al. Feb 1990 S
4901364 Faulkerson et al. Feb 1990 A
4903229 Schmidt et al. Feb 1990 A
4914709 Rudak Apr 1990 A
4941125 Boyne Jul 1990 A
4947261 Ishikawa et al. Aug 1990 A
4949391 Faulkerson et al. Aug 1990 A
4955693 Bobba Sep 1990 A
4958379 Yamaguchi et al. Sep 1990 A
4968877 McAvinney et al. Nov 1990 A
4985863 Fujisawa et al. Jan 1991 A
4988981 Zimmerman et al. Jan 1991 A
5010500 Makkuni et al. Apr 1991 A
5012349 de Fay et al. Apr 1991 A
5040229 Lee et al. Aug 1991 A
5048097 Gaborski et al. Sep 1991 A
5062143 Schmitt Oct 1991 A
5083218 Takasu et al. Jan 1992 A
5093873 Takahashi et al. Mar 1992 A
5107256 Ueno et al. Apr 1992 A
5109439 Froessl Apr 1992 A
5119081 Ikehira et al. Jun 1992 A
5133024 Froessl et al. Jul 1992 A
5133052 Bier et al. Jul 1992 A
5136687 Edelman et al. Aug 1992 A
5140644 Kawaguchi et al. Aug 1992 A
5142161 Brackmann Aug 1992 A
5146404 Calloway et al. Sep 1992 A
5146552 Cassorla et al. Sep 1992 A
5151951 Ueda et al. Sep 1992 A
5157384 Greanias et al. Oct 1992 A
5159668 Kaasila Oct 1992 A
5168147 Bloomberg Dec 1992 A
5168565 Morita et al. Dec 1992 A
5179652 Rozmanith et al. Jan 1993 A
5185857 Rozmanith et al. Feb 1993 A
5201010 Deaton et al. Apr 1993 A
5202985 Goyal Apr 1993 A
5203704 McCloud Apr 1993 A
5212739 Johnson May 1993 A
5229590 Harden et al. Jul 1993 A
5231698 Forcier Jul 1993 A
5243149 Comerford et al. Sep 1993 A
5247285 Yokota et al. Sep 1993 A
5251106 Hui Oct 1993 A
5251316 Anick et al. Oct 1993 A
5252951 Tannenbaum et al. Oct 1993 A
RE34476 Norwood Dec 1993 E
5271068 Ueda et al. Dec 1993 A
5272324 Blevins Dec 1993 A
5288938 Wheaton Feb 1994 A
5301243 Olschafskie et al. Apr 1994 A
5347295 Agulnick et al. Sep 1994 A
5347306 Nitta Sep 1994 A
5347477 Lee Sep 1994 A
5355146 Chiu et al. Oct 1994 A
5360971 Kaufman et al. Nov 1994 A
5367453 Capps et al. Nov 1994 A
5371348 Kumar et al. Dec 1994 A
5377706 Huang Jan 1995 A
5398310 Tchao et al. Mar 1995 A
5404442 Foster et al. Apr 1995 A
5404458 Zetts Apr 1995 A
5418684 Koenck et al. May 1995 A
5418717 Su et al. May 1995 A
5418951 Damashek May 1995 A
5423554 Davis Jun 1995 A
5430558 Sohaei et al. Jul 1995 A
5438630 Chen et al. Aug 1995 A
5444779 Daniele Aug 1995 A
5452442 Kephart Sep 1995 A
5454043 Freeman Sep 1995 A
5462473 Sheller Oct 1995 A
5465325 Capps et al. Nov 1995 A
5465353 Hull et al. Nov 1995 A
5467425 Lau et al. Nov 1995 A
5481278 Shigematsu et al. Jan 1996 A
5485565 Saund et al. Jan 1996 A
5488196 Zimmerman et al. Jan 1996 A
5499108 Cotte et al. Mar 1996 A
5500920 Kupiec Mar 1996 A
5500937 Thompson-Rohrlich Mar 1996 A
5502803 Yoshida et al. Mar 1996 A
5512707 Ohshima Apr 1996 A
5517331 Murai et al. May 1996 A
5517578 Altman et al. May 1996 A
5522798 Johnson et al. Jun 1996 A
5532469 Shepard et al. Jul 1996 A
5533141 Futatsugi et al. Jul 1996 A
5539427 Bricklin et al. Jul 1996 A
5541419 Arackellian Jul 1996 A
5543591 Gillespie et al. Aug 1996 A
5550930 Berman et al. Aug 1996 A
5555363 Tou et al. Sep 1996 A
5563996 Tchao Oct 1996 A
5568452 Kronenberg Oct 1996 A
5570113 Zetts Oct 1996 A
5574804 Olschafskie et al. Nov 1996 A
5577135 Grajski et al. Nov 1996 A
5581276 Cipolla et al. Dec 1996 A
5581670 Bier et al. Dec 1996 A
5581681 Tchao et al. Dec 1996 A
5583542 Capps et al. Dec 1996 A
5583543 Takahashi et al. Dec 1996 A
5583980 Anderson Dec 1996 A
5590219 Gourdol Dec 1996 A
5590256 Tchao et al. Dec 1996 A
5592566 Pagallo et al. Jan 1997 A
5594469 Freeman et al. Jan 1997 A
5594640 Capps et al. Jan 1997 A
5594810 Gourdol Jan 1997 A
5595445 Bobry Jan 1997 A
5596697 Foster et al. Jan 1997 A
5600765 Ando et al. Feb 1997 A
5602376 Coleman et al. Feb 1997 A
5602570 Capps et al. Feb 1997 A
5608778 Partridge, III Mar 1997 A
5612719 Beernink et al. Mar 1997 A
5624265 Redford Apr 1997 A
5625711 Nicholson et al. Apr 1997 A
5625833 Levine et al. Apr 1997 A
5627960 Clifford et al. May 1997 A
5638092 Eng et al. Jun 1997 A
5649060 Ellozy et al. Jul 1997 A
5652849 Conway et al. Jul 1997 A
5656804 Barkan et al. Aug 1997 A
5659638 Bengtson Aug 1997 A
5663514 Usa Sep 1997 A
5663808 Park et al. Sep 1997 A
5668573 Favot et al. Sep 1997 A
5677710 Thompson-Rohrlich Oct 1997 A
5680607 Brueckheimer Oct 1997 A
5682439 Beernink et al. Oct 1997 A
5684873 Tiilikainen Nov 1997 A
5684891 Tanaka et al. Nov 1997 A
5687254 Poon et al. Nov 1997 A
5692073 Cass Nov 1997 A
5699441 Sagawa et al. Dec 1997 A
5701424 Atkinson Dec 1997 A
5701497 Yamauchi et al. Dec 1997 A
5708825 Sotomayor Jan 1998 A
5710831 Beernink et al. Jan 1998 A
5713045 Berdahl Jan 1998 A
5714698 Tokioka et al. Feb 1998 A
5717846 Iida et al. Feb 1998 A
5724521 Dedrick Mar 1998 A
5724985 Snell et al. Mar 1998 A
5732214 Subrahmanyam Mar 1998 A
5732227 Kuzunuki et al. Mar 1998 A
5734923 Sagawa et al. Mar 1998 A
5737507 Smith Apr 1998 A
5745116 Pisutha-Arnond Apr 1998 A
5748805 Withgott et al. May 1998 A
5748926 Fukuda et al. May 1998 A
5752051 Cohen May 1998 A
5754308 Lopresti et al. May 1998 A
5754939 Herz et al. May 1998 A
5756981 Roustaei et al. May 1998 A
5757360 Nitta et al. May 1998 A
5764794 Perlin Jun 1998 A
5767457 Gerpheide et al. Jun 1998 A
5768418 Berman et al. Jun 1998 A
5768607 Drews et al. Jun 1998 A
5774357 Hoffberg et al. Jun 1998 A
5774591 Black et al. Jun 1998 A
5777614 Ando et al. Jul 1998 A
5781662 Mori et al. Jul 1998 A
5781723 Yee et al. Jul 1998 A
5784061 Moran et al. Jul 1998 A
5784504 Anderson et al. Jul 1998 A
5796866 Sakurai et al. Aug 1998 A
5798693 Engellenner Aug 1998 A
5798758 Harada et al. Aug 1998 A
5799219 Moghadam et al. Aug 1998 A
5805167 van Cruyningen Sep 1998 A
5809172 Melen Sep 1998 A
5809267 Moran et al. Sep 1998 A
5809476 Ryan Sep 1998 A
5818612 Segawa et al. Oct 1998 A
5818965 Davies Oct 1998 A
5821925 Carey et al. Oct 1998 A
5822539 van Hoff Oct 1998 A
5825943 DeVito et al. Oct 1998 A
5832474 Lopresti et al. Nov 1998 A
5832528 Kwatinetz et al. Nov 1998 A
5837987 Koenck et al. Nov 1998 A
5838326 Card et al. Nov 1998 A
5838889 Booker Nov 1998 A
5845301 Rivette et al. Dec 1998 A
5848187 Bricklin et al. Dec 1998 A
5852676 Lazar Dec 1998 A
5861886 Moran et al. Jan 1999 A
5862256 Zetts et al. Jan 1999 A
5862260 Rhoads Jan 1999 A
5864635 Zetts et al. Jan 1999 A
5864848 Horvitz et al. Jan 1999 A
5867150 Bricklin et al. Feb 1999 A
5867597 Peairs et al. Feb 1999 A
5867795 Novis et al. Feb 1999 A
5880411 Gillespie et al. Mar 1999 A
5880731 Liles et al. Mar 1999 A
5880743 Moran et al. Mar 1999 A
5884267 Goldenthal et al. Mar 1999 A
5889236 Gillespie et al. Mar 1999 A
5889523 Wilcox et al. Mar 1999 A
5889896 Meshinsky et al. Mar 1999 A
5890147 Peltonen et al. Mar 1999 A
5893095 Jain et al. Apr 1999 A
5893126 Drews et al. Apr 1999 A
5893130 Inoue et al. Apr 1999 A
5895470 Pirolli et al. Apr 1999 A
5899700 Williams et al. May 1999 A
5905251 Knowles May 1999 A
5907328 Brush II et al. May 1999 A
5913185 Martino et al. Jun 1999 A
5917491 Bauersfeld Jun 1999 A
5920477 Hoffberg et al. Jul 1999 A
5920694 Carleton et al. Jul 1999 A
5932863 Rathus et al. Aug 1999 A
5933829 Durst et al. Aug 1999 A
5937422 Nelson et al. Aug 1999 A
5946406 Frink et al. Aug 1999 A
5949921 Kojima et al. Sep 1999 A
5952599 Dolby et al. Sep 1999 A
5953541 King et al. Sep 1999 A
5956423 Frink et al. Sep 1999 A
5960383 Fleischer Sep 1999 A
5963966 Mitchell et al. Oct 1999 A
5966126 Szabo Oct 1999 A
5970455 Wilcox et al. Oct 1999 A
5982853 Liebermann Nov 1999 A
5982928 Shimada et al. Nov 1999 A
5982929 Ilan et al. Nov 1999 A
5983171 Yokoyama et al. Nov 1999 A
5983295 Cotugno Nov 1999 A
5986200 Curtin Nov 1999 A
5986655 Chiu et al. Nov 1999 A
5990878 Ikeda et al. Nov 1999 A
5990893 Numazaki Nov 1999 A
5991441 Jourjine Nov 1999 A
5995643 Saito Nov 1999 A
5999664 Mahoney et al. Dec 1999 A
6002491 Li et al. Dec 1999 A
6002798 Palmer et al. Dec 1999 A
6002808 Freeman Dec 1999 A
6003775 Ackley Dec 1999 A
6009420 Fagg, III et al. Dec 1999 A
6011905 Huttenlocher et al. Jan 2000 A
6012071 Krishna et al. Jan 2000 A
6018342 Bristor Jan 2000 A
6018346 Moran et al. Jan 2000 A
6021218 Capps et al. Feb 2000 A
6021403 Horvitz et al. Feb 2000 A
6025844 Parsons Feb 2000 A
6026388 Liddy et al. Feb 2000 A
6028271 Gillespie et al. Feb 2000 A
6029141 Bezos et al. Feb 2000 A
6029195 Herz Feb 2000 A
6031525 Perlin Feb 2000 A
6033086 Bohn Mar 2000 A
6036086 Sizer et al. Mar 2000 A
6038342 Bernzott et al. Mar 2000 A
6040840 Koshiba et al. Mar 2000 A
6042012 Olmstead et al. Mar 2000 A
6044378 Gladney Mar 2000 A
6049034 Cook Apr 2000 A
6049327 Walker et al. Apr 2000 A
6052481 Grajski et al. Apr 2000 A
6053413 Swift et al. Apr 2000 A
6055333 Guzik et al. Apr 2000 A
6055513 Katz et al. Apr 2000 A
6057844 Strauss May 2000 A
6057845 Dupouy May 2000 A
6061050 Allport et al. May 2000 A
6064854 Peters et al. May 2000 A
6066794 Longo May 2000 A
6069622 Kurlander May 2000 A
6072494 Nguyen Jun 2000 A
6072502 Gupta Jun 2000 A
6075895 Qiao et al. Jun 2000 A
6078308 Rosenberg et al. Jun 2000 A
6081206 Kielland Jun 2000 A
6081621 Ackner Jun 2000 A
6081629 Browning Jun 2000 A
6085162 Cherny Jul 2000 A
6088484 Mead Jul 2000 A
6088731 Kiraly et al. Jul 2000 A
6092038 Kanevsky et al. Jul 2000 A
6092068 Dinkelacker Jul 2000 A
6094689 Embry et al. Jul 2000 A
6095418 Swartz et al. Aug 2000 A
6097392 Leyerle Aug 2000 A
6098106 Philyaw et al. Aug 2000 A
6104401 Parsons Aug 2000 A
6104845 Lipman et al. Aug 2000 A
6107994 Harada et al. Aug 2000 A
6108656 Durst et al. Aug 2000 A
6111580 Kazama et al. Aug 2000 A
6111588 Newell Aug 2000 A
6115053 Perlin Sep 2000 A
6115482 Sears et al. Sep 2000 A
6115724 Booker Sep 2000 A
6118888 Chino et al. Sep 2000 A
6118899 Bloomfield et al. Sep 2000 A
D432539 Philyaw Oct 2000 S
6128003 Smith et al. Oct 2000 A
6134532 Lazarus et al. Oct 2000 A
6138915 Danielson et al. Oct 2000 A
6140140 Hopper Oct 2000 A
6144366 Numazaki et al. Nov 2000 A
6145003 Sanu et al. Nov 2000 A
6147678 Kumar et al. Nov 2000 A
6151208 Bartlett Nov 2000 A
6154222 Haratsch et al. Nov 2000 A
6154723 Cox et al. Nov 2000 A
6154737 Inaba et al. Nov 2000 A
6154758 Chiang Nov 2000 A
6157465 Suda et al. Dec 2000 A
6157935 Tran et al. Dec 2000 A
6164534 Rathus et al. Dec 2000 A
6167369 Schulze Dec 2000 A
6169969 Cohen Jan 2001 B1
6175772 Kamiya et al. Jan 2001 B1
6175922 Wang Jan 2001 B1
6178261 Williams et al. Jan 2001 B1
6178263 Fan et al. Jan 2001 B1
6181343 Lyons Jan 2001 B1
6181778 Ohki et al. Jan 2001 B1
6184847 Fateh et al. Feb 2001 B1
6192165 Irons Feb 2001 B1
6192478 Elledge Feb 2001 B1
6195104 Lyons Feb 2001 B1
6195475 Beausoleil, Jr. et al. Feb 2001 B1
6199048 Hudetz et al. Mar 2001 B1
6201903 Wolff et al. Mar 2001 B1
6204852 Kumar et al. Mar 2001 B1
6208355 Schuster Mar 2001 B1
6208435 Zwolinski Mar 2001 B1
6212299 Yuge Apr 2001 B1
6215890 Matsuo et al. Apr 2001 B1
6218964 Ellis Apr 2001 B1
6219057 Carey et al. Apr 2001 B1
6222465 Kumar et al. Apr 2001 B1
6226631 Evans May 2001 B1
6229137 Bohn May 2001 B1
6229542 Miller May 2001 B1
6233591 Sherman et al. May 2001 B1
6240207 Shinozuka et al. May 2001 B1
6243683 Peters Jun 2001 B1
6244873 Hill et al. Jun 2001 B1
6249292 Christian et al. Jun 2001 B1
6249606 Kiraly et al. Jun 2001 B1
6252598 Segen Jun 2001 B1
6256400 Takata et al. Jul 2001 B1
6265844 Wakefield Jul 2001 B1
6269187 Frink et al. Jul 2001 B1
6269188 Jamali Jul 2001 B1
6270013 Lipman et al. Aug 2001 B1
6285794 Georgiev et al. Sep 2001 B1
6289304 Grefenstette et al. Sep 2001 B1
6292274 Bohn Sep 2001 B1
6304674 Cass et al. Oct 2001 B1
6307952 Dietz Oct 2001 B1
6307955 Zank et al. Oct 2001 B1
6310971 Shiiyama et al. Oct 2001 B1
6310988 Flores et al. Oct 2001 B1
6311152 Bai et al. Oct 2001 B1
6312175 Lum Nov 2001 B1
6313853 Lamontagne et al. Nov 2001 B1
6314406 O'Hagan et al. Nov 2001 B1
6314457 Schena et al. Nov 2001 B1
6316710 Lindemann Nov 2001 B1
6317132 Perlin Nov 2001 B1
6318087 Baumann et al. Nov 2001 B1
6321991 Knowles Nov 2001 B1
6323846 Westerman et al. Nov 2001 B1
6326962 Szabo Dec 2001 B1
6330976 Dymetman et al. Dec 2001 B1
6335725 Koh et al. Jan 2002 B1
6341280 Glass et al. Jan 2002 B1
6341290 Lombardo et al. Jan 2002 B1
6344906 Gatto et al. Feb 2002 B1
6345104 Rhoads Feb 2002 B1
6346933 Lin Feb 2002 B1
6347290 Bartlett Feb 2002 B1
6349308 Whang et al. Feb 2002 B1
6351222 Swan et al. Feb 2002 B1
6356281 Isenman Mar 2002 B1
6356899 Chakrabarti et al. Mar 2002 B1
6360949 Shepard et al. Mar 2002 B1
6360951 Swinehart Mar 2002 B1
6363160 Bradski et al. Mar 2002 B1
RE37654 Longo Apr 2002 E
6366288 Naruki et al. Apr 2002 B1
6369811 Graham et al. Apr 2002 B1
6377296 Zlatsin et al. Apr 2002 B1
6377712 Georgiev et al. Apr 2002 B1
6377986 Philyaw et al. Apr 2002 B1
6378075 Goldstein et al. Apr 2002 B1
6380931 Gillespie et al. Apr 2002 B1
6381602 Shoroff et al. Apr 2002 B1
6384744 Philyaw et al. May 2002 B1
6384829 Prevost et al. May 2002 B1
6393443 Rubin et al. May 2002 B1
6396523 Segal et al. May 2002 B1
6396951 Grefenstette et al. May 2002 B1
6400845 Volino Jun 2002 B1
6404438 Hatlelid et al. Jun 2002 B1
6408257 Harrington et al. Jun 2002 B1
6409401 Petteruti et al. Jun 2002 B1
6414671 Gillespie et al. Jul 2002 B1
6417797 Cousins et al. Jul 2002 B1
6418433 Chakrabarti et al. Jul 2002 B1
6421453 Kanevsky et al. Jul 2002 B1
6421675 Ryan et al. Jul 2002 B1
6427032 Irons et al. Jul 2002 B1
6429899 Nio et al. Aug 2002 B1
6430554 Rothschild Aug 2002 B1
6430567 Burridge Aug 2002 B2
6433784 Merrick et al. Aug 2002 B1
6434561 Durst, Jr. et al. Aug 2002 B1
6434581 Forcier Aug 2002 B1
6438523 Oberteuffer et al. Aug 2002 B1
6448979 Schena et al. Sep 2002 B1
6449616 Walker et al. Sep 2002 B1
6454626 An Sep 2002 B1
6459823 Altunbasak et al. Oct 2002 B2
6460036 Herz Oct 2002 B1
6466198 Feinstein Oct 2002 B1
6466336 Sturgeon et al. Oct 2002 B1
6476830 Farmer et al. Nov 2002 B1
6476834 Doval et al. Nov 2002 B1
6477239 Ohki et al. Nov 2002 B1
6483513 Haratsch et al. Nov 2002 B1
6484156 Gupta et al. Nov 2002 B1
6486874 Muthuswamy et al. Nov 2002 B1
6486892 Stern Nov 2002 B1
6489970 Pazel Dec 2002 B1
6490553 Van Thong et al. Dec 2002 B2
6491217 Catan Dec 2002 B2
6493707 Dey et al. Dec 2002 B1
6498970 Colmenarez et al. Dec 2002 B2
6504138 Mangerson Jan 2003 B1
6507349 Balassanian Jan 2003 B1
6508706 Sitrick et al. Jan 2003 B2
6509707 Yamashita et al. Jan 2003 B2
6509912 Moran et al. Jan 2003 B1
6510387 Fuchs et al. Jan 2003 B2
6510417 Woods et al. Jan 2003 B1
6518950 Dougherty et al. Feb 2003 B1
6520407 Nieswand et al. Feb 2003 B1
6522333 Hatlelid et al. Feb 2003 B1
6525749 Moran et al. Feb 2003 B1
6526395 Morris Feb 2003 B1
6526449 Philyaw et al. Feb 2003 B1
6532007 Matsuda Mar 2003 B1
6537324 Tabata et al. Mar 2003 B1
6538187 Beigi Mar 2003 B2
6539931 Trajkovic et al. Apr 2003 B2
6540141 Dougherty et al. Apr 2003 B1
6542933 Durst, Jr. et al. Apr 2003 B1
6543052 Ogasawara Apr 2003 B1
6545669 Kinawi et al. Apr 2003 B1
6546385 Mao et al. Apr 2003 B1
6546405 Gupta et al. Apr 2003 B2
6549751 Mandri Apr 2003 B1
6549891 Rauber et al. Apr 2003 B1
6554433 Holler Apr 2003 B1
6560281 Black et al. May 2003 B1
6564144 Cherveny May 2003 B1
6570555 Prevost et al. May 2003 B1
6571193 Unuma et al. May 2003 B1
6571235 Marpe et al. May 2003 B1
6573883 Bartlett Jun 2003 B1
6577329 Flickner et al. Jun 2003 B1
6577953 Swope et al. Jun 2003 B1
6587835 Treyz et al. Jul 2003 B1
6593723 Johnson Jul 2003 B1
6594616 Zhang et al. Jul 2003 B2
6594705 Philyaw Jul 2003 B1
6597443 Boman Jul 2003 B2
6597812 Fallon et al. Jul 2003 B1
6599130 Moehrle Jul 2003 B2
6600475 Gutta et al. Jul 2003 B2
6610936 Gillespie et al. Aug 2003 B2
6611598 Hayosh Aug 2003 B1
6615136 Swope et al. Sep 2003 B1
6615268 Philyaw et al. Sep 2003 B1
6616038 Olschafskie et al. Sep 2003 B1
6616047 Catan Sep 2003 B2
6617369 Parfondry et al. Sep 2003 B2
6618504 Yoshino et al. Sep 2003 B1
6618732 White et al. Sep 2003 B1
6622165 Philyaw Sep 2003 B1
6624833 Kumar et al. Sep 2003 B1
6625335 Kanai Sep 2003 B1
6625581 Perkowski Sep 2003 B1
6628295 Wilensky Sep 2003 B2
6629133 Philyaw et al. Sep 2003 B1
6630924 Peck Oct 2003 B1
6631404 Philyaw Oct 2003 B1
6636763 Junker et al. Oct 2003 B1
6636892 Philyaw Oct 2003 B1
6636896 Philyaw Oct 2003 B1
6638314 Meyerzon et al. Oct 2003 B1
6638317 Nakao et al. Oct 2003 B2
6640145 Hoffberg et al. Oct 2003 B2
6641037 Williams Nov 2003 B2
6643692 Philyaw et al. Nov 2003 B1
6643696 Davis et al. Nov 2003 B2
6650761 Rodriguez et al. Nov 2003 B1
6651053 Rothschild Nov 2003 B1
6658151 Lee et al. Dec 2003 B2
6661919 Nicholson et al. Dec 2003 B2
6664991 Chew et al. Dec 2003 B1
6669088 Veeneman Dec 2003 B2
6671684 Hull et al. Dec 2003 B1
6677969 Hongo Jan 2004 B1
6678075 Tsai et al. Jan 2004 B1
6678664 Ganesan Jan 2004 B1
6678687 Watanabe et al. Jan 2004 B2
6681031 Cohen et al. Jan 2004 B2
6686844 Watanabe et al. Feb 2004 B2
6687612 Cherveny Feb 2004 B2
6688081 Boyd Feb 2004 B2
6688522 Philyaw et al. Feb 2004 B1
6688523 Koenck Feb 2004 B1
6688525 Nelson et al. Feb 2004 B1
6690358 Kaplan Feb 2004 B2
6691107 Dockter et al. Feb 2004 B1
6691123 Guliksen Feb 2004 B1
6691151 Cheyer et al. Feb 2004 B1
6691194 Ofer Feb 2004 B1
6691914 Isherwood et al. Feb 2004 B2
6692259 Kumar et al. Feb 2004 B2
6694356 Philyaw Feb 2004 B1
6697838 Jakobson Feb 2004 B1
6697949 Philyaw et al. Feb 2004 B1
H2098 Morin Mar 2004 H
6701354 Philyaw et al. Mar 2004 B1
6701369 Philyaw Mar 2004 B1
6704024 Robotham et al. Mar 2004 B2
6704699 Nir et al. Mar 2004 B2
6707581 Browning Mar 2004 B1
6708208 Philyaw Mar 2004 B1
6714677 Stearns et al. Mar 2004 B1
6714969 Klein et al. Mar 2004 B1
6718308 Nolting Apr 2004 B1
6720984 Jorgensen et al. Apr 2004 B1
6721921 Altman Apr 2004 B1
6725125 Basson et al. Apr 2004 B2
6725203 Seet et al. Apr 2004 B1
6725260 Philyaw Apr 2004 B1
6728000 Lapstun et al. Apr 2004 B1
6735632 Kiraly et al. May 2004 B1
6738519 Nishiwaki May 2004 B1
6741745 Dance et al. May 2004 B2
6741871 Silverbrook et al. May 2004 B1
6744938 Rantze et al. Jun 2004 B1
6745234 Philyaw et al. Jun 2004 B1
6745937 Walsh et al. Jun 2004 B2
6747632 Howard Jun 2004 B2
6748306 Lipowicz Jun 2004 B2
6750852 Gillespie et al. Jun 2004 B2
6752498 Covannon et al. Jun 2004 B2
6753883 Schena et al. Jun 2004 B2
6754632 Kalinowski et al. Jun 2004 B1
6754698 Philyaw et al. Jun 2004 B1
6757715 Philyaw Jun 2004 B1
6757783 Koh Jun 2004 B2
6758398 Philyaw et al. Jul 2004 B1
6760661 Klein et al. Jul 2004 B2
6766494 Price et al. Jul 2004 B1
6766956 Boylan, III et al. Jul 2004 B1
6771283 Carro Aug 2004 B2
6772047 Butikofer Aug 2004 B2
6772338 Hull Aug 2004 B1
6773177 Denoue et al. Aug 2004 B2
6775422 Altman Aug 2004 B1
6778988 Bengtson Aug 2004 B2
6783071 Levine et al. Aug 2004 B2
6785421 Gindele et al. Aug 2004 B1
6786793 Wang Sep 2004 B1
6788809 Grzeszczuk et al. Sep 2004 B1
6788815 Lui et al. Sep 2004 B2
6791536 Keely et al. Sep 2004 B2
6791588 Philyaw Sep 2004 B1
6792112 Campbell et al. Sep 2004 B1
6792452 Philyaw Sep 2004 B1
6798429 Bradski Sep 2004 B2
6801637 Voronka et al. Oct 2004 B2
6801658 Morita et al. Oct 2004 B2
6801907 Zagami Oct 2004 B1
6804396 Higaki et al. Oct 2004 B2
6804659 Graham et al. Oct 2004 B1
6812961 Parulski et al. Nov 2004 B1
6813039 Silverbrook et al. Nov 2004 B1
6816894 Philyaw et al. Nov 2004 B1
6820237 Abu-Hakima et al. Nov 2004 B1
6822639 Silverbrook et al. Nov 2004 B1
6823075 Perry Nov 2004 B2
6823388 Philyaw et al. Nov 2004 B1
6824044 Lapstun et al. Nov 2004 B1
6824057 Rathus et al. Nov 2004 B2
6825956 Silverbrook et al. Nov 2004 B2
6826592 Philyaw et al. Nov 2004 B1
6827259 Rathus et al. Dec 2004 B2
6827267 Rathus et al. Dec 2004 B2
6829650 Philyaw et al. Dec 2004 B1
6830187 Rathus et al. Dec 2004 B2
6830188 Rathus et al. Dec 2004 B2
6832116 Tillgren et al. Dec 2004 B1
6833936 Seymour Dec 2004 B1
6834804 Rathus et al. Dec 2004 B2
6836799 Philyaw et al. Dec 2004 B1
6845913 Madding et al. Jan 2005 B2
6850252 Hoffberg Feb 2005 B1
6862046 Ko Mar 2005 B2
6868193 Gharbia et al. Mar 2005 B1
6877001 Wolf et al. Apr 2005 B2
6879957 Pechter et al. Apr 2005 B1
6880122 Lee et al. Apr 2005 B1
6880124 Moore Apr 2005 B1
6886104 McClurg et al. Apr 2005 B1
6892264 Lamb May 2005 B2
6898592 Peltonen et al. May 2005 B2
6917722 Bloomfield et al. Jul 2005 B1
6917724 Seder et al. Jul 2005 B2
6922725 Lamming et al. Jul 2005 B2
6925182 Epstein Aug 2005 B1
6931592 Ramaley et al. Aug 2005 B1
6938024 Horvitz Aug 2005 B1
6947571 Rhoads et al. Sep 2005 B1
6947930 Anick et al. Sep 2005 B2
6952281 Irons et al. Oct 2005 B1
6957384 Jeffrey et al. Oct 2005 B2
6970915 Partovi et al. Nov 2005 B1
6978297 Piersol Dec 2005 B1
6985169 Deng et al. Jan 2006 B1
6990548 Kaylor Jan 2006 B1
6991158 Munte Jan 2006 B2
6992655 Ericson et al. Jan 2006 B2
6993580 Isherwood et al. Jan 2006 B2
7001681 Wood Feb 2006 B2
7006881 Hoffberg et al. Feb 2006 B1
7010616 Carlson et al. Mar 2006 B2
7016084 Tsai Mar 2006 B2
7020663 Hay et al. Mar 2006 B2
7043489 Kelley May 2006 B1
7047491 Schubert et al. May 2006 B2
7051943 Leone et al. May 2006 B2
7057607 Mayoraz et al. Jun 2006 B2
7058223 Cox Jun 2006 B2
7062437 Kovales et al. Jun 2006 B2
7062706 Maxwell et al. Jun 2006 B2
7069240 Spero et al. Jun 2006 B2
7069272 Snyder Jun 2006 B2
7079713 Simmons Jul 2006 B2
7085755 Bluhm et al. Aug 2006 B2
7089330 Mason Aug 2006 B1
7093759 Walsh Aug 2006 B2
7096218 Schirmer et al. Aug 2006 B2
7103848 Barsness et al. Sep 2006 B2
7110576 Norris, Jr. et al. Sep 2006 B2
7111787 Ehrhart Sep 2006 B2
7117374 Hill et al. Oct 2006 B2
7121469 Dorai et al. Oct 2006 B2
7124093 Graham et al. Oct 2006 B1
7130885 Chandra et al. Oct 2006 B2
7131061 MacLean et al. Oct 2006 B2
7133862 Hubert et al. Nov 2006 B2
7136814 McConnell Nov 2006 B1
7137077 Iwema et al. Nov 2006 B2
7139445 Pilu et al. Nov 2006 B2
7151864 Henry et al. Dec 2006 B2
7165268 Moore et al. Jan 2007 B1
7167586 Braun et al. Jan 2007 B2
7174054 Manber et al. Feb 2007 B2
7174332 Baxter et al. Feb 2007 B2
7181761 Davis et al. Feb 2007 B2
7185275 Roberts et al. Feb 2007 B2
7188307 Ohsawa Mar 2007 B2
7190480 Sturgeon et al. Mar 2007 B2
7197716 Newell et al. Mar 2007 B2
7203158 Oshima et al. Apr 2007 B2
7216121 Bachman et al. May 2007 B2
7216224 Lapstun et al. May 2007 B2
7224480 Tanaka et al. May 2007 B2
7224820 Inomata et al. May 2007 B2
7225979 Silverbrook et al. Jun 2007 B2
7234645 Silverbrook et al. Jun 2007 B2
7239747 Bresler et al. Jul 2007 B2
7240843 Paul et al. Jul 2007 B2
7242492 Currans et al. Jul 2007 B2
7246118 Chastain et al. Jul 2007 B2
7260534 Gandhi et al. Aug 2007 B2
7262798 Stavely et al. Aug 2007 B2
7263521 Carpentier et al. Aug 2007 B2
7275049 Clausner et al. Sep 2007 B2
7283992 Liu et al. Oct 2007 B2
7284192 Kashi et al. Oct 2007 B2
7289806 Morris et al. Oct 2007 B2
7295101 Ward et al. Nov 2007 B2
7299186 Kuzunuki et al. Nov 2007 B2
7299969 Paul et al. Nov 2007 B2
7327883 Polonowski Feb 2008 B2
7331523 Meier et al. Feb 2008 B2
7339467 Lamb Mar 2008 B2
7349552 Levy et al. Mar 2008 B2
7353199 DiStefano, III Apr 2008 B1
7362902 Baker et al. Apr 2008 B1
7376581 DeRose et al. May 2008 B2
7383263 Goger Jun 2008 B2
7392287 Ratcliff, III Jun 2008 B2
7392475 Leban et al. Jun 2008 B1
7404520 Vesuna Jul 2008 B2
7409434 Lamming et al. Aug 2008 B2
7412158 Kakkori Aug 2008 B2
7415670 Hull et al. Aug 2008 B2
7421155 King et al. Sep 2008 B2
7424543 Rice, III Sep 2008 B2
7426486 Treibach-Heck et al. Sep 2008 B2
7433068 Stevens et al. Oct 2008 B2
7433893 Lowry Oct 2008 B2
7437023 King et al. Oct 2008 B2
7487112 Barnes, Jr. Feb 2009 B2
7493487 Phillips et al. Feb 2009 B2
7496638 Philyaw Feb 2009 B2
7505785 Callaghan et al. Mar 2009 B2
7505956 Ibbotson Mar 2009 B2
7512254 Vollkommer et al. Mar 2009 B2
7523067 Nakajima Apr 2009 B1
7533040 Perkowski May 2009 B2
7536547 Van Den Tillaart May 2009 B2
7552075 Walsh Jun 2009 B1
7552381 Barrus Jun 2009 B2
7561312 Proudfoot et al. Jul 2009 B1
7574407 Carro et al. Aug 2009 B2
7587412 Weyl et al. Sep 2009 B2
7591597 Pasqualini et al. Sep 2009 B2
7593605 King et al. Sep 2009 B2
7596269 King et al. Sep 2009 B2
7599580 King et al. Oct 2009 B2
7599844 King et al. Oct 2009 B2
7606741 King et al. Oct 2009 B2
7613634 Siegel et al. Nov 2009 B2
7616840 Erol et al. Nov 2009 B2
7634407 Chelba et al. Dec 2009 B2
7634468 Stephan Dec 2009 B2
7646921 Vincent et al. Jan 2010 B2
7647349 Hubert et al. Jan 2010 B2
7650035 Vincent et al. Jan 2010 B2
7660813 Milic-Frayling et al. Feb 2010 B2
7664734 Lawrence et al. Feb 2010 B2
7672543 Hull et al. Mar 2010 B2
7680067 Prasad et al. Mar 2010 B2
7689712 Lee et al. Mar 2010 B2
7689832 Talmor et al. Mar 2010 B2
7697758 Vincent et al. Apr 2010 B2
7698344 Sareen et al. Apr 2010 B2
7702624 King et al. Apr 2010 B2
7706611 King et al. Apr 2010 B2
7707039 King et al. Apr 2010 B2
7710598 Harrison, Jr. May 2010 B2
7742953 King et al. Jun 2010 B2
7761451 Cunningham Jul 2010 B2
7779002 Gomes et al. Aug 2010 B1
7783617 Lu et al. Aug 2010 B2
7788248 Forstall et al. Aug 2010 B2
7796116 Salsman et al. Sep 2010 B2
7812860 King et al. Oct 2010 B2
7818215 King et al. Oct 2010 B2
7831912 King et al. Nov 2010 B2
7872669 Darrell et al. Jan 2011 B2
7894670 King et al. Feb 2011 B2
7941433 Benson May 2011 B2
7949191 Ramkumar et al. May 2011 B1
8082258 Kumar et al. Dec 2011 B2
8111927 Vincent et al. Feb 2012 B2
8146156 King et al. Mar 2012 B2
20010001854 Schena et al. May 2001 A1
20010003176 Schena et al. Jun 2001 A1
20010003177 Schena et al. Jun 2001 A1
20010032252 Durst et al. Oct 2001 A1
20010034237 Garahi Oct 2001 A1
20010049636 Hudda et al. Dec 2001 A1
20010053252 Creque Dec 2001 A1
20010055411 Black Dec 2001 A1
20010056463 Grady et al. Dec 2001 A1
20020002504 Engel et al. Jan 2002 A1
20020012065 Watanabe Jan 2002 A1
20020013781 Petersen Jan 2002 A1
20020016750 Attia Feb 2002 A1
20020020750 Dymetman et al. Feb 2002 A1
20020022993 Miller et al. Feb 2002 A1
20020023158 Polizzi et al. Feb 2002 A1
20020023215 Wang et al. Feb 2002 A1
20020023957 Michaelis et al. Feb 2002 A1
20020023959 Miller et al. Feb 2002 A1
20020029350 Cooper et al. Mar 2002 A1
20020038456 Hansen et al. Mar 2002 A1
20020049781 Bengtson Apr 2002 A1
20020051262 Nuttall et al. May 2002 A1
20020052747 Sarukkai May 2002 A1
20020054059 Schneiderman May 2002 A1
20020055906 Katz et al. May 2002 A1
20020055919 Mikheev May 2002 A1
20020067308 Robertson Jun 2002 A1
20020073000 Sage Jun 2002 A1
20020075298 Schena et al. Jun 2002 A1
20020076110 Zee Jun 2002 A1
20020090132 Boncyk et al. Jul 2002 A1
20020091569 Kitaura et al. Jul 2002 A1
20020091928 Bouchard et al. Jul 2002 A1
20020099812 Davis et al. Jul 2002 A1
20020102966 Lev et al. Aug 2002 A1
20020111960 Irons et al. Aug 2002 A1
20020125411 Christy Sep 2002 A1
20020133725 Roy et al. Sep 2002 A1
20020135815 Finn Sep 2002 A1
20020154817 Katsuyama et al. Oct 2002 A1
20020161658 Sussman Oct 2002 A1
20020169509 Huang et al. Nov 2002 A1
20020191847 Newman et al. Dec 2002 A1
20020194143 Banerjee et al. Dec 2002 A1
20020199198 Stonedahl Dec 2002 A1
20030001018 Hussey et al. Jan 2003 A1
20030004724 Kahn et al. Jan 2003 A1
20030004991 Keskar et al. Jan 2003 A1
20030009495 Adjaoute Jan 2003 A1
20030019939 Sellen Jan 2003 A1
20030028889 McCoskey et al. Feb 2003 A1
20030039411 Nada Feb 2003 A1
20030040957 Rodriguez et al. Feb 2003 A1
20030043042 Moores et al. Mar 2003 A1
20030046307 Rivette et al. Mar 2003 A1
20030050854 Showghi et al. Mar 2003 A1
20030065770 Davis et al. Apr 2003 A1
20030093384 Durst et al. May 2003 A1
20030093400 Santosuosso May 2003 A1
20030093545 Liu et al. May 2003 A1
20030098352 Schnee et al. May 2003 A1
20030106018 Silverbrook et al. Jun 2003 A1
20030130904 Katz et al. Jul 2003 A1
20030132298 Swartz et al. Jul 2003 A1
20030144865 Lin et al. Jul 2003 A1
20030149678 Cook Aug 2003 A1
20030150907 Metcalf et al. Aug 2003 A1
20030160975 Skurdal et al. Aug 2003 A1
20030171910 Abir Sep 2003 A1
20030173405 Wilz et al. Sep 2003 A1
20030179908 Mahoney et al. Sep 2003 A1
20030182399 Silber Sep 2003 A1
20030187751 Watson et al. Oct 2003 A1
20030187886 Hull et al. Oct 2003 A1
20030195851 Ong Oct 2003 A1
20030200152 Divekar Oct 2003 A1
20030212527 Moore et al. Nov 2003 A1
20030214528 Pierce et al. Nov 2003 A1
20030218070 Tsikos et al. Nov 2003 A1
20030220835 Barnes, Jr. Nov 2003 A1
20030223637 Simske et al. Dec 2003 A1
20030225547 Paradies Dec 2003 A1
20040001217 Wu Jan 2004 A1
20040006509 Mannik et al. Jan 2004 A1
20040006740 Krohn et al. Jan 2004 A1
20040015437 Choi et al. Jan 2004 A1
20040015606 Philyaw Jan 2004 A1
20040023200 Blume Feb 2004 A1
20040028295 Allen et al. Feb 2004 A1
20040036718 Warren et al. Feb 2004 A1
20040042667 Lee et al. Mar 2004 A1
20040044576 Kurihara et al. Mar 2004 A1
20040044627 Russell et al. Mar 2004 A1
20040044952 Jiang et al. Mar 2004 A1
20040052400 Inomata et al. Mar 2004 A1
20040059779 Philyaw Mar 2004 A1
20040064453 Ruiz et al. Apr 2004 A1
20040068483 Sakurai et al. Apr 2004 A1
20040073708 Warnock Apr 2004 A1
20040073874 Poibeau et al. Apr 2004 A1
20040075686 Watler et al. Apr 2004 A1
20040078749 Hull et al. Apr 2004 A1
20040098165 Butikofer May 2004 A1
20040121815 Fournier et al. Jun 2004 A1
20040122811 Page Jun 2004 A1
20040128514 Rhoads Jul 2004 A1
20040139106 Bachman et al. Jul 2004 A1
20040139107 Bachman et al. Jul 2004 A1
20040139400 Allam et al. Jul 2004 A1
20040158492 Lopez et al. Aug 2004 A1
20040181688 Wittkotter Sep 2004 A1
20040186766 Fellenstein et al. Sep 2004 A1
20040186859 Butcher Sep 2004 A1
20040189691 Jojic et al. Sep 2004 A1
20040193488 Khoo et al. Sep 2004 A1
20040199615 Philyaw Oct 2004 A1
20040204953 Muir et al. Oct 2004 A1
20040205534 Koelle Oct 2004 A1
20040206809 Wood et al. Oct 2004 A1
20040208369 Nakayama Oct 2004 A1
20040208372 Boncyk et al. Oct 2004 A1
20040210943 Philyaw Oct 2004 A1
20040217160 Silverbrook et al. Nov 2004 A1
20040220975 Carpentier et al. Nov 2004 A1
20040229194 Yang Nov 2004 A1
20040230837 Philyaw et al. Nov 2004 A1
20040236791 Kinjo Nov 2004 A1
20040243601 Toshima Dec 2004 A1
20040250201 Caspi Dec 2004 A1
20040254795 Fujii et al. Dec 2004 A1
20040256454 Kocher Dec 2004 A1
20040258274 Brundage et al. Dec 2004 A1
20040258275 Rhoads Dec 2004 A1
20040260470 Rast Dec 2004 A1
20040260618 Larson Dec 2004 A1
20040267734 Toshima Dec 2004 A1
20040268237 Jones et al. Dec 2004 A1
20050005168 Dick Jan 2005 A1
20050022114 Shanahan et al. Jan 2005 A1
20050033713 Bala et al. Feb 2005 A1
20050076095 Mathew et al. Apr 2005 A1
20050086309 Galli et al. Apr 2005 A1
20050091578 Madan et al. Apr 2005 A1
20050097335 Shenoy et al. May 2005 A1
20050108001 Aarskog May 2005 A1
20050108195 Yalovsky et al. May 2005 A1
20050132281 Pan et al. Jun 2005 A1
20050136949 Barnes, Jr. Jun 2005 A1
20050139649 Metcalf et al. Jun 2005 A1
20050144074 Fredregill et al. Jun 2005 A1
20050149516 Wolf et al. Jul 2005 A1
20050149538 Singh et al. Jul 2005 A1
20050154760 Bhakta et al. Jul 2005 A1
20050205671 Gelsomini et al. Sep 2005 A1
20050214730 Rines Sep 2005 A1
20050220359 Sun et al. Oct 2005 A1
20050222801 Wulff et al. Oct 2005 A1
20050228683 Saylor et al. Oct 2005 A1
20050231746 Parry et al. Oct 2005 A1
20050243386 Sheng Nov 2005 A1
20050251448 Gropper Nov 2005 A1
20050262058 Chandrasekar et al. Nov 2005 A1
20050270358 Kuchen et al. Dec 2005 A1
20050278179 Overend et al. Dec 2005 A1
20050278314 Buchheit Dec 2005 A1
20050288954 McCarthy et al. Dec 2005 A1
20050289054 Silverbrook et al. Dec 2005 A1
20060011728 Frantz et al. Jan 2006 A1
20060023945 King et al. Feb 2006 A1
20060041484 King et al. Feb 2006 A1
20060041538 King et al. Feb 2006 A1
20060041590 King et al. Feb 2006 A1
20060041605 King et al. Feb 2006 A1
20060045374 Kim et al. Mar 2006 A1
20060048046 Joshi et al. Mar 2006 A1
20060053097 King et al. Mar 2006 A1
20060069616 Bau Mar 2006 A1
20060080314 Hubert et al. Apr 2006 A1
20060081714 King et al. Apr 2006 A1
20060085477 Phillips et al. Apr 2006 A1
20060098900 King et al. May 2006 A1
20060101285 Chen et al. May 2006 A1
20060103893 Azimi et al. May 2006 A1
20060104515 King et al. May 2006 A1
20060119900 King et al. Jun 2006 A1
20060122983 King et al. Jun 2006 A1
20060126131 Tseng et al. Jun 2006 A1
20060136629 King et al. Jun 2006 A1
20060138219 Brzezniak et al. Jun 2006 A1
20060146169 Segman Jul 2006 A1
20060173859 Kim et al. Aug 2006 A1
20060195695 Keys Aug 2006 A1
20060200780 Iwema et al. Sep 2006 A1
20060224895 Mayer Oct 2006 A1
20060229940 Grossman Oct 2006 A1
20060239579 Ritter Oct 2006 A1
20060256371 King et al. Nov 2006 A1
20060259783 Work et al. Nov 2006 A1
20060266839 Yavid et al. Nov 2006 A1
20060283952 Wang Dec 2006 A1
20070005570 Hurst-Hiller et al. Jan 2007 A1
20070009245 Ito Jan 2007 A1
20070050712 Hull et al. Mar 2007 A1
20070061146 Jaramillo et al. Mar 2007 A1
20070099636 Roth May 2007 A1
20070170248 Brundage et al. Jul 2007 A1
20070173266 Barnes, Jr. Jul 2007 A1
20070194119 Vinogradov et al. Aug 2007 A1
20070208561 Choi et al. Sep 2007 A1
20070208732 Flowers et al. Sep 2007 A1
20070219940 Mueller et al. Sep 2007 A1
20070228306 Gannon et al. Oct 2007 A1
20070233806 Asadi Oct 2007 A1
20070238076 Burstein et al. Oct 2007 A1
20070249406 Andreasson Oct 2007 A1
20070279711 King et al. Dec 2007 A1
20070300142 King et al. Dec 2007 A1
20080023550 Yu et al. Jan 2008 A1
20080046417 Jeffery et al. Feb 2008 A1
20080063276 Vincent et al. Mar 2008 A1
20080071775 Gross Mar 2008 A1
20080072134 Balakrishnan et al. Mar 2008 A1
20080082903 McCurdy et al. Apr 2008 A1
20080091954 Morris et al. Apr 2008 A1
20080093460 Frantz et al. Apr 2008 A1
20080126415 Chaudhury et al. May 2008 A1
20080137971 King et al. Jun 2008 A1
20080141117 King et al. Jun 2008 A1
20080170674 Ozden et al. Jul 2008 A1
20080172365 Ozden et al. Jul 2008 A1
20080177825 Dubinko et al. Jul 2008 A1
20080195664 Maharajh et al. Aug 2008 A1
20080222166 Hultgren et al. Sep 2008 A1
20080235093 Uland Sep 2008 A1
20080313172 King et al. Dec 2008 A1
20090012806 Ricordi et al. Jan 2009 A1
20090018990 Moraleda Jan 2009 A1
20090077658 King et al. Mar 2009 A1
20090247219 Lin et al. Oct 2009 A1
20100092095 King et al. Apr 2010 A1
20100121848 Yaroslavskiy et al. May 2010 A1
20100177970 King et al. Jul 2010 A1
20100182631 King et al. Jul 2010 A1
20100183246 King et al. Jul 2010 A1
20100185538 King et al. Jul 2010 A1
20100185620 Schiller Jul 2010 A1
20100278453 King Nov 2010 A1
20100318797 King et al. Dec 2010 A1
20110019020 King et al. Jan 2011 A1
20110019919 King et al. Jan 2011 A1
20110022940 King et al. Jan 2011 A1
20110025842 King et al. Feb 2011 A1
20110026838 King et al. Feb 2011 A1
20110029443 King et al. Feb 2011 A1
20110029504 King et al. Feb 2011 A1
20110033080 King et al. Feb 2011 A1
20110035289 King et al. Feb 2011 A1
20110035656 King et al. Feb 2011 A1
20110035662 King et al. Feb 2011 A1
20110043652 King et al. Feb 2011 A1
20110044547 King et al. Feb 2011 A1
20110072012 Ah-Pine et al. Mar 2011 A1
20110209191 Shah Aug 2011 A1
20110295842 King et al. Dec 2011 A1
20110299125 King et al. Dec 2011 A1
Foreign Referenced Citations (83)
Number Date Country
0424803 May 1991 EP
0544434 Jun 1993 EP
0596247 May 1994 EP
0697793 Feb 1996 EP
0887753 Dec 1998 EP
1054335 Nov 2000 EP
1087305 Mar 2001 EP
1141882 Oct 2001 EP
1318659 Jun 2003 EP
1398711 Mar 2004 EP
2 366 033 Feb 2002 GB
3260768 Nov 1991 JP
06-289983 Oct 1994 JP
08-087378 Apr 1996 JP
10-133847 May 1998 JP
10-200804 Jul 1998 JP
H11-213011 Aug 1999 JP
2001-345710 Dec 2001 JP
2003216631 Jul 2003 JP
2004-500635 Jan 2004 JP
2004-050722 Feb 2004 JP
10-2000-0054268 Sep 2000 KR
10-2000-0054339 Sep 2000 KR
10-2004-0029895 Apr 2004 KR
10-2007-0051217 May 2007 KR
10-0741368 Jul 2007 KR
10-0761912 Sep 2007 KR
9419766 Sep 1994 WO
0056055 Sep 2000 WO
WO-0067091 Nov 2000 WO
0103017 Jan 2001 WO
0124051 Apr 2001 WO
0133553 May 2001 WO
WO-0211446 Feb 2002 WO
02061730 Aug 2002 WO
WO-02091233 Nov 2002 WO
WO-2004084109 Sep 2004 WO
WO-2005071665 Aug 2005 WO
2005096750 Oct 2005 WO
2005096755 Oct 2005 WO
2005098596 Oct 2005 WO
2005098597 Oct 2005 WO
2005098598 Oct 2005 WO
2005098599 Oct 2005 WO
2005098600 Oct 2005 WO
2005098601 Oct 2005 WO
2005098602 Oct 2005 WO
2005098603 Oct 2005 WO
2005098604 Oct 2005 WO
2005098605 Oct 2005 WO
2005098606 Oct 2005 WO
2005098607 Oct 2005 WO
2005098609 Oct 2005 WO
2005098610 Oct 2005 WO
2005101192 Oct 2005 WO
2005101193 Oct 2005 WO
2005106643 Nov 2005 WO
2005114380 Dec 2005 WO
2006014727 Feb 2006 WO
2006023715 Mar 2006 WO
2006023717 Mar 2006 WO
2006023718 Mar 2006 WO
2006023806 Mar 2006 WO
2006023937 Mar 2006 WO
2006026188 Mar 2006 WO
2006029259 Mar 2006 WO
2006036853 Apr 2006 WO
2006037011 Apr 2006 WO
2006093971 Sep 2006 WO
2006124496 Nov 2006 WO
2007141020 Dec 2007 WO
2008014255 Jan 2008 WO
WO-2008002074 Jan 2008 WO
2005028674 Mar 2008 WO
2008031625 Mar 2008 WO
2008072874 Jun 2008 WO
2010096191 Aug 2010 WO
2010096192 Aug 2010 WO
2010096193 Aug 2010 WO
2010105244 Sep 2010 WO
2010105245 Sep 2010 WO
2010105246 Sep 2010 WO
2010108159 Sep 2010 WO
Non-Patent Literature Citations (357)
Entry
Feldman, Susan, The Answer Machine, Searcher, Jan. 2000, v. 8, n. 1, p. 58, downloaded from Dialog Web on Jul. 5, 2009, 23 pages.
Price et al., Linking by Inking: Trailblazing in a Paper-like Hypertext, Proceedings of Hypertext '98, Jun. 20-24, Pittsburgh, PA, ACM Press, pp. 30-39, 10 pages.
Bagley, Steven C; Kopec, Gary E, Editing Images of Text, Communications of the ACM v37n12 pp. 63-72, Dec. 1994, downloaded from Dialog Web on the Internet on Jun. 18, 2011, 14 pages.
U.S. Appl. No. 10/676,881, Lee et al.
Hull, Jonathan and Dar-Shyang Lee, Simultaneous Highlighting of Paper and Electronic Documents, © 2000 IEEE, pp. 401-404.
PCT International Search Report for International Application No. PCT/US05/11017, date of mailing Jul. 15, 2008, 2 pages.
PCT International Search Report for International Application No. PCT/US05/11089, date of mailing Jul. 8, 2008, 3 pages.
Non-Final Office Action for U.S. Appl. No. 11/098,038, Mail Date Apr. 3, 2008, 11 pages.
Non-Final Office Action for U.S. Appl. No. 11/097,828, Mail Date May 22, 2008, 38 pages.
Non-Final Office Action for U.S. Appl. No. 11/098,014, Mail Date Jun. 18, 2008, 37 pages.
Non-Final Office Action for U.S. Appl. No. 11/097,836, Mail Date May 13, 2008, 56 pages.
Non-Final Office Action for U.S. Appl. No. 11/110,353, Mail Date Jun. 11, 2008, 24 pages.
Final Office Action for U.S. Appl. No. 11/097,835, Mail Date Jun. 23, 2008, 26 pages.
Final Office Action for U.S. Appl. No. 11/098,043, Mail Date Apr. 17, 2008, 45 pages.
U.S. Appl. No. 60/201,570, Bengston.
Agilent Technologies. “Agilent ADNK-2133 Optical Mouse Designer's Kit: Product Overview.” 2004, 6 pp.
Airclic. “Products.” http://www.airclic.com/products.asp, accessed Oct. 3, 2005, 3pp.
Arai, Toshifumi , Dietmar Aust, Scott E. Hudson. “Paperlink: A Technique for Hyperlinking From Real Paper to Electronic Content.” Proceedings of the ACM Conference on Human Factors in Computing Systems (CHI 97), Addison-Wesley, Apr. 1997, pp. 327-334.
Aust, Dietmar. “Augmenting Paper Documents with Digital Information in a Mobile Environment” MS Thesis, University of Dortmund, Department of Computer Graphics, 1996. 47pp.
Bai, Zhen-Long, and Qiang Huo “An Approach to Extracting the Target Text Line from a Document Image Captured by a Pen Scanner.” Proceedings of the Seventh International Conference on Document Analysis and Recognition (ICDAR 2003), 2003, 5 pp.
Bell, Timothy, Ian H. Witten, John G. Cleary. “Modeling for Text Compression.” ACM Computing Surveys, vol. 21, No. 4, Dec. 1989, pp. 557-591.
Bentley, Jon L. and Robert Sedgewick. “Fast Algorithms for Sorting and Searching Strings.” Proceedings of the 10th ACM-SIAM Symposium on Discrete Algorithms. New York, NY: ACM Prss, 1997, pp. 360-369.
Burle Technical Memorandum. “Fiber Optics: Theory and Applications.” http://www.burle.com/cgi-bin/byteserver.pl/pdf/100r.pdf, 19pp.
C Technologies AB. “CPEN User's Guide.” Jan. 2001, 130pp.
C Technologies AB. “User's Guide for C-Pen 10.” Aug. 2001, 128pp.
Capobianco, Robert A. “Design Considerations for: Optical Coupling of Flashlamps and Fiber Optics.” PerkinElmer, 1998-2003. http://optoelectronics.perkinelmer.com/content/whitepapers/OpticalCoupling.pdf, 12 pp.
CASIO Computer Co. Ltd, ALPS Electric Co., Ltd. “Alliance Agreement on Development and Mass Production of Fingerprint Scanner for Mobile Devices.” Press Release, Feb. 25, 2003. http://world.casio.com/pacific/news/2003/fingerprint.html, 2pp.
Cenker, Christian. “Wavelet Packets and Optimization in Pattern Recognition.” Proceedings of the 21st International Workshop of the AAPR, Hallstatt, Austria, May 1997, 11pp.
Clancy, Heather. “Cell Phones Get New Job: Portable Scanning.” C/Net News.com, http://news.com.com/2102-1039—5572897.html?tag=st.util.print, Accessed Feb. 13, 2005, 3pp.
Cybertracker. Homepage. http://www.cybertracker.co.za/, accessed Oct. 3, 2005, 2pp.
Digital Convergence. “CueCat.” http://www.cuecat.com, accessed Oct. 3, 2005, 2 pp.
Docuport “DocuPen Operating Manual.” Montreal, Quebec, 2004, 48pp.
Doermann, David, Huiping Li, Omid Kia, Kemal Kilic. “The Detection of Duplicates in Document Image Databases.” Technical Report. LAMP-TR-005/CAR-TR-850/CS-TR-3739, University of Maryland College Park, Feb. 1997, 39pp.
Doermann, David. “The Indexing and Retrieval of Document Images: A Survey.” Technical Report. LAMP-TR-0013/CAR-TR-878/CS-TR-3876. University of Maryland College Park, Feb. 1998, 39 pp.
Doermann, David, J. Sauvola, H. Kauniskangas, C. Shin, M. Pietikäinen & A. Rosenfeld. “The Development of a General Framework for Intelligent Document Image Retrieval.” Series in Machine Perception and Artificial Intelligence, vol. 29: Document Analysis Systems II. Washington, DC: World Scientific Press, 1997, 28 pp.
Duong, Jean, Myriam C{hacek over (o)}té, Hubert Emptoz, Ching Y. Suen. “Extraction of Text Areas in Printed Document Images.” Proceedings of the 2001 ACM Symposium on Document Enginering. New York, NY: ACM Press, 2001, pp. 157-164.
Erol, Berna, Jonathan J. Hull, and Dar-Shyang Lee. “Linking Multimedia Presentations with their Symbolic Source Documents: Algorithm and Applications.” ACM Multimedia. New York, NY: ACM Press, 2003, 10pp.
Fall, C.J., A Törcsvári, K. Benzineb, G. Karetka. “Automated Categorization in the International Patent Classification.” ACM SIGIR Forum. vol. 37, Issue 1, Spring 2003: 10-25.
Ficstar. Homepage. www.ficstar.com, accessed Oct. 4, 2005, 1p.
Fitzgibbon, Andrew, and Ehud Reiter. “Memories for Life: Managing Information Over a Human Lifetime.” UK Computing Research Committee's Grand Challenges in Computing Workshop, May 22, 2003. 8pp.
Ghani, Rayid, Rosie Jones, and Dunja Mladenić. “Mining the Web to Create Minority Language Corpora.” Proceedings of the 10th International Conference on Information and Knowledge Management (CIKM). Atlanta, Georgia, Nov. 5-10, 2001, pp. 279-286.
Google. “Google Search Appliance—Intranets.” http://www.google.com/appliance/pdf/ds—GSA—intranets.pdf, 2004, 2 pp.
Google. “Simplicity and Enterprise Search.”. 2003 http://www.google.com/enterprise/pdf/google—simplicity—enterprise—wp.pdf, 7pp.
Graham, Jamey, Berna Erol, Jonathan J. Hull, and Dar-Shyang Lee. “The Video Paper Multimedia Playback System.” Proceedings of the Eleventh ACM International Conference on Multimedia. New York, NY: ACM Press, 2003, pp. 94-95.
Grossman, David A, Ophir Frieder, Nazli Goharian “Token Identification” Slideshow. 2002, 15 pp.
Guimbretière, François. “Paper Augmented Digital Documents.” Proceedings of Annual ACM Sympoisum on User Interface Software and Technology. New York, NY: ACM Press, 2003, 10pp.
Hand Held Products “The HHP IMAGETEAM (IT) 4410 and 4410ESD.” Brochure, 2pp.
Hansen, Jesse. “A Matlab Project in Optical Character Recognition (OCR).” DSP Lab, University of Rhode Island. May 15, 2002, 6pp.
Heiner,Jeremy M. , Scott E. Hudson, Kenichiro Tanaka. “Linking and Messaging from Real Paper in the Paper PDA.” ACM Symposium on User Interface Software and Technology. New York, NY: ACM Press, 1999, pp. 179-186.
Hewlett-Packard Company. “HP Capshare 920 Portable E-Copier and Information Appliance User Guide, First Edition,” 1999, 42 pp.
Hjaltason, Gísli R. and Hanan Samet. “Distance Browsing in Spatial Databases.” ACM Transactions on Database Systems. vol. 24, No. 2, Jun. 1999: 265-318.
Hong, Tao and Jonathan H. Hull. “Degraded Text Recognition Using Word Collocation and Visual Inter-Word Constraints.” Fourth ACL Conference on Applied Natural Language Processing, Stuttgart, Germany, 1994, 2pp.
Hopkins, George W., and Tad D. Simons. “A Semi-Imaging Light Pipe for Collecting Weakly Scattered Light.” Hewlett Packard Company, Jun. 1998, 6 pp.
Hu, Jianying, Ramanujan Kashi, Gordon Wilfong, “Comparison and Classification of Documents Based on Layout Similarity.” Lucent Technologies Bell Labs, Murray Hill, NJ, 2000, 21pp.
Hull, Jonathan J, and Dar-Shyang Lee. “Simultaneous Highlighting of Paper and Electronic Documents.” Proceedings of the International Conference on Pattern Recognition (CPR '00), vol. 4. Barcelona, 2000, 4401-4404.
Hull, Jonathan J, Dar-Shyang Lee, John Cullen, Peter E. Hart. “Document Analysis Techniques for the Infinite Memory Multifunction Machine.” DEXA Workshop, 1999. http://www.informatik.uni-trier.de/˜ley/db/conf/dexaw/dexaw99.html, 5pp.
Inglis, Stuart and Ian H. Witten. “Compression-Based Template Matching.” University of Waikato, Hamilton, New Zealand, 1994, 10 pp.
IPValue Management, Xerox Research Centre Europe. “Technology Licensing Opportunity: Xerox Mobile Camera Document Imaging.” Slideshow, Mar. 1, 2004, 11 pp.
IRIS. “IRIS Business Card Reader II.” Brochure. 2 pp.
IRIS. “IRIS Pen Executive.” Brochure, 2 pp.
ISRI Staff. “OCR Accuracy Produced by the Current DOE Document Conversion System.” Technical Report 2002-06, Information Science Research Institute at the University of Nevada, Las Vegas. May 2002, 9pp.
Jainschigg, John and Richard “Zippy” Grigonis, “M-Commerce Alternatives,” Communications Convergence.com, http://www.cconvergence.com/shared/article/showArticle.jhtml?articleld=8701069, May 7, 2001, 14pp.
Janesick, James. “Dueling Detectors.” Spie's OE Magazine. Feb. 2002: 30-33.
Jenny, Reinhard. “Fundamentals of Fiber Optics: An Introduction for Beginners.” Technical Report for Volpi AG, Apr. 26, 2000. http://www.volpiusa.com/whitepapers/FundamentalsofFiberOptics.pdf, 23pp.
Kahan, José and Marja-Riitta Koivunen. “Annotea: An Open RDF Infrastructure for Shared Web Annotations.” Proceedings of the 10th International World Wide Web Conference, Hong Kong, 2001. http://www10.org/cdrom/papers/frame.html, pp. 623-632.
Kasabach, Chris, Chris Pacione, John Stivoric, Francine Gemperle, Dan Siewiorek. “Digital Ink: A Familiar Idea with Technological Might!” CHI 1998 Conference. New York, NY: ACM Press, 1998, pp. 175-176.
Keytronic. “F-SCAN-S001US Stand Alone Fingerprint Scanner.” http://www.keytronic.com/home/shop/Productlist.asp?CATID=62&SubCATID=1, accessed Oct. 4, 2005, 2pp.
Khoubyari, Siamak. “The Application of Word Image Matching in Text Recognition.” MS Thesis, State University of New York at Buffalo, Jun. 1992, 107pp.
Kia, Omid and David Doerman. “Integrated Segmentation and Clustering for Enhanced Compression of Document Images.” International Conference on Document Analysis and Recognition, Ulm Germany Aug. 18-20, 1997 vol. 1. 6 pp.
Kia, Omid E. “Document Image Compression and Analysis.” PhD Thesis, University of Maryland at College Park, 1997, 141pp.
Kia, Omid, David Doerman, Azriel Rosenfeld, Rama Chellappa. “Symbolic Compression and Processing of Document Images.” Technical Report: LAMP-TR-004/CFAR-TR-849/CS-TR-3734, University of Maryland, College Park, Jan. 1997, 36pp.
Kia, Omid. “Integrated Segmentation and Clustering for Enhanced Compression of Document Images.” International Conference on Document Analysis and Recognition, Ulm, Germany, Aug. 18-20, 1997, 7pp.
Kopec, Gary E. “Multilevel Character Templates for Document Image Decoding.” IS&T/SPIE 1997 International Symposium on Electronic Imaging: Science & Technology , San Jose, CA, Feb. 8-14, 1997, 10.pp.
Kopec, Gary E., Maya R. Said, Kris Popat. “N-Gram Language Models for Document Image Decoding.” Proceedings of IS&T/SPIE Electronics Imaging 2002: Document Recognition and Retrieval IX, vol. 4670-20, Jan. 2002. 12pp.
Kukich, Karen. “Techniques for Automatically Correcting Words in Text.” ACM Computing Surveys, vol. 24, No. 4, Dec. 1992: pp. 377-439.
Lee, Bongsoo, Won Y. Choi, James K. Walker. “Ultrahigh-Resolution Plastic Graded-index fused Image Plates.” Optics Letters, vol. 24, No. 10, May 15, 2000: 719-721.
Lee, D.L, and F.H. Lochovsky. “Voice Response Systems.” ACM Computing Surveys, vol. 15, Issue 4, Dec. 1983: pp. 351-374.
Lee, Dar-Shyang and Jonathan J. Hull. “Detecting Duplicates Among Symbolically Compressed Images in a Large Document Database.” Pattern Recognition Letters, No. 22, 2001: 545-550.
Lee, Dar-Shyang and Jonathan J. Hull. “Duplicate Detection for Symbolically Compressed Documents.” Fifth International Conference on Document Analysis and Recognition (ICDAR), 1999, 4pp.
Lee, Dar-Shyang. “Substitution Deciphering Based on HMMs with Applications to Compressed Document Processing.” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 24, No. 12.. Washington, DC: IEEE Computer Society, Dec. 2002, pp. 1661-1666.
Lesher, G.W., Moulton, B.J. & Higginbotham, D.J. (1999) “Effects of Ngram Order and Training Text Size on Word Prediction.” Proceedings of the RESNA '99 Annual Conference, 1999, 3pp.
Lieberman, Henry. “Out of Many, One: Reliable Results from Unreliable Recognition.” ACM Conference on Human Factors in Computing Systems (CHI 2002); Apr. 20-25, 2000; Minneapolis; MN; 2 pp.
Lightsource Picture.
Liu, Lon-Mu, Yair M. Babad, Wei Sun, and Ki-Kan Chan. “Adaptive Post-Processing of OCR Text Via Knowledge Acquisition.” Proceedings of the ACM 1991 Computer Science Conference. New York, NY: ACM Press, 1991, pp. 558-569.
Ljungstrand, Peter, Johan Redström, and Lars Erik Holmquist. “Webstickers: Using Physical Tokens to Access, Manage, and Share Bookmarks to the Web.” Proceedings of Designing Augmented Reality Environments 2000, Elsinore, Denmark, Apr. 12-14, 2000, pp. 23-31.
LTI Computer Vision Library “LTI Image Processing Library Developer's Guide. Version 29.10.2003.” Aachen, Germany, 2002, 45 pp.
Manolescu, Dragos-Anton. “Feature Extraction—A Pattern for Information Retrieval” Proceedings of the 5th Pattern Languages of Programming, Monticello, Illinois, Aug. 1998, 18pp.
McNamee, Paul, James Mayfield, Christine Piatko. “Haircut: A System for Multilingual Text Retrieval in Java.” Journal of Computing Sciences in Small Colleges. vol. 17, Issue 2, Feb. 2002: 8-22.
Mind Like Water. “Collection Creator.” www.collectioncreator.com, accessed Oct. 2, 2005, 3pp.
Muddu, Prashant. “A Study of Image Transmission Through a Fiber-Optic Conduit and its Enhancement Using Digital Image Processing Techniques.” Thesis, Florida State College of Engineering, Nov. 18, 2003, 93 pp.
Munich, Mario E, and Pietro Perona. “Visual Input for Pen-Based Computers.” Proceedings of the International Conference on Pattern Recognition (ICPR '96) vol. III. Los Alamitos, CA: IEEE CS Press. Jun. 1996, 5pp.
Murdoch, Gregary and Nicholas Kushmerick. “Mapping Physical Artifacts to their Web Counterparts: A Case Study with Products Catalogs.” MHCI-2004 Workshop on Mobile and Ubiquitous Information Access (Strathclyde, UK). 2004, 7pp.
Nabeshima, Shinji, Shinichirou Yamamoto, Kiyoshi Agusa, Toshio Taguchi. “Memo-Pen: A New Input Device.” CHI '95 Proceedings Short Papers. New York, NY: ACM Press, 1995, pp. 256-257.
Nautilus Hyosung. “New Software for Automated Teller Machines.” http://www.nautilus.hyosung.com/product—service/software—software05.html, accessed Oct. 4, 2005, 3pp.
Neomedia Technologies “Paperclick for Cellphones.” Brochure. 2004, 2pp.
Neomedia Technologies “Paperclick Linking Services.” Brochure. 2004, 1 page.
Neomedia Technologies. “For Wireless Communication Providers.” Brochure. 2004, 1 page.
Neville, Sean. “Project Atom, Amazon, Mobile Web Services, and Fireflies at REST” Artima Weblogs, http://www.artima.com/weblogs/viewpost.jsp?thread=18731, Oct. 24, 2003, 4pp.
Newman, William and Pierre Wellner. “A Desk Supporting Computer-based Interaction with Paper Documents.” Proceedings of ACM CHI'92 Conference on Human Factors in Computing Systems. New York, NY: ACM Press, 1992, pp. 587-592.
Newman, William. “Document DNA: Camera Image Processing.” 4pp.
NSG America, Inc. “SELFLOC Lens Arrays for Line Scanning Applications.” Intelligent Opto Sensor Designer'Notebook, No. 2, 5 pp.
ONClick Corporation. “VIA Mouse VIA-251.” Brochure, 2pp.
Pal, U. S. Sinha, and B.B. Chaudhuri. “Multi-Oriented Text Lines Detection and Their Skew Estimation.” Indian Conference on Computer Vision, Graphics, and Image Processing, Ahmedabad, India, Dec. 16-18, 2002, 6pp.
Peacocks MD&B. “Peacocks MD&B, Releases Latest hands and Eyes Free Voice Recognition Barcode Scanner.” http://www.peacocks.com.au/store/page.pl?id=457, Dec. 5, 2004, 2pp.
Peterson, James L. “Detecting and Correcting Spelling Errors.” Communications of the ACM, vol. 23 No. 12, Dec. 1980, pp. 676-687.
Planon Systems Solutions. “Docupen 700.” http://www.docupen.com, accesssed Oct. 3, 2005.
Podio, Fernando L. “Biometrics—Technologies for Highly Secure Personal Authentication,” National Institute of Standards and Technology, http://whitepapers.zdnet.com/search.aspx?compid=3968, May 2001, 8pp.
Precise Biometrics. “Precise 200 MC.” http://www.precisebiometrics.com/data/content/DOCUMENTS/200592691619553200%20MC. pdf. accessed Oct. 4, 2005, 2pp.
Price, Morgan N, Gene Golovchinsky, Bill N. Schilit. “Linking by Inking: Trailblazing in a Paper-like Hypertext.” Proceedings of Hypertext '98. Pittsburgh, PA: ACM Press, 1998, 10 pp.
Psion Teklogix. “WORKABOUT PRO.” http://www.psionteklogix.com/public.aspx?s=uk&p=Products&pCat=128&pID=1058, accessed Oct. 3, 2005, 2pp.
Rao, Ramana, Stuart K. Card, Walter Johnson, Leigh Klotz, and Randall H. Trigg. “Protofoil: Storing and Finding the Information Worker's Paper Documents in an Electronic File Cabinet.” Proceedings of the ACM SIGCHI Conference on Human Factors in Computing Systems. New York, NY: ACM Press, 1994, pp. 180-185, 477.
Roberts, David A. and Richard R.A. Syms. “1D and 2D Laser Line Scan Generation Using a Fibre Optic Resonant Scanner.” Department of Electronic and Electrical Engineering, Imperial College of Science Technology and Medicine, 2003, 11pp.
Rus, Daniela, and Devika Subramanian. “Multi-media RISSC Informatics: Retrieving Information with Simple Structural Components.” Proceedings of the Second International Conference on Information and Knowledge Management. New York, NY: 1993, pp. 283-294.
Samet, Hanan. “Data Structures for Quadtree Approximation and Compression.” Communications of the ACM, vol. 28, No. 9, Sep. 1985: pp. 973-993.
Sanderson, Mark and C.J. Van Rijsbergen. “The Impact on Retrieval Effectiveness of Skewed Frequency Distributions.” ACM Transactions on Information Systems, vol. 17, No. 4, Oct. 1999: pp. 440-465.
Schilit, Bill N. Gene Golovchinsky, Morgan N. Price. “Beyond Paper: Supporting Active Reading with Free Form Digital Ink Annotations.” Proceedings of CHI 98. New York, NY: ACM Press, 1998, 8pp.
Schott North America, “Clad Rod/ Image Conduit” Nov. 2004, 1 page.
Selberg, Erik, and Oren Etzioni. “On the Instability of Web Search Engines.” In the Proceedings of RIAO, Paris, Apr. 2000, 14pp.
Smithwick, Quinn Y. J., Juris Vagners, Per G. Reinhall, Eric J. Seibel. “54.3: Modeling and Control of the Resonant Fiber Scanner for Laser Scanning Display or Acquisition.” SID Symposium Digest of Technical Papers, vol. 34, Issue 1, May 2003: 1455-1457.
Sonka, Milan , Vaclav Hlavac, and Roger Boyle, Image Processing, Analysis, and Machine Vision: (Second Edition). International Thomson Publishing, 1998. Contents, Index, Preface, 37pp.
Sony. “Sony Puppy Fingerprint Identity Products.” http://bssc.sel.sony.com/Professional/puppy/, 2002, 1 page.
Spitz, A. Lawrence. “Progress in Document Reconstruction.” Document Recognition Technologies, Inc. 16th Internaional Conference on Pattern Recognition (ICPR '02), 2002, 4pp.
Spitz, A. Lawrence. “Shape-based Word Recognition.” International Journal on Document Analysis and Recognition, Oct. 20, 1998, 13 pp.
Srihari, Sargur N., Jonathan J. Hull, and Ramesh Choudhari. “Integrating Diverse Knowledge Sources in Text Recognition.” ACM Transactions in Office Information Systems. vol. 1, No. 1, Jan. 1983, pp. 68-87.
Stevens, Jacob, Andrew Gee, and Chris Dance. “Automatic Processing of Document Annotations.” Xerox Research Centre Europe. http://www.bmva.ac.uk/bmvc/1998/pdf/p062.pdf, 1998, 11 pp.
Su, Guo-Dung J., Shi-Sheng Lee, and Ming C. Wu. “Optical Scanners Realized by Surface-Micromachined Vertical Torsion Mirror” IEEE Photonics Technology Letters, vol. 11, No. 5, May 1999, 3pp.
Syscan Imaging. “Travelscan 464.” http://www.syscaninc.com/prod—ts—464.html, accessed Oct. 3, 2005, 2pp.
Taghva, Kazem, Julie Borsack, and Allen Condit. “Results of Applying Probabilistic IR to OCR Text.” Proceedings of the 17th Annual International ACM-SIGIR Conference on Research and Development in Information Retrieval. New York, NY: Springer-Verlag New York, 1994, pp. 202-211.
Tan, Chew Lim, Sam Yuan Sung, Zhauhui Yum and Yi Xu. “Text Retrieval from Document Images Based on N-Gram Algorithm.” PRICAI Workshop on Text and Web Mining, 2000. 2 pp.
Trusted Reviews. “Digital Pen Roundup.” http://www.trustedreviews.com/article.aspx?art=183, Jan. 24, 2004. 5pp.
TYI Systems Ltd. “Bellus iPen.” http://www.bellus.com.tw/pen—scanner.htm, accessed Oct. 3, 2005, 3pp.
U.S. Precision Lens, Inc. The Handbook of Plastic Optics a User's Guide with Emphasis on Injection Molded Optics. Cincinnati, Ohio: U.S. Precision Lens, Inc., 1983, 145pp.
Van Eijkelenborg, Martijn A. “Imaging with Microstructured Polymer Fibre.” Optics Express, vol. 12, No. 2, Jan. 26, 2004, pp. 342-346.
Vervoort, Marco. “Emile 4.1.6 User Guide” University of Amsterdam, Jun. 12, 2003, 83 pp.
Vocollect. “Vocollect Voice for Handhelds.” http://www.vocollect.com/offerings/voice—handhelds.php, accessed Oct. 3, 2005, 2pp.
Vossler, Charles M. and Neil M. Branston. “The Use of Context for Correcting Garbled English Text.” Cornell Aeronautical Laboratory, Inc.. Prodceedings of the 1964 19th ACM National Conference. NY, NY: ACM Press, 13 pp.
Wang, Jin, and Jack Jean. “Segmentation of Merged Characters by Neural Network and Shortest-Path.” Proceedings of the 1993 ACM/SIGAPP Symposium on Applied Computing: States of the Art and Practice. New York, NY: ACM Press, 1993, pp. 762-769.
Wang, Wei-Chih, Mark Fauver, Jou Nhut Ho, Eric J. Siebel, Per G. Reinhall. “Micromachined Optical Waveguide Cantilever as a Resonant Optical Scanner.” Sensors and Actuators A (Physical), 102(1-2), 2002, pp. 165-175.
Wang, Yalin, Ihsin T. Phillips, and Robert M. Haralick. “A Study on the Document Zone Content Classification Problem.” Proceedings of the 5th International Workshop on Document Analysis Systems. London: Springer-Verlag, 2002, 12pp.
WizCom Technologies Ltd. “QuickLink-Pen Elite.” http://www.wizcomtech.com/Wizcom/products/product—info.asp?fid=101, Accessed Oct. 3, 2005, 2pp.
WizCom Technologies. “SuperPen Professional Product Page.” http://www.wizcomtech.com/Wizcom/products/product—info.asp?fid=88&cp=1, accessed Oct. 3, 2005, 2pp.
Xerox “Patented Technology Could Turn Camera Phone Into Portable Scanner.” Press release Nov. 15, 2004. http://www.xerox.com/go/xrx/template/inv—rel—newsroom.jsp?Xcntry=USA&Xlang=en—US&app=Newsroom&ed—name=NR—2004Nov15—MobileDocument—Imaging—Software&format=article&view=newsrelease&metrics=notrack, 2pp.
Press Release, “Abera Introduces Truly Portable & Wireless Color Scanners: Capture Images Anywhere in the World without Connection to PC,” PR Newswire, Oct. 9, 2000, New York, http://proquest.umi.com/pqdweb?did=62278377&sid=5&Fmt=7&clientid=19649&RQT=309&VName=PQD, 3 pages.
“Automatic Computer Translation,” www.lingolex.com/translationsoftware.htm, downloaded on Aug. 6, 2000.
Babylon—Online Dictionary and Translation Software, “Text Translations in 75 languages, all in a single click,” 1997, 1 page.
Black et al., “The Festival Speech Synthesis System,” Festival Speech Synthesis System—Table of Contents, http://www.cstr.ed.ac.uk/projects/festival manual/, Jun. 17, 1999, pp. 1-4 [internet accessed on Jan. 10, 2008].
eBooks, eBooks Quickstart Guide, nl-487, 2001, 2 pages.
Gildea and Miller, “How Children Learn Words,” Scientific American, Sep. 1987, vol. 257, No. 3, pp. 94-99.
Globalink, Inc. “Globalink, Inc. announces Talk to Me, an interactive language learning software program,” Talk to me Software, Business Wire, Jan. 21, 1997, Fairfax, VA, 4 pages [internet accessed on Jan. 4, 2008].
Henseler, Dr. Hans, “Functional and Document Level Security in ZyIMAGE,” Zylab, the Paper Filing Company, ZyIMAGE Security, Whitepaper, Apr. 9, 2004, 27 pgs, ZyLAB Technologies, B.V.
Jacobson et al., “The Last Book”, IBM Systems Journal, vol. 36, No. 3, 1997, pp. 457-463.
Macholl, R., “Translation Pen Lacks Practicality,” BYTE.com, Jan. 1998, 2 pages.
Nagy et al. “A Prototype Document Image Analysis System for Technical Journals,” Computer, vol. 25, issue 7, Jul. 1992, pp. 10-22.
O'Gorman, “Image and Document Processing Techniques for the Right Pages Electronic Library System,” 11th International Conference on Pattern Recognition, Aug. 30-Sep. 3, 1992, The Hague, The Netherlands, pp. 260-263, IEEE Computer Society Press, Los Alamitos, CA.
Pellissippi Library, NetLibrary, Skills Guide #4, Sep. 21, 2001, 9 pages.
Schuuring, D., “Best practices in e-discovery and e-disclosure,” ZyLAB Information Access Solutions, White Paper, Feb. 17, 2006, 72 pgs, ZyLAB Distributing, B.V.
Sheridon et al., “The Gyricon—A Twisting Ball Display,” Proceedings of the Society for Information Display, Third and Fourth Quarter, May 1977, pp. 289-293, Boston, MA.
Stifelman, Lisa J., “Augmenting Real-World Objects: A Paper-Based Audio Notebook,” Proceedings of CHI '96, 1996, pp. 199-200.
Story et al. “The Right Pages Image-Based Electronic Library for Alerting and Browsing,” Computer, vol. 25, No. 9, Sep. 1992, pp. 17-26.
The Festival Speech Synthesis System, www.cstr.ed.ac.uk/projects/festival downloaded on Jul. 25, 2000, 2 pages [internet accessed Jan. 4, 2008].
Toshifumi et al., “PaperLink: A Technique for Hyperlinking from Real Paper to Electronic Content,” Proceedings of CHI 1997, pp. 1-13, CHI 97 Electronic Publications: Papers.
Whittaker et al., “Filochat: Handwritten Notes Provide Access to Recorded Conversations,” Human Factors in Computing Systems, CHI '94 Conference Proceedings, Apr. 24-28, 1994, pp. 271-277, Boston Massachusetts.
Whittaker et al., “Using Cognitive Artifacts in the Design of Mulimodal Interfaces,” AT&T Labs-Research, May 24, 2004, 63 pages.
Wilcox et al., “Dynomite: A Dynamically Organized Ink and Audio Notebook,” Conference on Human Factors in Computing Systems, Jun. 3, 1998, 9 pages.
U.S. Precision Lens, “The Handbook of Plastic Optics”, 1983, 2nd Edition.
European Search Report for EP Application No. 05731509 dated Apr. 23, 2009.
European Search Report for EP Application No. 05732913 dated Mar. 31, 2009.
European Search Report for EP Application No. 05733191 dated Apr. 23, 2009.
European Search Report for EP Application No. 05733819 dated Mar. 31, 2009.
European Search Report for EP Application No. 05733851 dated Sep. 2, 2009.
European Search Report for EP Application No. 05733915 dated Dec. 30, 2009.
European Search Report for EP Application No. 05734996 dated Mar. 23, 2009.
European Search Report for EP Application No. 05735008 dated Feb. 28, 2011.
European Search Report for EP Application No. 05737714 dated Mar. 31, 2009.
European Search Report for EP Application No. 5734796 dated Apr. 22, 2009.
European Search Report for EP Application No. 05734947 dated Mar. 20, 2009.
European Search Report for EP Application No. 05742065 dated Mar. 23, 2009.
European Search Report for EP Application No. 05745611 dated Mar. 23, 2009.
European Search Report for EP Application No. 05746428 dated Mar. 24, 2009.
European Search Report for EP Application No. 05746830 dated Mar. 23, 2009.
European Search Report for EP Application No. 05753019 dated Mar. 31, 2009.
European Search Report for EP Application No. 05789280 dated Mar. 23, 2009.
European Search Report for EP Application No. 05812073 dated Mar. 23, 2009.
European Search Report for EP Application No. 07813283 dated Dec. 10, 2010.
K. Fehrenbacher, “Quick Frucall Could Save You Pennies (Or $$$s),” http://gigaom.com/?p=6728&akst—action=share-this, (Jul. 10, 2006).
Computer Hope, “Creating a link without an underline in HTML:,” as evidenced by Internet Archive Wayback Machine: http://web.archive.org/web/20010329222623/http://www.computerhope.com/iss- ues/ch000074.htm, Mar. 29, 2001.
International Search Report for PCT/EP2007/005038 dated Sep. 17, 2007.
International Search Report for PCT/EP2007/007824 dated May 25, 2009.
International Search Report for PCT/EP2007/008075 dated Oct. 10, 2008.
International Search Report for PCT/US2005/011012 dated Sep. 29, 2006.
International Search Report for PCT/US2005/011013 dated Oct. 19, 2007.
International Search Report for PCT/US2005/011014 dated May 16, 2007.
International Search Report for PCT/US2005/011015 dated Dec. 1, 2006.
International Search Report for PCT/US2005/011016 dated May 29, 2007.
International Search Report for PCT/US2005/011026 dated Jun. 11, 2007.
International Search Report for PCT/US2005/011042 dated Sep. 10, 2007.
International Search Report for PCT/US2005/011043 dated Sep. 20, 2007.
International Search Report for PCT/US2005/011084 dated Aug. 8, 2008.
International Search Report for PCT/US2005/011085 dated Sep. 14, 2006.
International Search Report for PCT/US2005/011088 dated Aug. 29, 2008.
International Search Report for PCT/US2005/011090 dated Sep. 27, 2006.
International Search Report for PCT/US2005/011533 dated Jun. 4, 2007.
International Search Report for PCT/US2005/011534 dated Nov. 9, 2006.
International Search Report for PCT/US2005/012510 dated Jan. 6, 2011.
International Search Report for PCT/US2005/013297 dated Aug. 14, 2007.
International Search Report for PCT/US2005/013586 dated Aug. 7, 2009.
International Search Report for PCT/US2005/017333 dated Jun. 4, 2007.
International Search Report for PCT/US2005/025732 dated Dec. 5, 2005.
International Search Report for PCT/US2005/029536 dated Apr. 19, 2007.
International Search Report for PCT/US2005/029537 dated Sep. 28, 2007.
International Search Report for PCT/US2005/029539 dated Sep. 29, 2008.
International Search Report for PCT/US2005/029680 dated Jul. 13, 2010.
International Search Report for PCT/US2005/030007 dated Mar. 11, 2008.
International Search Report for PCT/US2005/029534 dated May 15, 2007.
International Search Report for PCT/US2005/034319 dated Apr. 17, 2006.
International Search Report for PCT/US2005/034734 dated Apr. 4, 2006.
International Search Report for PCT/US2006/007108 dated Oct. 30, 2007.
International Search Report for PCT/US2006/018198 dated Sep. 25, 2007.
International Search Report for PCT/US2007/074214 dated Sep. 9, 2008.
International Search Report for PCT/US2010/000497 dated Sep. 27, 2010.
International Search Report for PCT/US2010/000498 dated Aug. 2, 2010.
International Search Report for PCT/US2010/000499 dated Aug. 31, 2010.
International Search Report for PCT/US2010/027254 dated Oct. 22, 2010.
International Search Report for PCT/US2010/027255 dated Nov. 16, 2010.
International Search Report for PCT/US2010/027256 dated Nov. 15, 2010.
Newman, et al., “Camworks: A Video-based Tool for Efficient Capture from Paper Source Documents”, Proceedings of the 1999 IEEE International Conference on Multimedia Computing and Systems, vol. 2, pp. 647-653 (1999).
International Search Report for PCT/US2010/028066 dated Oct. 26, 2010.
Ghaly et al., “SAMS Teach Yourself EJB in 21 Days”, Sams Publishing, 2002-2003 (pp. 1-2, 123 and 135).
Sarre et al, “HyperTex—a system for the automatic generation of Hypertext Textbooks from Linear Texts,” Database and Expert Systems Applications, Proceedings of the International Conference, Abstract. (1990).
Solutions Software Corp., “Environmental Code of Federal Regulations (CFRs) including TSCA and SARA,” Solutions Software Corp., Enterprise, FL, Abstract. (Apr. 1994).
Non-Final Office Action for U.S. Appl. No. 11/004,637 dated Dec. 21, 2007.
Final Office Action for U.S. Appl. No. 11/004,637 dated Oct. 2, 2008.
Non-Final Office Action for U.S. Appl. No. 11/004,637 dated Apr. 2, 2009.
Notice of Allowance for U.S. Appl. No. 11/004,637 dated Dec. 11, 2009.
Non-Final Office Action for U.S. Appl. No. 11/096,704 dated Sep. 10, 2008.
Notice of Allowance for U.S. Appl. No. 11/096,704 dated Mar. 11, 2009.
Notice of Allowance for U.S. Appl. No. 11/096,704 dated Jun. 5, 2009.
Non-Final Office Action for U.S. Appl. No. 11/097,089 dated Aug. 13, 2008.
Non-Final Office Action for U.S. Appl. No. 11/097,089 dated Dec. 23, 2009.
Final Office Action for U.S. Appl. No. 11/097,089 dated Mar. 17, 2009.
Final Office Action for U.S. Appl. No. 11/097,089 dated Sep. 23, 2010.
Non-Final Office Action for U.S. Appl. No. 11/097,103 dated Jun. 25, 2007.
Non-Final Office Action for U.S. Appl. No. 11/097,103 dated Jan. 28, 2008.
Non-Final Office Action for U.S. Appl. No. 11/097,103 dated Dec. 31, 2008.
Non-Final Office Action for U.S. Appl. No. 11/097,103 dated Jul. 10, 2007.
Notice of Allowance for U.S. Appl. No. 11/097,103 dated May 14, 2009.
Final Office Action for U.S. Appl. No. 11/097,828 dated Feb. 4, 2009.
Notice of Allowance for U.S. Appl. No. 11/097,828 dated Feb. 5, 2010.
Non-Final Office Action for U.S. Appl. No. 11/097,833 dated Jun. 25, 2008.
Final Office Action for U.S. Appl. No. 11/097,833 dated Jul. 7, 2009.
Notice of Allowance for U.S. Appl. No. 11/097,833 dated Jan. 10, 2011.
Non-Final Office Action for U.S. Appl. No. 11/097,835 dated Oct. 9, 2007.
Non-Final Office Action for U.S. Appl. No. 11/097,835 dated Feb. 19, 2009.
Final Office Action for U.S. Appl. No. 11/097,835 dated Dec. 29, 2009.
Notice of Allowance for U.S. Appl. No. 11/097,835 dated Sep. 1, 2010.
Final Office Action for U.S. Appl. No. 11/097,836 dated Jan. 6, 2009.
Non-Final Office Action for U.S. Appl. No. 11/097,836 dated Jul. 30, 2009.
Final Office Action for U.S. Appl. No. 11/097,836 dated May 13, 2010.
Non-Final Office Action for U.S. Appl. No. 11/097,961 dated Sep. 15, 2008.
Final Office Action for U.S. Appl. No. 11/097,961 dated Mar. 5, 2009.
Final Office Action for U.S. Appl. No. 11/097,961 dated Dec. 9, 2009.
Non-Final Office Action for U.S. Appl. No. 11/097,961 dated Jul. 9, 2010.
Non-Final Office Action for U.S. Appl. No. 11/097,981 dated Jan. 16, 2009.
Notice of Allowance for U.S. Appl. No. 11/097,981 dated Jul. 31, 2009.
Final Office Action for U.S. Appl. No. 11/098,014 dated Jan. 23, 2009.
Non-Final Office Action for U.S. Appl. No. 11/098,014 dated Jun. 30, 2009.
Non-Final Office Action for U.S. Appl. No. 11/098,014 dated Nov. 3, 2010.
Final Office Action for U.S. Appl. No. 11/098,014 dated Mar. 26, 2010.
Notice of Allowance for U.S. Appl. No. 11/098,014 dated Mar. 16, 2011.
Non-Final Office Action for U.S. Appl. No. 11/098,016 dated Apr. 24, 2007.
Notice of Allowance for U.S. Appl. No. 11/098,016 dated Apr. 22, 2008.
Notice of Allowance for U.S. Appl. No. 11/098,038 dated Mar. 11, 2009.
Non-Final Office Action for U.S. Appl. No. 11/098,038 dated Aug. 28, 2006.
Final Office Action for U.S. Appl. No. 11/098,038 dated Jun. 7, 2007.
Notice of Allowance for U.S. Appl. No. 11/098,038 dated May 29, 2009.
Non-Final Office Action for U.S. Appl. No. 11/098,042 dated Dec. 5, 2008.
Notice of Allowance for U.S. Appl. No. 11/098,042 dated Apr. 13, 2009.
Non-Final Office Action for U.S. Appl. No. 11/098,043 dated Jul. 23, 2007.
Non-Final Office Action for U.S. Appl. No. 11/098,043 dated Dec. 23, 2008.
Final Office Action for U.S. Appl. No. 11/098,043 dated Jul. 21, 2009.
Non-Final Office Action for U.S. Appl. No. 11/110,353 dated Jul. 27, 2007.
Final Office Action for U.S. Appl. No. 11/110,353 dated Jan. 6, 2009.
Non-Final Office Action for U.S. Appl. No. 11/110,353 dated Sep. 15, 2009.
Notice of Allowance for U.S. Appl. No. 11/110,353 dated Dec. 2, 2009.
Non-Final Office Action for U.S. Appl. No. 11/131,945 dated Jan. 8, 2009.
Notice of Allowance for U.S. Appl. No. 11/131,945 dated Oct. 30, 2009.
Non-Final Office Action for U.S. Appl. No. 11/185,908 dated Dec. 14, 2009.
Final Office Action for U.S. Appl. No. 11/185,908 dated Jun. 28, 2010.
Non-Final Office Action for U.S. Appl. No. 11/208,408 dated Oct. 7, 2008.
Final Office Action for U.S. Appl. No. 11/208,408 dated May 11, 2009.
Non-Final Office Action for U.S. Appl. No. 11/208,408 dated Apr. 23, 2010.
Non-Final Office Action for U.S. Appl. No. 11/208,457 dated Oct. 9, 2007.
Non-Final Office Action for U.S. Appl. No. 11/208,458 dated Mar. 21, 2007.
Notice of Allowance for U.S. Appl. No. 11/208,458 dated Jun. 2, 2008.
Non-Final Office Action for U.S. Appl. No. 11/208,461 dated Sep. 29, 2009.
Non-Final Office Action for U.S. Appl. No. 11/208,461 dated Nov. 3, 2010.
Notice of Allowance for U.S. Appl. No. 11/208,461 dated Mar. 15, 2011.
Non-Final Office Action for U.S. Appl. No. 11/209,333 dated Apr. 29, 2010.
Notice of Allowance for U.S. Appl. No. 11/210,260 dated Jan. 13, 2010.
Non-Final Office Action for U.S. Appl. No. 11/236,330 dated Dec. 2, 2009.
Notice of Allowance for U.S. Appl. No. 11/236,330 dated Jun. 22, 2010.
Non-Final Office Action for U.S. Appl. No. 11/236,440 dated Jan. 22, 2009.
Final Office Action for U.S. Appl. No. 11/236,440 dated Jul. 22, 2009.
Non-Final Office Action for U.S. Appl. No. 11/365,983 dated Jan. 26, 2010.
Final Office Action for U.S. Appl. No. 11/365,983 dated Sep. 14, 2010.
Non-Final Office Action for U.S. Appl. No. 11/547,835 dated Dec. 29, 2010.
Non-Final Office Action for U.S. Appl. No. 11/672,014 dated May 6, 2010.
Notice of Allowance for U.S. Appl. No. 11/672,014 dated Feb. 28, 2011.
Non-Final Office Action for U.S. Appl. No. 11/758,866 dated Jun. 14, 2010.
Non-Final Office Action for U.S. Appl. No. 11/972,562 dated Apr. 21, 2010.
Non-Final Office Action for U.S. Appl. No. 12/538,731 dated Jun. 28, 2010.
Notice of Allowance for U.S. Appl. No. 12/538,731 dated Oct. 8, 2010.
Non-Final Office Action for U.S. Appl. No. 12/541,891 dated Dec. 9, 2010.
Non-Final Office Action for U.S. Appl. No. 12/542,816 dated Jun. 18, 2010.
Notice of Allowance for U.S. Appl. No. 12/542,816 dated Jan. 3, 2011.
Non-Final Office Action for U.S. Appl. No. 12/721,456 dated Mar. 1, 2011.
D. P. Curtin, “Image Sensors—Capturing the Photograph”, 2006, available at http://www.shortcourses.com/how/sensors/sensors.htm (last visited on Sep. 4, 2006).
King, U.S. Appl. No. 11/432,731, filed May 11, 2006.
King, U.S. Appl. No. 11/933,204, filed Oct. 21, 2007.
King, U.S. Appl. No. 11/952,885, filed Dec. 7, 2007.
King, U.S. Appl. No. 12/517,352, filed Jun. 2, 2009.
King, U.S. Appl. No. 12/517,541, filed Jun. 3, 2009.
King, U.S. Appl. No. 12/723,614, filed Mar. 12, 2010.
King, U.S. Appl. No. 12/728,144, filed Mar. 19, 2010.
King, U.S. Appl. No. 12/831,213, filed Jul. 6, 2010.
King, U.S. Appl. No. 12/884,139, filed Sep. 6, 2010.
King, U.S. Appl. No. 12/887,473, filed Sep. 21, 2010.
King, U.S. Appl. No. 12/889,321, filed Sep. 23, 2010.
King, U.S. Appl. No. 12/892,840, filed Sep. 28, 2010.
King, U.S. Appl. No. 12/894,059, filed Sep. 29, 2010.
King, U.S. Appl. No. 12/899,462, filed Oct. 6, 2010.
King, U.S. Appl. No. 12/902,081, filed Oct. 11, 2010.
King, U.S. Appl. No. 12/904,064, filed Oct. 13, 2010.
King, U.S. Appl. No. 12/961,407, filed Dec. 6, 2010.
King, U.S. Appl. No. 12/964,662, filed Dec. 9, 2010.
King, U.S. Appl. No. 13/031,316, filed Feb. 21, 2011.
Casey et al., “An Autonomous Reading Machine,” IEEE Transactions on Computers, vol. C-17, No. 5, pp. 492-503 May 1968.
Non-Final Office Action for U.S. Appl. No. 12/887,473 dated Feb. 4, 2011.
Non-Final Office Action for U.S. Appl. No. 12/889,321 dated Mar. 31, 2011.
Non-Final Office Action for U.S. Appl. No. 11/097,089 dated Apr. 7, 2011.
Non-Final Office Action for U.S. Appl. No. 12/904,064 dated Mar. 30, 2011.
Non-Final Office Action for U.S. Appl. No. 11/097,093 dated Jul. 10, 2007.
Non-Final Office Action for U.S. Appl. No. 11/097,961 dated Mar. 5, 2009.
Notice of Allowance for U.S. Appl. No. 12/538,731 dated Oct. 18, 2010.
Brickman et al., “Word Autocorrelation Redundancy Match (WARM) Technology,” IBM J. Res. Develop., Nov. 1982, 26(6):681-686.
Liddy, Elizabeth, “How a Search Engine Works,” InfoToday.com, vol. 9, No. 5, May 2001, pp. 1-7.
Brin et al., “The Anatomy of a Large-Scale Hypertextual Web Search Engine,” Computer Networks and ISDN Systems, Vo. 30, Issue 1-7, Apr. 1, 1998, pp. 1-22.
King et al., U.S. Appl. No. 13/614,770, filed Sep. 13, 2012, 102 pages.
King et al., U.S. Appl. No. 13/614,473, filed Sep. 13, 2012, 120 pages.
King et al., U.S. Appl. No. 13/615,517, filed Sep. 13, 2012, 114 pages.
King et al., U.S. Appl. No. 13/186,908, filed Jul. 20, 2011, all pages.
King et al., U.S. Appl. No. 13/253,632, filed Oct. 5, 2011, all pages.
Bahl, et al., “Font Independent Character Recognition by Cryptanalysis,” IBM Technical Disclosure Bulletin, vol. 24, No. 3, pp. 1588-1589 (Aug. 1, 1981).
Ramesh, R.S. et al., “An Automated Approach to Solve Simple Substitution Ciphers,” Cryptologia, vol. 17. No. 2, pp. 202-218 (1993).
Nagy et al., “Decoding Substitution Ciphers by Means of Word Matching with Application to OCR,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 30, No. 5, pp. 710-715 (Sep. 1, 1987).
Wood et al., “Implementing a faster string search algorithm in Ada,” CM Sigada Ada Letters, vol. 8, No. 3, pp. 87-97 (Apr. 1, 1988).
Garain et al., “Compression of Scan-Digitized Indian Language Printed Text: A Soft Pattern Matching Technique,” Proceedings of the 2003 ACM Symposium on Document Engineering, pp. 185-192 (Jan. 1, 2003).
Related Publications (1)
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20060036462 A1 Feb 2006 US
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Continuation in Parts (1)
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Parent 11004637 Dec 2004 US
Child 11097833 US