The present invention relates to search engines and, more particularly, to methods and systems for searching using acoustical context based on audio streams from one or more devices.
Many devices can sample their environment for different information. In some cases, devices may locally process audio or multimedia information from their environment. For example, “smart” cell phones (e.g., Apple iPhone®, Android™-operating system-based phones) have significant local processing capabilities as well as audio and video acquisition devices.
The present invention is embodied in systems, controllers and methods for contextual-based searching. A system includes one or more devices configured to collect at least one audio stream and a contextual search system. The contextual search system includes a data analyzer and a search engine. The data analyzer is configured to receive the at least one audio stream from among the one or more devices and to determine contextual information from the received at least one audio stream. The search engine is configured to perform a search of at least one search term using the contextual information, to produce a search result.
According to an aspect of the present invention, one or more devices can provide signals to a contextual search system including a classifier and a search engine. The classifier (such as a speech recognizer) may provide contextual information which may be useful for performance of a search by the search engine. The signals may include audio information as well as other information (for example, location, time of day, environmental conditions, etc.). The audio information and other information may provide disambiguating information (i.e., contextual information) for search terms. For example, “turkey” may relate to a bird, a country, a personal assessment, a sandwich, etc. The contextual information about the intent of the search initiator, location, physical environment and/or other events may be used by the search engine, for example, to expand or narrow a search.
According to another aspect of the present invention, a device may collect speech signals, environmental sounds, location specific audio, and other geographical location data, and may pass some or all of this data to a contextual search system for action or analysis (such as for a “voice search”).
The invention may be understood from the following detailed description when read in connection with the accompanying drawing. It is emphasized that, according to common practice, various features/elements of the drawing may not be drawn to scale. On the contrary, the dimensions of the various features/elements may be arbitrarily expanded or reduced for clarity. Moreover, in the drawing, common numerical references are used to represent like features/elements. Included in the drawing are the following figures:
Many devices may sample their environment for information. For example, cell phones may report their position, acceleration, audio environment, illumination level, status, may display contents and may provide other information. Additional sensors, in conjunction with a cell phone or other device, may provide access to audio or other biological, biometric, physiological, environmental signals created by a user, audio about the environment of the user, electrical signals from phones, radios, or other devices to which they are tuned, and alerts or notification of audio events which may be categorized from these signals. Each of these devices, in turn, may have access to large amounts of local and remote data storage, to one or more communications protocols, and to processes which may record, forward, analyze and/or inform the local user's cell phone and/or other devices about current situations or emerging conditions.
Aspects of the present invention relate to systems and methods for using acoustical context to perform a search. Data may be acquired from one or more devices which may acquire audio signals (also referred to herein as audio streams), as well as information from other sensors (such as a geographical location). The data may include the audio signals and/or acoustic information related to the audio signals. For example, the acoustic information may include features extracted from the corresponding audio signal (for example, by a statistical model such as a hidden Markov model (HMM)), key words detected in the audio signal and/or a transcript of the audio signal. According to an exemplary embodiment, one or more devices may be configured to capture a near field signal associated with the device and a far field signal associated with an ambient environment in proximity to the device, such that the acquired data may include the near field and far field signals. The acquired data from the one or more devices may be analyzed in association with a search term, to determine contextual information associated with the search term. A search may be performed for the search term modified by the contextual information.
According to another aspect of the present invention, a device may collect and analyze information not only from its own immediate environment, but also from a pre-organized or ad-hoc network of devices, which have been linked together to form a distributed collecting pool of an information source. Audio (as well as other information) collected over the network may be selectively captured (for example, with beamforming or other transducer signal processing techniques) and analyzed (for example, for key words and/or events). The key words and/or events from across the network may be combined to create context for a search. For example, transducers from selected devices across the network may be used as a beamforming array. The devices may be selected autonomously or by the network.
According to another aspect of the present invention, data from one or more devices, combined with any search events, which have been processed either autonomously or responsive to an action (e.g., an indication received from a user via a keypad, a pen, a mouse, touch pad), can be recorded in an appropriate form for later analysis. The recording may be performed local to or remote from the device, and may be in any suitable form for analysis. For example, the recording may be in the form of an audio stream, a transcription, one or more key words, extracted features from the audio stream, sensed parameters or classification results, telephone call metadata or radio information, text from search events, or any combination thereof.
The recorded data may, optionally, be time marked and geographically coded, with other metadata (for example, environmental information such as temperature) and may be indexed or simply provided as a data resource at a later time. The identity of speakers (i.e. users' identities) associated with one or more devices may be determined by the network, as noted below, or may be assigned by the user at the time of initiation or review of the recorded information. The speaker identity may also be included in determining the context of a search.
According to an exemplary embodiment, a user of a device may hear a sound (such an a non-speech sound, a conversation, a particular speaker) and may indicate to the device to highlight the portion of the audio and/or a transcription of the audio. For example, if the device includes an earpiece, the user may provide voice activation for the highlighting, such as via a microphone in the earpiece. In this manner, the transcription of the audio may be visually highlighted and presented to the user, for their later review.
According to another aspect of the present invention, results of a context-sensitive search process may be provided not only to the local user but to some or all of devices on the network which initiates the search, or, in a hierarchically organized situation (e.g., a fire department, a police action) to a supervising or other supporting organization (for example, for crowd sourcing).
According to another aspect of the present invention, a system may provide a log of local events modulated by any legal restrictions associated with a geographic location (for example, a city or state), as well as any status of permissions collected from participants in events collected by the system. Thus, the logged information may comply with any legal restrictions regarding recording people without consent or other constraints as imposed by the laws of the locality. For example, in some circumstances it may be legal to record audio from a telephone discussion, but it may not be legal to capture a transcript of the discussion, or possibly just the topic of the discussion.
Aspects of the present invention include the use of information from devices and networks which sample or monitor the environment of one or more users. The information may be used to create a more effective search, to provide information delivery to the one or more users of these devices about their history and information relevant to the history but not contained in that history. The information may also be used to provide advertising or other opportunities either contemporaneously to historical events or at a later time.
Referring to
In
Device 102 may include any suitable device capable of capturing acoustic information. In an exemplary embodiment, device 102 may include a cell phone. According to another exemplary embodiment, device 102 may include an earpiece and an external device, described further with respect to
For certain applications, device 102 may be fixed and installed at home, or be part of a fixed telephone, a desktop computer, a television set or a game console. Device 102 may include one or more sensors with associated software, described further below with respect to
Device 102 may capture a cumulative acoustic signal 122 representing an audio scene in proximity to device 102. Cumulative acoustic signal 122 may include, for example, speech of user 116 (even when not carrying out a phone call), other sounds made by user 116 (such as coughing), the speech of other talkers 118 in proximity to device 102 and surrounding sounds 120 in proximity to device 102 (such as sirens, airplanes, gunshots, and other environmental sounds). The cumulative acoustic signal 122 may be recorded by device 102 to form at least one audio stream (depending upon the number of transducers of device 102 capable of capturing acoustic information).
Device 102 and/or server 104 may perform contextual-based searching via respective contextual search systems 112, 114 using the audio stream(s). According to an exemplary embodiment, device contextual search system 112 may perform an initial contextual-based search using the audio stream(s). The initial search results from device 102 (and, optionally, the audio stream(s)) may be provided to server 104. Server 104 may perform a further contextual-based search using remote contextual search system 114. In this example, by distributing the search process between device 102 and server 104, a more directed search result may be achieved, with a reduced computational load on device 102 and server 104.
For example, contextual search system 112 (or system 114) may not wait until the end of an event to begin a search. As another example, device contextual search system 112 may perform a number of initial searches throughout the day. At the end of the day, all of the initial search results may be provided to remote contextual search system 114. Remote contextual search system 114 may then use one or more of the initial search results to conduct a search.
According to an exemplary embodiment, device 102 may be used to initiate searches and to provide search results to inform user 116. Audio streams and other information from device 102, along with any analysis results of the audio streams from device 102, may be passed to device contextual search system 112 and/or remote contextual search system 114 to provide context for the search.
Remote contextual search system 114 may include data analyzer 124, classifier 126 and search engine 128. Device contextual search system 112 may include components similar to those of remote contextual search system 114 (such as data analyzer 320, classifier 322 and search engine 324, as shown in
Data analyzer 124 may be configured to analyze information from device 102. The information may include data previously classified by device contextual search system 112, audio streams provided by device 102, information from other types of sensors included in device 102 (described further below with respect to
Data analyzer 124, via classifier 126, may classify the audio stream (as well as other information) to form classified information. The classified information may include, for example, a particular audio stream, key words in the audio stream, speech events, non-speech events and/or topics assigned to sections of the audio stream. Data analyzer 124 may also use classifier 126 to classify other non-audio information (i.e., from other types of sensors such as from biometric sensors, environmental sensors, image sensors) into other classified information. Although a single classifier 126 is shown in
Data analyzer 124 may use classifier 126 to build profiles of audio information (and other classified information from other types of sensors). Classifier 126 may be capable of classifying non-speech sounds and detecting acoustic (non-speech) events, for example, a siren or a gunshot. Classifier 126 may include a speech recognizer to recognize speech, perform key word spotting on speech information, and build voice models of various speakers (such as user 116 and/or talkers 118) within auditory range of device 102, for speaker identification. Data analyzer 124 may use classifier 126, as well as machine learning methods, for example, to identify gender, probable age range, nationality, emotion and other demographic features from the audio stream. Classifier 126 may use collections of words to probabilistically assign a topic to a current discussion.
Data analyzer 124 may determine acoustical contextual information (as well as other contextual information) from among the classified information, for example, in view of at least one search term. The contextual information (acoustic as well as other information) may be provided along with the at least one search term to search engine 128. Search engine 128 may perform a search of the search term using the contextual information, to focus the search according to the intent (context) of user 116. Search engine 128 may perform the search using one or more search providers. Search results obtained from search engine 128 may be provided to device 102. Device 102 may, for example, present the search results on a visual display, aurally or via a haptic interface (such as a vibratory interface).
For example, when a text search is initiated on device 102 (such as a cell phone), words recognized from device 102 (via classifier 126) during a predetermined time leading up to the search request may be appended to the search request via data analyzer 124 as contextual information. In addition, the words may be analyzed via data analyzer 124 to determine whether they are representative of a topic, a location, or other larger classification, and the classification may be passed to search engine 128 for assistance in targeting the search.
A non-exclusive list of context available from device 102 may include, for example, audio recorded in a previous time period; previous words from a recently collected audio stream (for example, from speech recognition or word spotting); a speaker identity for each segment of previously collected audio or text; a topic of a previous discussion, external talk, voice or text; and classified sounds in a previously collected audio stream (e.g., coughs, sneezes, vehicle sounds, machinery sounds and their analysis, environmental sounds such as road noise). These examples of sounds are not an exhaustive list.
According to an exemplary embodiment, If a search query is automatically generated by device 102, contextual search system 112 (and/or system 114) may also use information which came after the decision to create the search query. Device 102 may contain a circular buffer of audio, words, speaker identities, and other information. Non-time sensitive queries may use any of this information as the context of the search query. For example, system 100 may keep the previous two minutes of speech and text and the following two minutes of speech and text relative to initiation of a search query. System 100, looking for a verbal trigger for a search, may find the trigger within the circular buffer (or a storage medium), and may delay the search for up to a size of the buffer, to send context from both before the search and from after the search trigger.
The number of available audio streams may depend on the type of device 102 as well as the number of transducers available on device 102. For example, if device 102 includes an earpiece and a cell phone (such as earpiece 402 and external device 404 shown in
Each audio stream may be classified or acted upon by classifier 126 (such as a speech recognizer or an event classifier) independently, or may be combined using signal processing (beamforming, for example) to highlight particular sources of audio. The information from the various audio streams may be selectively provided to search engine 128 via data analyzer 124. For example, words from audio signals provided by internal microphone 406 (
Searches may be initiated by a user interface on device 102 (such as user interface 304 shown in
The audio streams and classified data from device 102 may be selectively queried by a search organization (such as device contextual search system 112, remote contextual search system 114 or another organization) after a search. For example, the search organization may request all the words from an audio stream for the two minutes following the delivery of a search result. Such words may be used to assess the success of the search, or to provide follow-up search results, or other analyses which may be of use to either the search organization or user 116.
It is also possible that a search provider may want not only following information but preceding information from a search. The search provider may query system 100 for words or audio preceding the search for a predetermined amount of time, as well as words and audio which follow the search. This information may be used to refine the search process, to analyze the results of the process, or to offer one or more secondary search results which take advantage of the information collected both before and after a user-initiated search.
Data from device 102 may be recorded either locally on device 102 or at remote location. The data may be continuously recorded, or may be selectively recorded responsive to a request by user 116, a geographic location, a request by a search provider or other service provider, the time of day, the status of device 102, or any other signal.
The recordings may be cached in device 102, or they may be transmitted to remote storage 110 for storing. Recordings of events may be made searchable, by contextual search system 112 (and/or system 114). For example, one or more of the audio streams may be transcribed, noting events in the audio stream(s) which are sensed by classifier 126. Topics or other identifiers may be periodically assigned to the recordings based on statistical or other analyses of the data, via data analyzer 128. The cached data can include geographic information, images or videos taken by device 102, biologically sensed information from device 102, or any other recorded or sensed available data.
Remote storage 110 may store at least one of audio streams (from device 102), other information from device 102 (such as from other sensors, time, and/or geographic location), classified audio information, other (i.e., non-acoustic) classified information, acoustical context information, other (i.e., non-acoustic) contextual information, search terms or search results (from device contextual search system 112 and/or remote contextual search system 114). Remote storage 110 may include, for example, a random access memory (RAM), a magnetic disk, an optical disk, flash memory or a hard drive.
A suitable data analyzer 124, classifier 126 and search engine 128 may be understood by the skilled person from the description herein.
Referring to
Devices 202 and device 102 may be capable of direct communication with each other, via communication link 204. Devices 120 and device 102 may also be capable of communication with communication system 106, via communication link 108. Devices 206 and device 102 may be similar types of devices or may be different types of devices. Different kinds of devices 202, 102 may include different sensors and/or different software. In general, devices 206 may include any of the devices described above with respect to device 102.
In system 200, one or more of devices 202 and device 102 may be configured to acquire audio information (as well as other information) in proximity to respective devices 202 and 102. Device 102 may be the same as device 202, except that device 102 may be configured to act as a controller for selectively acquiring sensor information from among devices 202 and for determining contextual information. Although one device 102 is illustrated as being a controller, it is understood that multiple devices 102, 202 may act as controllers.
Although device 102 is illustrated as a controller for gathering sensor information, it is understood that communication system 106 and/or server 104 may also be configured to act as a controller.
In
Referring to
For simplicity, the description below is with respect to device 102. It is understood that device 202 may include one or more the same components as device 102. Accordingly the description of device 102 is also pertinent to device 202. Thus no further description of device 202 may be given.
A typical device 102 may include communication module 314, which provides communication link 108 (
Device 102 a may include sensor module 302 for the acquisition of sensor information. Sensor module 302 may include one or more microphones for collecting cumulative acoustic signal 122 (
In general, sensor module 302 may include any sensor capable of measuring a physical quantity and converting it into a signal that may be used by system 100 (
In an exemplary embodiment, sensor module 302 of device 102 may have one or more transducers to capture near field and far field acoustic signals. For example, device 102 may include a mobile device (for example, a cell phone) or a computer (including a laptop, a tablet or a desktop computer). The transducer may include any transducer capable of converting a signal from the user into an audio signal. For example, the transducer may include an electromechanical, optical or a piezoelectric transducer. The transducer may also include a throat microphone, a jaw microphone or a bone conduction microphone. The transducer may be capable of detecting vibrations from the face of the user and convert the vibrations to an audio signal.
The one or more transducers may be used to detect and/or differentiate speech from a user associated with device 102 from the external (far field) sound field. For example, a boom microphone may be used to localize a user's speech from the external sound field. As another example, a plurality of microphones may be combined, such as by beamforming, to localize the user's voice from the external sound field. As another example, one or more transducers on a mobile device 102 that are proximate to a speech pickup location may be used as near field transducers, while additional transducers on an opposite side of the device may be used as far field transducers. As another example, a combination of transducers on different devices may be used to detect and distinguish the user's speech (near field signal) and transducers on other devices (such as adjacent cell phones). As a further example, device 202 in a vicinity of device 102 may be used to collect the external sound field.
User interface 304 may include any suitable user interface capable of providing a search request and a search term. User interface 304 may also be capable of providing parameters for one or more of device contextual search system 112, sensor module 302, display 306, speaker 308, warning indicator 310, position module 312, communication module 314, storage device 318, and privacy module 326. User interface 304 may include, for example, a pointing device, a keyboard and/or a display device (including a touch-sensitive display).
Device 102 may include display 306, speaker 308 and/or warning indicator 310 for presenting information to user 116 of device 102. Display 306 may include any suitable display device capable of presenting information on device 102. Warning indicator 310 may include any suitable visual indicator for presenting a warning on device 102. The warning may include, for example, an indication that audio information is being recorded. It is understood that speaker 308 may also audibly present a warning indication. Although user interface 304 and display 306 are illustrated as separate devices, it is understood that the functions of user interface 304 and display 306 may be combined into one device.
Device 102 may include position module 312, to maintain a position estimate for device 102. For example, position module 312 may use positioning system 180 (
Storage device 316 may store at least one of raw sensor information (from sensor module 302), classified information (acoustic and/or non-acoustic) (from device contextual search system 112 and/or system 114 shown in
Controller 316 may be coupled, for example, via data and control bus 330 to one or more of sensor module 302, user interface 304, display 306, speaker 308, warning indicator 310, position module 312, communication module 314, controller 316, storage device 318, device contextual search system 114 and privacy module 336. Controller 316 may be configured to control acquisition of sensor information, analysis of the sensor information for context, transmission and/or receipt of sensor information, transmission and/or receipt of contextual information and or search results, as well as any presentation of information by device 102 (such as via display 306, speaker 308 and/or warning indicator 310). Controller 316 may include, for example, a logic circuit, a digital signal processor, a microprocessor or a multicore processor to facilitate the parallel processing of multiple data streams. It is understood that one or more functions of device contextual search system 112 may be performed by controller 316.
Device contextual search system 112 includes data analyzer 320, classifier 322 and search engine 324. As discussed above device contextual search system 112 is the same as remote contextual search system 114 except that system 112 may be included as part of device 102. System 112 may be configured to analyze information (acoustic and/or non-acoustic), determine contextual information (acoustic and/or non-acoustic) and/or perform a search, based on information collected locally by sensor module 302 for device 102. System 112 may also receive/analyze information from other devices 202, via communication module 314.
Privacy module 326 may include mechanisms to implement privacy and/or security requirements and policies for applications relating to the acquisition and use of information of various kinds, including audio information, by one or more devices associated with a number of carriers. These policies and mechanisms may control the use of devices 102 including the ability to remotely switch on and switch off sensing (e.g., listening), the ownership of any audio information garnered by these devices 102, the user's ability to easily control sensing and information acquisition, mechanisms to opt-in and opt-out of applications, carrier-wide or network-wide data gathering, the protection of any audio personally identifiable information (PII) that is gathered, and any aggregated data that is created from a number of devices 102, 202 and networks. Policies or standard practices may also be established for private or semi-private situations where not all users present have opted-in for data acquisition.
Recorded data may be encrypted so that is available only by permission of the owner. Encryption processes are well known, and an appropriate encryption may be provided by the earpiece device, by the cell phone, or after-the-fact by processes of the remote storage location. Cell phone communications are often encrypted, so additional encryption may not be needed before remote storage.
Referring to
Devices 102′, 202′ may include one or more of the same components of device 102 (202) shown in
Earpiece 402 may include one or more internal microphones 406, which may be located in the ear canal but may be blocked from an external audio field (i.e., a far field signal in proximity to the earpiece) by an occlusion element 414 (
Earpiece 402 may include one or more external microphones 410, for sampling the external sound field. Microphone(s) 410 may be located in earpiece 402. Earpiece 402 may also be coupled to one or more other external microphones, for example, one or more microphones in a headset or a cell phone.
A computer or other processor(s) 412 may be included in earpiece 402 to provide, for example, digitization of the audio signals, communication with external device 404, and local storage for use in managing the sound environment of user 116 (
As shown in
Referring to
At step 500, at least one audio stream is collected from among one or more devices. For example, at least one audio stream may be collected from device 102 via sensor module 302 (
At optional step 504, other (non-acoustic) information may be collected from among one or more devices, for example by sensor module 302 (
At step 508, at least one of the audio stream(s), the other information, the classified (acoustic) information or the classified other (non-acoustic) information is stored, for example, at remote storage 110 (
At step 510, acoustical contextual information is determined from the classified (acoustic) information, for example, by data analyzer 124 (
At step 514, a search of at least one search term is performed using the contextual information determined at step 510 (and, optionally at step 512), for example, by search engine 128 and/or search engine 324. At step 516, the search results may be presented on at least one of devices 102, 202 (
At optional step 518, responsive to the search results (at steps 514 and 516), at least one further audio stream may be collected from among one or more devices 102, 202 (
Steps 500-520 may be repeated for additional search requests provided via user interface 304 (
It should be understood that the description herein focuses on “smart” phones as an example, and other types of fixed or mobile devices may be used in conjunction with or instead of “smart” phones. Also, the description herein focuses on aggregation or combination of audio information as an example, but aggregation and processing of other forms of information, including video and biometric information may be performed in conjunction with or instead of the audio data examples described below.
The invention will next be illustrated by reference to several examples. The examples are included to more clearly demonstrate the overall nature of the invention. These examples are exemplary, not restrictive of the invention.
Referring to
The remote data may become information for forensic analysis, as it may contain a record of information spoken in the environment of the user, data spoken by the user, metadata, and search results. It may, in one instantiation, also contain the identity of each speaker in the record, or at least the identification of several different samples of audio as coming from the same speaker. Likewise, a corporation can use these records to confirm verbal contract discussions and for other legal and business relations.
An external search process may continuously monitor the conversations and data from the firefighting team, and may offer search results about relevant information such as weather, status of nearby firefighting resources, traffic, communications status, or other information, which could aid the responders. Context may be continuously tracked, and may assist the search engines in providing targeted, relevant search information to the firefighters. Similar scenarios may be considered for social situations, for military activities or for many other collective activities.
Referring to
According to another exemplary application, in a business scenario, an exemplary device 102 (
After the day is finished, an application could provide the user with a summary of the day's activities, and could provide all of the associated search information generated during the day. This search information could be organized by relevance, and the process could re-organize the information to best serve the interests of the business person. The search engine itself could collect prior search results and could re-organize and prioritize the information previously generated to deliver targeted information after-the-fact to the customer, along with information which would be of commercial interest to both the customer and the search organization, such as advertising, recommendations about real-estate information sources, pending legislation, or other relevant information. Search results from the current day and the past week or month can be available to the user for analysis and presentation, and data resulting from this analysis can be provided to a search engine as context for future search.
The user could review the day's activities, and could generate additional search queries based not only on the local audio streams at the moment, but also on the data from the record which is being reviewed. The context provided to the search engine could be both retrospective and prospective to the particular event being reviewed, as the recordings could be expected to extend both before and after the reviewed event.
During a review, system 100 (
In any networked situation, such as for system 200 (
In a networked situation, the identities of the participants in the network can provide information to search engine 128 (
Although the invention has been described in terms of systems and methods for searching using acoustical context, it is contemplated that one or more steps and/or components may be implemented in software for use with microprocessors/general purpose computers (not shown). In this embodiment, one or more of the functions of the various components and/or steps described above may be implemented in software that controls a computer. The software may be embodied in non-transitory tangible computer readable media (such as, by way of non-limiting example, a magnetic disk, optical disk, flash memory, hard drive, etc.) for execution by the computer.
For example, some of the software may include instructions for execution at the device 102 and devices 202. This software may be stored on a non-transitory tangible computer readable medium at a central location, for example, at server 104 for distribution to the devices 102, 1202, may be transferred over a digital communication medium, and/or stored in a machine readable medium at the devices 102, 202 (e.g., as downloaded applications/applets). Some of the software may be hosted at server 104 (e.g., in a distributed “cloud” of processors) and made accessible by storing it on non-transitory tangible computer-readable media for execution on processors of server 104.
Although the invention is illustrated and described herein with reference to specific embodiments, the invention is not intended to be limited to the details shown. Rather, various modifications may be made in the details within the scope and range of equivalents of the claims and without departing from the invention.
This application is a National Phase of International Application No. PCT/US2012/030862, filed Mar. 28, 2012, entitled METHODS AND SYSTEMS FOR SEARCHING UTILIZING ACOUSTICAL CONTEXT and claims the benefit of U.S. Provisional Application No. 61/516,026 entitled, “METHODS AND SYSTEMS FOR SEARCHING UTILIZING ACOUSTICAL CONTEXT” filed on Mar. 28, 2011, the contents of which are incorporated herein by reference.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US2012/030862 | 3/28/2012 | WO | 00 | 3/7/2014 |
Publishing Document | Publishing Date | Country | Kind |
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WO2012/135293 | 10/4/2012 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
7756281 | Goldstein et al. | Jul 2010 | B2 |
8047207 | Perez et al. | Nov 2011 | B2 |
8194864 | Goldstein et al. | Jun 2012 | B2 |
8199919 | Goldstein et al. | Jun 2012 | B2 |
8208644 | Goldstein et al. | Jun 2012 | B2 |
8208652 | Keady | Jun 2012 | B2 |
8221861 | Keady | Jul 2012 | B2 |
8229128 | Keady | Jul 2012 | B2 |
8251925 | Keady et al. | Aug 2012 | B2 |
8312960 | Keady | Nov 2012 | B2 |
8437492 | Goldstein et al. | May 2013 | B2 |
8550206 | Keady et al. | Oct 2013 | B2 |
8554350 | Keady et al. | Oct 2013 | B2 |
8600067 | Usher et al. | Dec 2013 | B2 |
8631801 | Keady | Jan 2014 | B2 |
8657064 | Staab et al. | Feb 2014 | B2 |
8678011 | Goldstein et al. | Mar 2014 | B2 |
8718313 | Keady | May 2014 | B2 |
8848939 | Keady et al. | Sep 2014 | B2 |
8917880 | Goldstein et al. | Dec 2014 | B2 |
8992710 | Keady | Mar 2015 | B2 |
9113267 | Usher et al. | Aug 2015 | B2 |
9123323 | Keady | Sep 2015 | B2 |
9138353 | Keady | Sep 2015 | B2 |
9185481 | Goldstein et al. | Nov 2015 | B2 |
9216237 | Keady | Dec 2015 | B2 |
9539147 | Keady et al. | Jan 2017 | B2 |
9757069 | Keady et al. | Sep 2017 | B2 |
9781530 | Usher et al. | Oct 2017 | B2 |
9843854 | Keady | Dec 2017 | B2 |
10012529 | Goldstein et al. | Jul 2018 | B2 |
10190904 | Goldstein et al. | Jan 2019 | B2 |
20070255831 | Hayashi et al. | Nov 2007 | A1 |
20080005067 | Dumais et al. | Jan 2008 | A1 |
20080270126 | Jung | Oct 2008 | A1 |
20090006345 | Platt et al. | Jan 2009 | A1 |
20090071487 | Keady | Mar 2009 | A1 |
20090150156 | Kennewick | Jun 2009 | A1 |
20100241256 | Goldstein et al. | Sep 2010 | A1 |
20100302907 | Brumley | Dec 2010 | A1 |
20110043652 | King | Feb 2011 | A1 |
20110238191 | Kristjansson | Sep 2011 | A1 |
20110257974 | Kristjansson | Oct 2011 | A1 |
20110307253 | Lloyd | Dec 2011 | A1 |
20130006629 | Honda | Jan 2013 | A1 |
20130098706 | Keady | Apr 2013 | A1 |
20130149192 | Keady | Jun 2013 | A1 |
20140003644 | Keady et al. | Jan 2014 | A1 |
20140026665 | Keady | Jan 2014 | A1 |
20140373854 | Keady | Dec 2014 | A1 |
20160015568 | Keady | Jan 2016 | A1 |
20160192077 | Keady | Jun 2016 | A1 |
20160295311 | Keady et al. | Oct 2016 | A1 |
20170134865 | Goldstein et al. | May 2017 | A1 |
20180054668 | Keady | Feb 2018 | A1 |
20180132048 | Usher et al. | May 2018 | A1 |
20180220239 | Keady et al. | Aug 2018 | A1 |
20190082272 | Goldstein et al. | Mar 2019 | A9 |
Number | Date | Country |
---|---|---|
20100834620 | Dec 2010 | EP |
Entry |
---|
International Search Report for International Appln. No. PCT/US2012/030862, dated Jun. 15, 2012. |
Written Opinion for International Appln. No. PCT/US2012/030862, dated Jun. 15, 2012. |
Number | Date | Country | |
---|---|---|---|
20140372401 A1 | Dec 2014 | US |
Number | Date | Country | |
---|---|---|---|
61516026 | Mar 2011 | US |