The embodiments pertain to a method for increasing the apparent resolution of image data for purposes of analysis or further processing. More particularly, the embodiments pertain to a method for increasing the apparent resolution of n-dimensional images where n is a positive integer.
As imaging becomes more and more ubiquitous and new imaging modalities push the boundaries of what can be sensed quickly and consistently, the task of accurately extracting information from an image becomes that much more important. Often, however, the images themselves are not at a sufficient resolution for useful information to be reliably located or extracted. Super-resolution methods exist to try and improve the native resolution of raw images for easier analysis. The embodiments described below build a model based on existing, repeating patterns in the image or images for the purposes of increasing the apparent resolution or to more readily extract information from the image data.
The embodiments provide a method and system for increasing the apparent resolution of image data for the purposes or further analysis or further processing or to more accurately extract information from image data. Using the assumption that images have discernible, underlying repeating regular structures, the method builds a multi-modal probabilistic representation of the distribution of these underlying structures. Using this distribution, the relationship between the underlying distributions and their corresponding high-resolution equivalents can be learned and applied to new images for the purposes of increasing the new image's apparent resolution. Furthermore higher order information can be learned and associated with the underlying distributions and then applied to new, unseen data. This method can proceed under two alternative routes, which are referred to as supervised and unsupervised. In the supervised embodiment, the algorithm has access to corresponding high-resolution and low-resolution image pairs for use in supervised learning of the relationship between the modes of the underlying distribution and their high resolution equivalents. In the unsupervised version, the high-resolution equivalents are learned and then constructed directly from the low-resolution data itself. Finally, in both versions, higher-level information such as edge locations, landmark point locations, or other features, as well as semantic labeling and meta-data can be manually or automatically placed on the low-resolution data and, in the process of super-resolution, this information can be correctly inserted into or associated to either the new, higher resolution image or to the original image.
In one aspect of the invention, a method is provided. The method includes identifying a plurality of data sets, each data set of the plurality of data sets is associated with a distribution model and each data set of the plurality of data sets is associated with an image having a first noise level. It should be appreciated that more than one image can be used to generate the data and the data may be preprocessed data or raw data. The method includes partitioning the data sets into a plurality of groups and generating a representative estimate for each group of the plurality of groups, the representative estimate is associated with a second noise level, the second noise level less than the first noise level. The method further includes annotating each representative estimate for each group of the plurality of groups and receiving an input data set. The input data set may be an Optical Coherence Tomography scan in one embodiment. The method includes determining which representative estimate is a closest, or best match, to the input data set and annotating the input data set according to the representative estimate having the closest match, wherein at least one method operation is executed through a processor.
Other aspects and advantages of the embodiments will become apparent from the following detailed description, taken in conjunction with the accompanying drawings, illustrating by way of example the principles of the embodiments.
The embodiments, together with further advantages thereof, may best be understood by reference to the following description taken in conjunction with the accompanying drawings.
The following embodiments describe a system and a method for image analysis and interpretation. It will be obvious, however, to one skilled in the art, that the present invention may be practiced without some or all of the details. In other instances, well known process operations have not been described in detail in order not to unnecessarily obscure the present embodiments.
Super-resolution (SR) methods of image reconstruction facilitate an increase in image resolution. This can allow image data to be up-sampled, zoomed or otherwise enlarged beyond the pixel resolution at which they were sampled without degradation of apparent detail. Broadly speaking, methods of SR can be split into two approaches. These are: classical, multi-image SR; and example-based SR. In the former, multiple lower resolution images of the same scene are acquired and combined to form a high-resolution result. These methods are often ill-posed, computationally expensive, and, of course, require a collection of images. More explicit are the example-based methods, where correspondences between high-resolution and low-resolution images are learned and then applied to new low-resolution images in order to recover their most likely higher resolution representation. These methods tend to be difficult to generalize to new problem domains and are sensitive to image noise and artifacts. The embodiments provide an alternative method for increasing the apparent resolution of image data.
As shown in
The unsupervised embodiment begins, as shown in
Moving to
Still referring to
The unsupervised embodiment continues with the correspondence of each member of the collection of distributions (mode i, j, and k) from the modeling step with its respective higher-resolution equivalent, as shown in
Having associated each mode of the underlying distribution (mode i, j, and k) with its maximum likelihood, high-resolution counterpart, the next step is to build a data structure that will quickly associate any new data vector with its appropriate cluster and, as a result, its appropriate high-resolution analogue. In this embodiment, the underlying distribution is assumed to be a combination of spherical Gaussians with unit variance so a nearest-neighbor classifier in a Euclidean space will work for the search step. As such, the preprocessing involves building a data structure that supports fast nearest-neighbor queries. This includes, but is not limited to, kd-trees, bounding volume hierarchies, and oriented bounding boxes. In the case for more general or non-probabilistic distributions, other distance metrics (e.g. Mahalanobis distance) and search structures would be more applicable.
The supervised approach is a special case of the unsupervised method. In the supervised approach, there exist corresponding pairs of low-resolution and high-resolution images so that the relationship between the two can be learned directly. In particular, as shown in
Similarly, the correspondence problem for the supervised approach is also easier. As suggested by the term “supervised”, the correspondences are formed based entirely on the equivalency between the high-resolution image 402 and the low-resolution image 400. This equivalence is achieved by registering the two images (400 and 402) so that they are aligned. If the two images (400 and 402) are already aligned, then the registration step is unnecessary. Each low-resolution patch 400a-c (also referred to as a data subset) is vectorized and associated with its corresponding high-resolution correspondence 402a-c (also referred to as a vectorized subset) on a one-to-one basis, as depicted in
Having finished the offline training process, referenced in
Having associated each structured subset with its high-resolution counterpart as illustrated in
Still referring to
Mass storage device 1014 represents a persistent data storage device such as a floppy disc drive or a fixed disc drive, which may be local or remote. Data 1016 resides in mass storage device 1014, but can also reside in RAM 1006 during processing. Data 1016 may contain image data, such as the representative estimates for each group, as well as the data for each group. It should be appreciated that CPU 1004 may be embodied in a general-purpose processor, a special purpose processor, or a specially programmed logic device. Display 1018 is in communication with CPU 1004, RAM 1006, ROM 1012, and mass storage device 1014, through bus 1010 and display interface 1020. Keyboard 1022, cursor control 1024, and input/output interface 1026 are coupled to bus 1010 in order to communicate information in command selections to CPU 1004. It should be appreciated that data to and from external devices may be communicated through input output interface 1026.
Another aspect of the embodiments is the ability to insert automatically or manually delineated information into the process. As illustrated in
Another aspect of the embodiments is to apply the method in medical applications such as optical coherence tomography where structured matter is imaged. Given, for example, retinal layers in the eye, a given 1-d signal imaged at the retina will depth resolve the retinal layers. Its vectorization via scale and intensity is a very natural implementation given the finitely bounded—between the inner limiting membrane at the anterior and Bruch's membrane at the posterior—and consistently organized layers, in this example, retinal layers. As such, the input signals are ideal for vectorization and replacement with their lower noise (i.e., higher resolution) representations from each one's association in the partitioned data set. This offers aesthetic improvements that may help clinical interpretation. This will facilitate better images, where, for example, opacities in the eye diminished the signal quality at the sensing device. This notion can be extended to other structural anatomical information, such as layers in the skin for dermatological applications with similarly repeating patterns. And indeed to alternative modalities.
An alternative embodiment to the proceeding method also applies in ophthalmic applications where, for example, each 1-d profile through the retina is grouped accordingly to the method set forth. Instead, however, of replacing the profile with a higher resolution alternative, annotated information associated to that partition can be used to interpret the data. Such an annotation can include, but is not limited to, the location of the different tissue layers' interfaces, as assigned by a clinician skilled in the art. This has direct clinical relevance. A manual labeling of the layers can subsequently be automatically applied to any number of input data. Any single grouping of the data in N-d could correspond to any number of N-d vectors, yet would only need to be labeled once. Subsequently, very fast interpretation of vectors—or image patches—could be performed in a very simple and fast way, solely by exploiting the fact that the data is structured in a repeatable manner. This embodiment also has the advantage of implicitly imposing an ordering constraint on the interfaces such that each interface must be located in a fixed order relative to the others, as is exactly the case in the human retina. With the above embodiments in mind, it should be understood that the invention may employ various computer-implemented operations involving data stored in computer systems. These operations are those requiring physical manipulation of physical quantities. Usually, though not necessarily, these quantities take the form of electrical or magnetic signals capable of being stored, transferred, combined, compared, and otherwise manipulated. Further, the manipulations performed are often referred to in terms, such as producing, identifying, determining, or comparing.
Any of the operations described herein that form part of the invention are useful machine operations. The invention also relates to a device or an apparatus for performing these operations. The apparatus may be specially constructed for the required purpose, such as a special purpose computer. When defined as a special purpose computer, the computer can also perform other processing, program execution or routines that are not part of the special purpose, while still being capable of operating for the special purpose. Alternatively, the operations may be processed by a general purpose computer selectively activated or configured by one or more computer programs stored in the computer memory, cache, or obtained over a network. When data is obtained over a network, the data may be processed by other computers on the network, e.g., a cloud of computing resources.
The embodiments of the present invention can also be defined as a machine that transforms data from one state to another state. The transformed data can be saved to storage and then manipulated by a processor. The processor thus transforms the data from one thing to another. Still further, the methods can be processed by one or more machines or processors that can be connected over a network. Each machine can transform data from one state or thing to another, and can also process data, save data to storage, transmit data over a network, display the result, or communicate the result to another machine.
The invention can also be embodied as computer readable code on a computer readable medium. The computer readable medium is any data storage device that can store data, which can thereafter be read by a computer system. Examples of the computer readable medium include hard drives, network attached storage (NAS), read-only memory, random-access memory, CD-ROMs, CD-Rs, CD-RWs, DVDs, Flash, magnetic tapes, and other optical and non-optical data storage devices. The computer readable medium can also be distributed over a network coupled computer systems so that the computer readable code is stored and executed in a distributed fashion.
Although the method operations were described in a specific order, it should be understood that other operations may be performed in between described operations, described operations may be adjusted so that they occur at slightly different times or described operations may be distributed in a system which allows the occurrence of the processing operations at various intervals associated with the processing, as long as the processing of the overlay operations are performed in a desired way.
Although the foregoing exemplary embodiments have been described in some detail for purposes of clarity of understanding, it will be apparent that certain changes and modifications can be practiced within the scope of the appended claims. Accordingly, the present embodiments are to be considered as illustrative and not restrictive, and the invention is not to be limited to the details given herein, but may be modified within the scope and equivalents of any resulting claims.
Accordingly, it is to be understood that the embodiments of the invention herein described are merely illustrative of the application of the principles of the invention. Reference herein to details of the illustrated embodiments is not intended to limit the scope of the claims, which themselves recite those features regarded as essential to the invention.
Number | Name | Date | Kind |
---|---|---|---|
5519789 | Etoh | May 1996 | A |
6226408 | Sirosh | May 2001 | B1 |
6374251 | Fayyad et al. | Apr 2002 | B1 |
6865509 | Hsiung et al. | Mar 2005 | B1 |
6882997 | Zhang et al. | Apr 2005 | B1 |
7024049 | Bern et al. | Apr 2006 | B2 |
7466861 | Katoh et al. | Dec 2008 | B2 |
7643659 | Cao et al. | Jan 2010 | B2 |
7697764 | Kataoka | Apr 2010 | B2 |
7724962 | Zhu et al. | May 2010 | B2 |
7890512 | Mei et al. | Feb 2011 | B2 |
7916909 | Khazen et al. | Mar 2011 | B2 |
7949186 | Grauman et al. | May 2011 | B2 |
7974464 | Lee et al. | Jul 2011 | B2 |
8295575 | Feldman | Oct 2012 | B2 |
8345975 | Wang et al. | Jan 2013 | B2 |
8358857 | Demirci et al. | Jan 2013 | B2 |
8427545 | Porter et al. | Apr 2013 | B2 |
8805120 | Min et al. | Aug 2014 | B2 |
8989514 | Russakoff | Mar 2015 | B2 |
20030228064 | Gindele | Dec 2003 | A1 |
20050251347 | Perona et al. | Nov 2005 | A1 |
20050288813 | Yang | Dec 2005 | A1 |
20080132418 | Ismail | Jun 2008 | A1 |
20080292194 | Schmidt et al. | Nov 2008 | A1 |
20090221920 | Boppart | Sep 2009 | A1 |
20100169024 | Madabhushi | Jul 2010 | A1 |
20100278405 | Kakadiaris | Nov 2010 | A1 |
20100329529 | Feldman | Dec 2010 | A1 |
20100329557 | Wang | Dec 2010 | A1 |
20110274338 | Park | Nov 2011 | A1 |
20140081130 | Everett | Mar 2014 | A1 |
Number | Date | Country |
---|---|---|
WO 2005117541 | Dec 2005 | WO |
Entry |
---|
Longitudinal study of retinal degeneration in a rat using spectral domain optical coherence tomography Marinko V. Sarunic, Oct. 25, 2010 / vol. 18, No. 22 / Optics Express 23435-41. |
Texture analysis of optical coherence tomography images: feasibility for tissue classiKirk W. Gossage ; J. Biomed. Opt. 8(3), 570-575 (Jul 1, 2003). doi:10.1117/1.1577575 History: Received May 29, 2002; Revised Sep. 16, 2002; Revised Nov. 26, 2002; Accep. |
Marinko V. Sarunic, Longitudinal study of retinal degeneration in a rat using spectral domain optical tomography (2010), vol. 18, No. 22 Optics Express. |
Yang, C.T. et al. Exploiting self-similarities for single frame super-resolution. in: the 10th Asian Conference on Computer Vision, Nov. 8, 2010. See pp. 3-7; figure 1. |
Glasner, Daniel et al., Super-Resolution from a Single Image in: the 12th IEEE International Conference on Computer Vision. Sep. 29, 2009. See p. 351-354; figures 3-4. |
International Search Report and Written Opinion, PCT/US2012/023879, mailed Aug. 22, 2012. |
Kaibing Zhang et al: “Partially Supervised Neighbor Embedding for Example-Based Image Super-Resolution”, IEEE Journal of Selected Topics in Signal Processing, IEEE, US, vol. 5, No. 2, pp. 230-239, Apr. 1, 2011. |
Chatterjee P. et al: “Clustering-Based Denoising with Locally Learned Dictionaries”, IEEE Transactions on Image Processing, IEEE Service Center, Piscataway, NJ, US, vol. 18, No. 7, pp. 1438-1451, Jul. 1, 2009. |
Kato Z. et al.: “A Markov Random Field Image Segmentation Model for Color Textured Images”, Image and Vision Computing, Elsevier, Guildford, GB, vol. 24, No. 10, pp. 1103-1114, Oct. 1, 2006. |
Number | Date | Country | |
---|---|---|---|
20150170339 A1 | Jun 2015 | US |
Number | Date | Country | |
---|---|---|---|
Parent | 13366153 | Feb 2012 | US |
Child | 14627419 | US |