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US Patent 10181092 Method and system for reconstructing super-resolution image

Patent 10181092 was granted and assigned to Wuhan University on January, 2019 by the United States Patent and Trademark Office.

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Patent abstractTimelineTable: Further ResourcesReferences
Is a
Patent
Patent

Patent attributes

Patent Applicant
Wuhan University
Wuhan University
Current Assignee
Wuhan University
Wuhan University
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
10181092
Date of Patent
January 15, 2019
Patent Application Number
15481430
Date Filed
April 6, 2017
Patent Citations Received
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US Patent 11836890 Image processing apparatus and image processing method thereof
3
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US Patent 10887613 Visual processing using sub-pixel convolutions
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US Patent 10904541 Offline training of hierarchical algorithms
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US Patent 11295412 Image processing apparatus and image processing method thereof
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US Patent 10499069 Enhancing visual data using and augmenting model libraries
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US Patent 10516890 Accelerating machine optimisation processes
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US Patent 11528492 Machine learning for visual processing
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US Patent 10523955 Enhancement of visual data
...
Patent Primary Examiner
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Daniel G Mariam
Patent abstract

A method for reconstructing a super-resolution image, including: 1) reducing the resolution of an original high-resolution image to obtain an equal low-resolution image, respectively expressed as matrix forms yh and yl; 2) respectively conducting dictionary training on yl and yhl to obtain a low-resolution image dictionary Dl; 3) dividing the sparse representation coefficients αl and αhl into training sample coefficients αl_train and αhl_train and test sample coefficients αl_test and αhl_test; 4) constructing an L-layer deep learning network using a root-mean-square error as a cost function; 5) iteratively optimizing network parameters so as to minimize the cost function by using the low-resolution image sparse coefficient αl_train as the input of the deep learning network; 6) inputting the low-resolution image sparse coefficient αl_test as the test portion into the trained deep learning network in 5), outputting to obtain a predicted difference image sparse coefficient {circumflex over (α)}hl_test, computing an error between the {circumflex over (α)}hl_test.

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