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US Patent 10504004 Systems and methods for deep model translation generation

Patent 10504004 was granted and assigned to General Dynamics Mission Systems on December, 2019 by the United States Patent and Trademark Office.

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Is a
Patent
Patent
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Patent attributes

Patent Applicant
General Dynamics Mission Systems
General Dynamics Mission Systems
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Current Assignee
General Dynamics Mission Systems
General Dynamics Mission Systems
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
105040040
Patent Inventor Names
Jennifer Alexander Sleeman0
John Patrick Kaufhold0
Date of Patent
December 10, 2019
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Patent Application Number
157055040
Date Filed
September 15, 2017
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Patent Citations
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US Patent 10176363 Analyzing digital holographic microscopy data for hematology applications
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US Patent 10043261 Generating simulated output for a specimen
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US Patent 10346740 Systems and methods incorporating a neural network and a forward physical model for semiconductor applications
Patent Citations Received
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US Patent 12089820 Systems and methods for processing real-time video from a medical image device and detecting objects in the video
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US Patent 11574403 Systems and methods for processing real-time video from a medical image device and detecting objects in the video
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US Patent 11995854 Mesh reconstruction using data-driven priors
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Patent Primary Examiner
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Feng Niu
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Patent abstract

Embodiments of the present invention relate to systems and methods for improving the training of machine learning systems to recognize certain objects within a given image by supplementing an existing sparse set of real-world training images with a comparatively dense set of realistic training images. Embodiments may create such a dense set of realistic training images by training a machine learning translator with a convolutional autoencoder to translate a dense set of synthetic images of an object into more realistic training images. Embodiments may also create a dense set of realistic training images by training a generative adversarial network (“GAN”) to create realistic training images from a combination of the existing sparse set of real-world training images and either Gaussian noise, translated images, or synthetic images. The created dense set of realistic training images may then be used to more effectively train a machine learning object recognizer to recognize a target object in a newly presented digital image.

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