Patents by Inventor Ilya BOGOMOLNY
Ilya BOGOMOLNY has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
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Patent number: 11943570Abstract: A system configured for verification of imaged target detection performs the following: (a) receive information indicative of at least two images of object(s). This information comprises candidate target detection region(s), indicative of possible detection of a target associated with the object(s). Images have at least partial overlap. The candidate region(s) appears at least partially in the overlap area. The images are associated with different relative positions of capturing imaging device(s) and of an imaged portion of the object(s). (b) process the information to determine whether the candidate region(s) meets a detection repetition criterion, the criterion indicative of repetition of candidate region(s) in locations of the images that are associated with a same location on a data representation of the object(s). (c) if the criterion is met, classify the candidate region(s) as verified target detection region(s). This facilitates output of an indication of the verified region(s).Type: GrantFiled: December 3, 2020Date of Patent: March 26, 2024Assignee: UVEYE LTD.Inventors: Amir Hever, Ohad Hever, Ilya Bogomolny
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Patent number: 11935222Abstract: There are provided a system and a method of automatic tire inspection, the method comprising: obtaining at least one image capturing a wheel of a vehicle; segmenting the at least one image into image segments including a tire image segment corresponding to a tire of the wheel; straightening the tire image segment from a curved shape to a straight shape, giving rise to a straight tire segment; identifying text marked on the tire from the straight tire segment, comprising: detecting locations of a plurality of text portions on the straight tire segment, and recognizing text content for each of the text portions; and analyzing the recognized text content based on one or more predefined rules indicative of association between text content of different text portions at given relative locations, giving rise to a text analysis result indicative of condition of the tire.Type: GrantFiled: December 11, 2019Date of Patent: March 19, 2024Assignee: UVEYE LTD.Inventors: Ilya Bogomolny, Ohad Hever, Amir Hever
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Publication number: 20230342937Abstract: A method for determining a fingerprint of a vehicle, including receiving a vehicle identifier and, from at least one sensor, at least one vehicle appearance each including image data informative of vehicle scan. The said appearance is associated with a unique appearance time tag. Then, segmenting the image data into segments each being informative of components of the vehicle. Then, determining marker instances from the image scan, wherein each marker instance is associated with a marker class and marker features. Then, storing data indicative of the vehicle's fingerprint including the vehicle identifier and its corresponding (i) vehicle appearance and associated appearance time tag, (ii) the so determined marker instances, thereby facilitating verification of the fingerprint of the vehicle in future vehicle scan(s).Type: ApplicationFiled: September 19, 2021Publication date: October 26, 2023Inventors: Amir HEVER, Ilya BOGOMOLNY
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Patent number: 11348223Abstract: There are provided a system and method of training a neural network system for anomaly detection, comprising: obtaining a training dataset including a set of original images and a set of random data vectors; constructing a neural network system comprising a generator, and a first discriminator and a second discriminator operatively connected to the generator; training the generator, the first discriminator and the second discriminator together based on the training dataset, such that: i) the generator is trained, at least based on evaluation of the first discriminator, to generate synthetic images meeting a criterion of photo-realism as compared to corresponding original images; and ii) the second discriminator is trained based on the original images and the synthetic images to discriminate images with anomaly from images without anomaly with a given level of accuracy, thereby giving rise to a trained neural network system.Type: GrantFiled: November 11, 2019Date of Patent: May 31, 2022Assignee: UVEYE LTD.Inventors: Amir Hever, Ohad Hever, Ilya Bogomolny
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Publication number: 20220051391Abstract: There are provided a system and a method of automatic tire inspection, the method comprising: obtaining at least one image capturing a wheel of a vehicle; segmenting the at least one image into image segments including a tire image segment corresponding to a tire of the wheel; straightening the tire image segment from a curved shape to a straight shape, giving rise to a straight tire segment; identifying text marked on the tire from the straight tire segment, comprising: detecting locations of a plurality of text portions on the straight tire segment, and recognizing text content for each of the text portions; and analyzing the recognized text content based on one or more predefined rules indicative of association between text content of different text portions at given relative locations, giving rise to a text analysis result indicative of condition of the tire.Type: ApplicationFiled: December 11, 2019Publication date: February 17, 2022Inventors: Ilya BOGOMOLNY, Ohad HEVER, Amir HEVER
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Publication number: 20210358115Abstract: There are provided a system and method of training a neural network system for anomaly detection, comprising: obtaining a training dataset including a set of original images and a set of random data vectors; constructing a neural network system comprising a generator, and a first discriminator and a second discriminator operatively connected to the generator; training the generator, the first discriminator and the second discriminator together based on the training dataset, such that: i) the generator is trained, at least based on evaluation of the first discriminator, to generate synthetic images meeting a criterion of photo-realism as compared to corresponding original images; and ii) the second discriminator is trained based on the original images and the synthetic images to discriminate images with anomaly from images without anomaly with a given level of accuracy, thereby giving rise to a trained neural network system.Type: ApplicationFiled: November 11, 2019Publication date: November 18, 2021Inventors: Amir HEVER, Ohad HEVER, Ilya BOGOMOLNY
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Publication number: 20210174117Abstract: A system configured for verification of imaged target detection performs the following: (a) receive information indicative of at least two images of object(s). This information comprises candidate target detection region(s), indicative of possible detection of a target associated with the object(s). Images have at least partial overlap. The candidate region(s) appears at least partially in the overlap area. The images are associated with different relative positions of capturing imaging device(s) and of an imaged portion of the object(s). (b) process the information to determine whether the candidate region(s) meets a detection repetition criterion, the criterion indicative of repetition of candidate region(s) in locations of the images that are associated with a same location on a data representation of the object(s). (c) if the criterion is met, classify the candidate region(s) as verified target detection region(s). This facilitates output of an indication of the verified region(s).Type: ApplicationFiled: December 3, 2020Publication date: June 10, 2021Inventors: Amir HEVER, Ohad HEVER, Ilya BOGOMOLNY
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Patent number: 10650530Abstract: There are provided a system and method of vehicle image comparison, the method including: obtaining an input image capturing at least part of a vehicle; segmenting the input image into one or more input segments corresponding to one or more mechanical components; retrieving a set of reference images, thereby obtaining a respective set of corresponding reference segments for each input segment; and generating at least one difference map corresponding to at least one input segment, comprising, for each input segment: comparing the input segment with each corresponding reference segment thereof using a comparison model, giving rise to a set of difference map candidates each indicating probability of presence of DOI between the given input segment and the corresponding reference segment; and providing a difference map corresponding to the given input segment according to probability of each difference map candidate in the set of difference map candidates.Type: GrantFiled: March 29, 2018Date of Patent: May 12, 2020Assignee: UVEYE LTD.Inventors: Amir Hever, Ohad Hever, Ilya Bogomolny
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Patent number: 10643332Abstract: There are provided a system and method of vehicle image comparison, the method including: obtaining an input image comprising a plurality of image portions; retrieving a set of reference images; for each image portion, searching for a best matching reference portion in the set of reference images, comprising: i) for each given reference image: identifying a reference region; using a similarity model on the given image portion and the reference region to obtain a similarity map indicating a similarity between the image portion and a respective reference image portion; and selecting a reference image portion with the best similarity as a reference portion candidate; and ii) selecting the best matching reference portion; and comparing each given image portion with the best matching reference portion using a comparison model, giving rise to a difference map indicating probability of presence of DOI in the given image portion.Type: GrantFiled: March 29, 2018Date of Patent: May 5, 2020Assignee: UVEYE LTD.Inventors: Amir Hever, Ohad Hever, Ilya Bogomolny
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Publication number: 20190304100Abstract: There are provided a system and method of vehicle image comparison, the method including: obtaining an input image capturing at least part of a vehicle; segmenting the input image into one or more input segments corresponding to one or more mechanical components; retrieving a set of reference images, thereby obtaining a respective set of corresponding reference segments for each input segment; and generating at least one difference map corresponding to at least one input segment, comprising, for each input segment: comparing the input segment with each corresponding reference segment thereof using a comparison model, giving rise to a set of difference map candidates each indicating probability of presence of DOI between the given input segment and the corresponding reference segment; and providing a difference map corresponding to the given input segment according to probability of each difference map candidate in the set of difference map candidates.Type: ApplicationFiled: March 29, 2018Publication date: October 3, 2019Inventors: Amir HEVER, Ohad HEVER, Ilya BOGOMOLNY
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Publication number: 20190304099Abstract: There are provided a system and method of vehicle image comparison, the method including: obtaining an input image comprising a plurality of image portions; retrieving a set of reference images; for each image portion, searching for a best matching reference portion in the set of reference images, comprising: i) for each given reference image: identifying a reference region; using a similarity model on the given image portion and the reference region to obtain a similarity map indicating a similarity between the image portion and a respective reference image portion; and selecting a reference image portion with the best similarity as a reference portion candidate; and ii) selecting the best matching reference portion; and comparing each given image portion with the best matching reference portion using a comparison model, giving rise to a difference map indicating probability of presence of DOI in the given image portion.Type: ApplicationFiled: March 29, 2018Publication date: October 3, 2019Inventors: Amir HEVER, Ohad HEVER, Ilya BOGOMOLNY