Abstract: There is provided a method of generating a dataset of synthetic images, comprising: for each real image each depicting a real human anatomical structure: extracting and preserving a real anatomical structure region(s) from the real image, generating a synthetic image comprising a synthetic human anatomical structure region and the preserved real anatomical structure region(s), designating pairs of images, each including the real image and the synthetic image, feeding the pair into a machine learning model trained to recognize anatomical structure parts to obtain an outcome of a similarity value denoting an amount of similarity between the real image and the synthetic image, verifying that the synthetic image does not depict the real human anatomical structure when the similarity value is below a threshold, wherein an identity of the real human anatomical structure is non-determinable from the synthetic image, and including the verified synthetic image in the dataset.
Type:
Grant
Filed:
December 28, 2023
Date of Patent:
November 26, 2024
Assignee:
RealizeMD Ltd.
Inventors:
Stanislav Khirman, Uri Neeman, Alon Gat, David P. Rapaport, Yoav Duek
Abstract: There is provided a method of generating a dataset of synthetic images, comprising: for each real image each depicting a real human anatomical structure: extracting and preserving a real anatomical structure region(s) from the real image, generating a synthetic image comprising a synthetic human anatomical structure region and the preserved real anatomical structure region(s), designating pairs of images, each including the real image and the synthetic image, feeding the pair into a machine learning model trained to recognize anatomical structure parts to obtain an outcome of a similarity value denoting an amount of similarity between the real image and the synthetic image, verifying that the synthetic image does not depict the real human anatomical structure when the similarity value is below a threshold, wherein an identity of the real human anatomical structure is non-determinable from the synthetic image, and including the verified synthetic image in the dataset.
Type:
Application
Filed:
December 28, 2023
Publication date:
April 25, 2024
Applicant:
RealizeMD Ltd.
Inventors:
Stanislav KHIRMAN, Uri NEEMAN, Alon GAT, David P. RAPAPORT, Yoav DUEK
Abstract: There is provided a method of generating a dataset of synthetic images, comprising: for each real image each depicting a real human anatomical structure: extracting and preserving a real anatomical structure region(s) from the real image, generating a synthetic image comprising a synthetic human anatomical structure region and the preserved real anatomical structure region(s), designating pairs of images, each including the real image and the synthetic image, feeding the pair into a machine learning model trained to recognize anatomical structure parts to obtain an outcome of a similarity value denoting an amount of similarity between the real image and the synthetic image, verifying that the synthetic image does not depict the real human anatomical structure when the similarity value is below a threshold, wherein an identity of the real human anatomical structure is non-determinable from the synthetic image, and including the verified synthetic image in the dataset.
Type:
Grant
Filed:
April 17, 2023
Date of Patent:
March 19, 2024
Assignee:
RealizeMD Ltd.
Inventors:
Stanislav Khirman, Uri Neeman, Alon Gat, David P. Rapaport
Abstract: There is provided a method of generating a dataset of synthetic images, comprising: for each real image each depicting a real human anatomical structure: extracting and preserving a real anatomical structure region(s) from the real image, generating a synthetic image comprising a synthetic human anatomical structure region and the preserved real anatomical structure region(s), designating pairs of images, each including the real image and the synthetic image, feeding the pair into a machine learning model trained to recognize anatomical structure parts to obtain an outcome of a similarity value denoting an amount of similarity between the real image and the synthetic image, verifying that the synthetic image does not depict the real human anatomical structure when the similarity value is below a threshold, wherein an identity of the real human anatomical structure is non-determinable from the synthetic image, and including the verified synthetic image in the dataset.
Type:
Application
Filed:
April 17, 2023
Publication date:
August 10, 2023
Applicant:
RealizeMD Ltd.
Inventors:
Stanislav KHIRMAN, Uri NEEMAN, Alon GAT, David P. RAPAPORT
Abstract: A computer implemented method of generating at least one anonymous image, comprises: extracting and preserving at least one real facial region from at least one real image of a real human face, and generating at least one anonymous image comprising a synthetic human face and the preserved at least one real facial region, wherein an identity of the real human face is non-determinable from the at least one anonymous image.
Type:
Grant
Filed:
October 6, 2022
Date of Patent:
April 18, 2023
Assignee:
RealizeMD Ltd.
Inventors:
Stanislav Khirman, Uri Neeman, Alon Gat, David P. Rapaport