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Ben-Ari; Rami Patent Filings

Ben-Ari; Rami

Patent Applications and Registrations

Patent applications and USPTO patent grants for Ben-Ari; Rami.The latest application filed is for "visual question answering using model trained on unlabeled videos".

Company Profile
8.9.12
  • Ben-Ari; Rami - Kiryat-Ono IL
  • Ben-Ari; Rami - Tel-Aviv IL
  • Ben-Ari; Rami - Or Yehuda IL
  • Ben-Ari; Rami - Yehuda IL
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Deterministic learning video scene detection
Grant 11,450,111 - Rotman , et al. September 20, 2
2022-09-20
Classifier training using noisy samples
Grant 11,416,757 - Amrani , et al. August 16, 2
2022-08-16
Visual Question Answering Using Model Trained On Unlabeled Videos
App 20220067546 - Amrani; Elad ;   et al.
2022-03-03
Deterministic Learning Video Scene Detection
App 20220067386 - Rotman; Daniel Nechemia ;   et al.
2022-03-03
Training Multimodal Representation Learning Model On Unnanotated Multimodal Data
App 20220044105 - Amrani; Elad ;   et al.
2022-02-10
Self-supervised Object Detector Training Using Raw And Unlabeled Videos
App 20210133623 - Amrani; Elad ;   et al.
2021-05-06
Classifier Training Using Noisy Samples
App 20210133602 - Amrani; Elad ;   et al.
2021-05-06
Systems and methods for automatic detection of an indication of abnormality in an anatomical image
Grant 10,878,569 - Akselrod-Ballin , et al. December 29, 2
2020-12-29
Medical image data analysis
Grant 10,828,000 - Amit , et al. November 10, 2
2020-11-10
Weakly and fully labeled mammogram classification and localization with a dual branch deep neural network
Grant 10,789,462 - Bakalo , et al. September 29, 2
2020-09-29
Weakly And Fully Labeled Mammogram Classification And Localization With A Dual Branch Deep Neural Network
App 20200226368 - Bakalo; Ran ;   et al.
2020-07-16
Medical Image Data Analysis
App 20200163641 - Amit; Guy ;   et al.
2020-05-28
Classifying medical images using deep convolution neural network (CNN) architecture
Grant 10,650,286 - Ben-Ari , et al.
2020-05-12
Systems And Methods For Automatic Detection Of An Indication Of Abnormality In An Anatomical Image
App 20190304092 - Akselrod-Ballin; Ayelet ;   et al.
2019-10-03
Classifying Medical Images Using Deep Convolution Neural Network (cnn) Architecture
App 20190073569 - Ben-Ari; Rami ;   et al.
2019-03-07
Systems And Methods For Automatic Detection Of Architectural Distortion In Two Dimensional Mammographic Images
App 20180218495 - BEN-ARI; RAMI
2018-08-02
Systems and methods for automatic detection of architectural distortion in two dimensional mammographic images
Grant 10,037,601 - Ben-Ari July 31, 2
2018-07-31
Automated fibro-glandular (FG) tissue segmentation in digital mammography using fuzzy logic
Grant 9,918,686 - Ben-Ari , et al. March 20, 2
2018-03-20
Automated Fibro-glandular (fg) Tissue Segmentation In Digital Mammography Using Fuzzy Logic
App 20170135660 - Ben-Ari; Rami ;   et al.
2017-05-18
Method and system for processing and analyzing Digital Terrain Data
Grant 7,403,856 - Moscovitz , et al. July 22, 2
2008-07-22
Method and system for processing and analyzing digital terrain data
App 20060184327 - Moscovitz; Yigal ;   et al.
2006-08-17

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