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Inventor profile of:

Yonit HOFFMAN

City:

Herzliya

Country:

Israel

Published Applications:

7

Last publication date:

2026-03-05

Top Assignees for applications by Yonit HOFFMAN

The entities that hold a legal rights for patent applications filed by inventor HOFFMAN Yonit:

  • Microsoft Technology Licensing, LLC 7 Redmond, WA United States

Recent patent applications by HOFFMAN Yonit

Yonit HOFFMAN from Herzliya, IL has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2026-03-05
US20260067414A1
Electricity

EFFICIENT SHOT DETECTION OF TRANSITIONS

#2 | 2025-10-02
US20250308225A1
Physics

TRAINING A PRE-TRAINED OBJECT DETECTION MODEL FOR DETECTING NEW OBJECT CLASSES

#3 | 2025-03-20
US20250095319A1
Physics

Two-Stage Suppression for Multi-Class, Multi-Object Detection and Tracking Systems

#4 | 2024-12-19
US20240420469A1
Physics

TEXTLESS MATERIAL SCENE MATCHING IN VIDEOS

#5 | 2024-07-04
US20240221379A1
Physics

Combining visual and audio insights to detect opening scenes in multimedia files

#6 | 2023-12-28
US20230419663A1
Physics

Systems and Methods for Video Genre Classification

#7 | 2023-10-05
US20230316753A1
Physics

Textless material scene matching in videos

InventorID:

5871568 ⎘

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