Invention Grant
- Patent Title: Weakly supervised video activity detection method and system based on iterative learning
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Application No.: US17425653Application Date: 2020-09-16
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Publication No.: US11721130B2Publication Date: 2023-08-08
- Inventor: Yan Song , Rong Zou , Xiangbo Shu
- Applicant: Nanjing University of Science and Technology
- Applicant Address: CN Jiangsu
- Assignee: NANJING UNIVERSITY OF SCIENCE AND TECHNOLOGY
- Current Assignee: NANJING UNIVERSITY OF SCIENCE AND TECHNOLOGY
- Current Assignee Address: CN Nanjing
- Agency: Luedeka Neely Group PC
- Priority: CN 2010644474.5 2020.07.07
- International Application: PCT/CN2020/115542 2020.09.16
- International Announcement: WO2022/007193A 2022.01.13
- Date entered country: 2021-07-23
- Main IPC: G06V40/20
- IPC: G06V40/20 ; G06V10/82 ; G06V10/40

Abstract:
The present disclosure relates to a weakly supervised video activity detection method and system based on iterative learning. The method includes: extracting spatial-temporal features of a video that contains actions; constructing a neural network model group; training a first neural network model according to the class label of the video, a class activation sequence output by the first neural network model, and a video feature output by the first neural network model; training the next neural network model according to the class label of the video, a pseudo temporal label output by the current neural network model, a class activation sequence output by the next neural network model, and a video feature output by the next neural network model; and performing action detection on the test video according to the neural network model corresponding to the highest detection accuracy value.
Public/Granted literature
- US20220189209A1 WEAKLY SUPERVISED VIDEO ACTIVITY DETECTION METHOD AND SYSTEM BASED ON ITERATIVE LEARNING Public/Granted day:2022-06-16
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