Invention Grant
- Patent Title: Disparity estimation method for weakly supervised trusted cost propagation
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Application No.: US17604239Application Date: 2020-03-05
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Publication No.: US11315273B2Publication Date: 2022-04-26
- Inventor: Wei Zhong , Hong Zhang , Haojie Li , Zhihui Wang , Risheng Liu , Xin Fan , Zhongxuan Luo , Shengquan Li
- Applicant: DALIAN UNIVERSITY OF TECHNOLOGY , PENG CHENG LABORATORY
- Applicant Address: CN Liaoning; CN Guangdong
- Assignee: DALIAN UNIVERSITY OF TECHNOLOGY,PENG CHENG LABORATORY
- Current Assignee: DALIAN UNIVERSITY OF TECHNOLOGY,PENG CHENG LABORATORY
- Current Assignee Address: CN Liaoning; CN Guangdong
- Agency: Muncy, Geissler, Olds & Lowe, P.C.
- Priority: CN202010028299.7 20200110
- International Application: PCT/CN2020/077960 WO 20200305
- International Announcement: WO2021/138991 WO 20210715
- Main IPC: G06T7/55
- IPC: G06T7/55 ; G06T5/00 ; G06N20/00 ; G06T5/20 ; G06K9/62

Abstract:
The present invention discloses a disparity estimation method for weakly supervised trusted cost propagation, which utilizes a deep learning method to optimize the initial cost obtained by the traditional method. By combining and making full use of respective advantages, the problems of false matching and difficult matching of untextured regions in the traditional method are solved, and the method for weakly supervised trusted cost propagation avoids the problem of data label dependency of the deep learning method.
Public/Granted literature
- US20220092809A1 DISPARITY ESTIMATION METHOD FOR WEAKLY SUPERVISED TRUSTED COST PROPAGATION Public/Granted day:2022-03-24
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