Invention Grant
- Patent Title: Method for person re-identification based on deep model with multi-loss fusion training strategy
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Application No.: US16813001Application Date: 2020-03-09
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Publication No.: US11195051B2Publication Date: 2021-12-07
- Inventor: Deshuang Huang , Sijia Zheng , Zhongqiu Zhao , Xinyong Zhao , Jianhong Sun , Yang Zhao , Yongjun Lin
- Applicant: Tongji University , Hefei University of Technology , Beijing E-Hualu Info Technology Co., Ltd.
- Applicant Address: CN Shanghai; CN Hefei; CN Beijing
- Assignee: Tongji University,Hefei University of Technology,Beijing E-Hualu Info Technology Co., Ltd.
- Current Assignee: Tongji University,Hefei University of Technology,Beijing E-Hualu Info Technology Co., Ltd.
- Current Assignee Address: CN Shanghai; CN Hefei; CN Beijing
- Agency: Troutman Pepper Hamilton Sanders LLP
- Agent Christopher C. Close, Jr.
- Priority: CN201910177443.0 20190309
- Main IPC: G06K9/62
- IPC: G06K9/62 ; G06N20/00 ; G06K9/00 ; G06K9/46 ; G06T3/60 ; G06T5/00

Abstract:
The invention relates to a method for person re-identification based on deep model with multi-loss fusion training strategy. The method uses a deep learning technology to perform preprocessing operations such as flipping, clipping, random erasing and style transfer, and then feature extraction is performed through a backbone network model; joint training of a network is performed by fusing a plurality of loss functions. Compared with other deep learning-based person re-identification algorithms, the present invention greatly improves the performance of person re-identification by adopting a plurality of preprocessing modes, the fusion of three loss functions and effective training strategy.
Public/Granted literature
- US20200285896A1 METHOD FOR PERSON RE-IDENTIFICATION BASED ON DEEP MODEL WITH MULTI-LOSS FUSION TRAINING STRATEGY Public/Granted day:2020-09-10
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