Patents by Inventor Zhongqiu ZHAO

Zhongqiu ZHAO has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20220292394
    Abstract: A multi-scale deep supervision based reverse attention model is provided and includes an input end, a multi-scale feature learning module, an attention mechanism module, a reverse attention mechanism module, a deep supervision module, multiple loss functions, multiple average pool layers, multiple linear layers and multiple branches. The reverse attention mechanism module as provided can alleviate the problem of feature information loss caused by attention mechanisms, and part of the modules can be discarded in the testing phase, thereby improving the testing efficiency.
    Type: Application
    Filed: August 13, 2021
    Publication date: September 15, 2022
    Inventors: Deshuang Huang, Di Wu, Changan Yuan, Zhongqiu Zhao, Jianbin Huang
  • Patent number: 11195051
    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.
    Type: Grant
    Filed: March 9, 2020
    Date of Patent: December 7, 2021
    Assignees: Tongji University, Hefei University of Technology, Beijing E-Hualu Info Technology Co., Ltd.
    Inventors: Deshuang Huang, Sijia Zheng, Zhongqiu Zhao, Xinyong Zhao, Jianhong Sun, Yang Zhao, Yongjun Lin
  • Publication number: 20200285896
    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.
    Type: Application
    Filed: March 9, 2020
    Publication date: September 10, 2020
    Applicants: Tongji University, Hefei University of Technology, Beijing E-Hualu Info Technology Co.,Ltd.
    Inventors: Deshuang HUANG, Sijia ZHENG, Zhongqiu ZHAO, Xinyong ZHAO, Jianhong SUN, Yang ZHAO, Yongjun LIN