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有遮挡环境下的人脸识别方法综述
引用本文:徐遐龄,刘涛,田国辉,于文娟,肖大军,梁陕鹏.有遮挡环境下的人脸识别方法综述[J].计算机工程与应用,2021,57(17):46-60.
作者姓名:徐遐龄  刘涛  田国辉  于文娟  肖大军  梁陕鹏
作者单位:1.国家电网公司华中分部 华中电力调控分中心,武汉 430077 2.南瑞集团(国网电力科学研究院)有限公司,南京 211106 3.北京科东电力控制系统有限责任公司 研发技术中心,北京 100192
摘    要:随着人脸识别应用领域的逐渐扩大,有遮挡环境下的人脸识别面临着一定的技术挑战。深度学习方法由于其具有强大的学习能力,成为解决有遮挡环境下的人脸识别问题的一种较好的解决方案,但仍面临诸多待解决的问题。减少遮挡对人脸识别算法带来的性能影响是该领域的重点和难点问题之一。从模型、算法和数据集的角度分析了近年来相关研究进展;对比了不同算法的性能结构、优缺点以及存在的问题;探讨了未来可能的研究方向。

关 键 词:人脸识别  遮挡  特征  卷积神经网络  对抗生成网络  人工智能  深度学习  

Review of Occlusion Face Recognition Methods
XU Xialing,LIU Tao,TIAN Guohui,YU Wenjuan,XIAO Dajun,LIANG Shanpeng.Review of Occlusion Face Recognition Methods[J].Computer Engineering and Applications,2021,57(17):46-60.
Authors:XU Xialing  LIU Tao  TIAN Guohui  YU Wenjuan  XIAO Dajun  LIANG Shanpeng
Affiliation:1.Central China Electric Power Dispatching Control Sub-center, Central China Branch of State Grid Corporation of China, Wuhan 430077, China 2.NARI Group Corporation(State Grid Electric Power Research Institute), Nanjing 211106, China 3.Research and Development Technology Center, Beijing Kedong Electric Power Control System Corporation Limited, Beijing 100192, China
Abstract:With the gradual expansion of the application field of face recognition, face detection in occlusion environment is facing certain technical challenges. Because of its strong learning ability, deep learning method has become a better solution to the problem of face occlusion detection, but it still faces many problems to be solved. Reducing the influence of occlusion on the performance of detection algorithm is one of the key and difficult problems in this field. This paper analyzes the related research progress from the perspective of model, algorithm and data set, compares the basic principles of different algorithms, model performance, advantages and disadvantages and existing problems, and discusses the possible research direction in the future.
Keywords:face recognition  occlusion  feature  convolution neural network  countermeasure generation network  Artificial Intelligence(AI)  deep learning  
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