4.6 Article

Extended JSSL for Multi-Feature Face Recognition via Intra-Class Variant Dictionary

期刊

IEEE ACCESS
卷 9, 期 -, 页码 91807-91819

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3089836

关键词

Face recognition; Feature extraction; Training; Testing; Dictionaries; Data mining; Collaboration; Sparse representation; image classification; multi-feature; face recognition

资金

  1. National Natural Science Foundation of China [11705122]
  2. Scienti~c Research Foundation of Sichuan University of Science and Engineering [2019RC11, 2019RC12]
  3. Sichuan Science and Technology Program of China [2019YJ0477, 2020YFSY0027, 2020YFH0124]
  4. Guangdong Basic and Applied Basic Research Foundation [2021A1515011342]
  5. Open Foundation of Arti~cial Intelligence Key Laboratory of Sichuan Province [2019RZJ03, 2020RZY02]
  6. Applied Basic Research Programs of Science and Technology Department of Zigong [2019YYJC29, 2020YGJC01]

向作者/读者索取更多资源

This paper explores the representation of testing face images for multi-feature face recognition, and proposes an extended joint similar and specific learning method to effectively address the drawbacks of the original method.
This paper focuses on how to represent the testing face images for multi-feature face recognition. The choice of feature is critical for face recognition. The different features of the sample contribute differently to face recognition. The joint similar and specific learning (JSSL) has been effectively applied in multi-feature face recognition. In the JSSL, although the representation coefficient is divided into the similar coefficient and the specific coefficient, there is the disadvantage that the training images cannot represent the testing images well, because there are probable expressions, illuminations and disguises in the testing images. We think that the intra-class variations of one person can be linearly represented by those of other people. In order to solve well the disadvantage of JSSL, in the paper, we extend JSSL and propose the extended joint similar and specific learning (EJSSL) for multi-feature face recognition. EJSSL constructs the intra-class variant dictionary to represent the probable variation between the training images and the testing images. EJSSL uses the training images and the intra-class variant dictionary to effectively represent the testing images. The proposed EJSSL method is perfectly experimented on some available face databases, and its performance is superior to many current face recognition methods.

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