4.7 Article

Sparse fuzzy two-dimensional discriminant local preserving projection (SF2DDLPP) for robust image feature extraction

期刊

INFORMATION SCIENCES
卷 563, 期 -, 页码 1-15

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2021.02.006

关键词

2D discriminant local preserving projections; (2DDLPP); Feature extraction; Elastic net regression; Fuzzy k-nearest neighbours (FKNN); Fuzzy set theory

资金

  1. Key R&D Program Science Foundation in Colleges and Universities of Jiangshu Province [18KJA520005, 19KJA360001, 20KJA520002]
  2. National Science Foundation of China [61876213, 61462064, 6177227, 61861033, 61603192, U1831127, 71972102]
  3. national Key RD Program [2019YF B1404602]
  4. Natural Science Fund of Jiangsu Province [BK20201397, BK201714 94]
  5. China's Jiangxi Province Natural Science Foundation [20181BAB202022]
  6. Fund of China's Jiangxi Provincial Departmentof Education [GJJ170599]
  7. Natural Science Foundation of Guangdong Province [2016A030307050]
  8. Special Foundation of Public Research of Guangdong Province [2016A020225008, 2017A040405062]

向作者/读者索取更多资源

The study introduces a new elastic feature extraction algorithm called SF2DDLPP to address the issues encountered in the 2DDLPP algorithm. By calculating the membership matrix using FKNN and developing two theorems to solve generalized eigenfunctions, the optimal sparse fuzzy 2D discriminant projection matrix is regressed.
Recently, image feature extraction algorithms based on 2D discriminant local preserving projection (2DDLPP) algorithms have been successfully applied in many fields. The 2DDLPP can maintain the discrimination information of the local intrinsic manifold structure using two-dimensional image representation data. However, the 2DDLPP algorithm encounters the problem of the sensitivity of overlapping points (outliers) and requires high computational cost in real-world applications. In order to resolve the problems mentioned above, we introduce a new elastic feature extraction algorithm called the sparse fuzzy 2D discriminant local preserving projection (SF2DDLPP). First, the membership matrix is calculated using the fuzzy k-nearest neighbours (FKNN), which is applied to the intraclass weighted matrix and the interclass weighted matrix. Second, two theorems are developed to directly solve the generalized eigenfunctions. Finally, the optimal sparse fuzzy 2D discriminant projection matrix is regressed using the elastic net regression. The experiments show the effectiveness and stability of this algorithm on several face (ORL, Yale, AR and Yale B), USPS and palm print datasets. (c) 2021 Elsevier Inc. All rights reserved.

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