1. Robust 2DPCA by Tℓ₁ Criterion Maximization for Image Recognition
- Author
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Xiangfei Yang, Wensi Wang, Liming Liu, Yuanhai Shao, Liting Zhang, and Naiyang Deng
- Subjects
Two-dimensional principal component analysis (2DPCA) ,Tℓ₁ criterion ,robust ,dimensionality reduction ,feature extraction ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Two-dimensional principal component analysis (2DPCA) has been widely used to extract image features. As opposed to PCA, 2DPCA directly treats 2D matrices to extract image features instead of transforming 2D matrices into vectors. However, the classical 2DPCA based on F-norm square is sensitive to noise. To handle this problem, 2DPCAs based on ℓ1-norm, ℓp-norm, and other norms have been studied. In this paper, as a further development, 2DPCA based on Tℓ1 criterion is proposed, referred as 2DPCA-Tℓ1. Notice that, different from some norms used before, Tℓ1 criterion is bounded and Lipschitz-continuous. So it can be expected that our 2DPCA-Tℓ1 should be more robust. In fact, the experimental results have shown that its performance is superior to that of classical 2DPCA, 2DPCA-L1, 2DPCAL1-S, N-2-DPCA, G2DPCA, and Angle-2DPCA.
- Published
- 2021
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