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Generalized two-dimensional PCA based on ℓ2,p-norm minimization.

Authors :
Mi, Jian-Xun
Zhang, Ya-Nan
Li, Yong
Shu, Yucheng
Source :
International Journal of Machine Learning & Cybernetics; Nov2020, Vol. 11 Issue 11, p2421-2438, 18p
Publication Year :
2020

Abstract

To exploit the information from two-dimensional structured data, two-dimensional principal component analysis (2-DPCA) has been widely used for dimensionality reduction and feature extraction. However, 2-DPCA is sensitive to outliers which are common in real applications. Therefore, many robust 2-DPCA methods have been proposed to improve the robustness of 2-DPCA. But existing robust 2-DPCAs have several weaknesses. First, these methods cannot be robust enough to outliers. Second, to center a sample set mixed with outliers using the L2-norm distance is usually biased. Third, most methods do not preserve the nice property of 2-DPCA (rotational invariance), which is important for learning algorithm. To alleviate these issues, we present a generalized robust 2-DPCA, which is named as 2-DPCA with ℓ 2 , p -norm minimization ( ℓ 2 , p -2-DPCA), for image representation and recognition. In ℓ 2 , p -2-DPCA, ℓ 2 , p -norm is employed as the distance metric to measure the reconstruction error, which can alleviate the effect of outliers. Therefore, the proposed method is robust to outliers and preserves the desirable property of 2-DPCA which is invariant to rotational and well characterizes the geometric structure of samples. Moreover, most existing robust PCA methods estimate sample mean from database with outliers by averaging, which is usually biased. Sample mean are treated as an unknown variable to remedy the bias of computing sample mean in ℓ 2 , p -2-DPCA. To solve ℓ 2 , p -2-DPCA, we propose an iterative algorithm, which has a closed-form solution in each iteration. Experimental results on several benchmark databases demonstrate the effectiveness and advantages of our method. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18688071
Volume :
11
Issue :
11
Database :
Complementary Index
Journal :
International Journal of Machine Learning & Cybernetics
Publication Type :
Academic Journal
Accession number :
146081788
Full Text :
https://doi.org/10.1007/s13042-020-01127-1