학술논문

Cosine Multilinear Principal Component Analysis for Recognition
Document Type
Periodical
Source
IEEE Transactions on Big Data IEEE Trans. Big Data Big Data, IEEE Transactions on. 9(6):1620-1630 Dec, 2023
Subject
Computing and Processing
Tensors
Principal component analysis
Mathematical models
Linear programming
Iterative methods
Robustness
Matrix decomposition
Multilinear principal component analysis
angle
tensor analysis
pattern recognition
Language
ISSN
2332-7790
2372-2096
Abstract
Existing two-dimensional principal component analysis methods can only handle second-order tensors (i.e., matrices). However, with the advancement of technology, tensors of order three and higher are gradually increasing. This brings new challenges to dimensionality reduction. Thus, a multilinear method called MPCA was proposed. Although MPCA can be applied to all tensors, using the square of the F-norm makes it very sensitive to outliers. Several two-dimensional methods, such as Angle 2DPCA, have good robustness but cannot be applied to all tensors. We extend the robust Angle 2DPCA method to a multilinear method and propose Cosine Multilinear Principal Component Analysis (CosMPCA) for tensor representation. Our CosMPCA method considers the relationship between the reconstruction error and projection scatter and selects the cosine metric. In addition, our method naturally uses the F-norm to reduce the impact of outliers. We introduce an iterative algorithm to solve CosMPCA. We provide detailed theoretical analysis in both the proposed method and the analysis of the algorithm. Experiments show that our method is robust to outliers and is suitable for tensors of any order.