DocumentCode :
1489215
Title :
Uncorrelated Multilinear Principal Component Analysis for Unsupervised Multilinear Subspace Learning
Author :
Haiping Lu ; Plataniotis, K.N. ; Venetsanopoulos, A.N.
Author_Institution :
Edward S. Rogers Sr. Dept. of Electr. & Comput. Eng., Univ. of Toronto, Toronto, ON, Canada
Volume :
20
Issue :
11
fYear :
2009
Firstpage :
1820
Lastpage :
1836
Abstract :
This paper proposes an uncorrelated multilinear principal component analysis (UMPCA) algorithm for unsupervised subspace learning of tensorial data. It should be viewed as a multilinear extension of the classical principal component analysis (PCA) framework. Through successive variance maximization, UMPCA seeks a tensor-to-vector projection (TVP) that captures most of the variation in the original tensorial input while producing uncorrelated features. The solution consists of sequential iterative steps based on the alternating projection method. In addition to deriving the UMPCA framework, this work offers a way to systematically determine the maximum number of uncorrelated multilinear features that can be extracted by the method. UMPCA is compared against the baseline PCA solution and its five state-of-the-art multilinear extensions, namely two-dimensional PCA (2DPCA), concurrent subspaces analysis (CSA), tensor rank-one decomposition (TROD), generalized PCA (GPCA), and multilinear PCA (MPCA), on the tasks of unsupervised face and gait recognition. Experimental results included in this paper suggest that UMPCA is particularly effective in determining the low-dimensional projection space needed in such recognition tasks.
Keywords :
face recognition; feature extraction; iterative methods; matrix decomposition; object recognition; optimisation; principal component analysis; tensors; unsupervised learning; vectors; 2DPCA; CSA; GPCA; MPCA; TROD; TVP; UMPCA algorithm; alternating projection method; concurrent subspaces analysis; generalized PCA; low-dimensional projection space; multilinear PCA; sequential iterative step; successive variance maximization; tensor object; tensor rank-one matrix decomposition; tensor-to-vector projection; two-dimensional PCA; uncorrelated multilinear feature extraction; uncorrelated multilinear principal component analysis; unsupervised face recognition; unsupervised gait recognition; unsupervised multilinear subspace learning; Algorithm design and analysis; Face recognition; Feature extraction; Information technology; Iterative methods; Multidimensional systems; Pattern recognition; Principal component analysis; Strontium; Tensile stress; Dimensionality reduction; face recognition; feature extraction; gait recognition; multilinear principal component analysis (MPCA); tensor objects; uncorrelated features; Algorithms; Artificial Intelligence; Gait; Linear Models; Motion Perception; Neural Networks (Computer); Pattern Recognition, Automated; Pattern Recognition, Visual; Principal Component Analysis; Visual Perception;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2009.2031144
Filename :
5272374
Link To Document :
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