DocumentCode :
2712781
Title :
Fixed-rank representation for unsupervised visual learning
Author :
Liu, Risheng ; Lin, Zhouchen ; De La Torre, Fernando ; Su, Zhixun
fYear :
2012
fDate :
16-21 June 2012
Firstpage :
598
Lastpage :
605
Abstract :
Subspace clustering and feature extraction are two of the most commonly used unsupervised learning techniques in computer vision and pattern recognition. State-of-the-art techniques for subspace clustering make use of recent advances in sparsity and rank minimization. However, existing techniques are computationally expensive and may result in degenerate solutions that degrade clustering performance in the case of insufficient data sampling. To partially solve these problems, and inspired by existing work on matrix factorization, this paper proposes fixed-rank representation (FRR) as a unified framework for unsupervised visual learning. FRR is able to reveal the structure of multiple subspaces in closed-form when the data is noiseless. Furthermore, we prove that under some suitable conditions, even with insufficient observations, FRR can still reveal the true subspace memberships. To achieve robustness to outliers and noise, a sparse regularizer is introduced into the FRR framework. Beyond subspace clustering, FRR can be used for unsupervised feature extraction. As a non-trivial byproduct, a fast numerical solver is developed for FRR. Experimental results on both synthetic data and real applications validate our theoretical analysis and demonstrate the benefits of FRR for unsupervised visual learning.
Keywords :
computer vision; feature extraction; matrix decomposition; minimisation; pattern clustering; sparse matrices; unsupervised learning; FRR framework; clustering performance; computationally expensive; computer vision; degenerate solutions; fixed-rank representation; insufficient data sampling; insufficient observations; matrix factorization; multiple subspaces; nontrivial byproduct; numerical solver; pattern recognition; rank minimization; sparse regularizer; sparsity; state-of-the-art techniques; subspace clustering; synthetic data; theoretical analysis; true subspace memberships; unsupervised feature extraction; unsupervised learning techniques; unsupervised visual learning; Clustering algorithms; Feature extraction; Minimization; Noise; Principal component analysis; Vectors; Visualization;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2012 IEEE Conference on
Conference_Location :
Providence, RI
ISSN :
1063-6919
Print_ISBN :
978-1-4673-1226-4
Electronic_ISBN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2012.6247726
Filename :
6247726
Link To Document :
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