DocumentCode
78451
Title
Pairwise Sparsity Preserving Embedding for Unsupervised Subspace Learning and Classification
Author
Zhao Zhang ; Shuicheng Yan ; Mingbo Zhao
Author_Institution
Sch. of Comput. Sci. & Technol., Soochow Univ., Suzhou, China
Volume
22
Issue
12
fYear
2013
fDate
Dec. 2013
Firstpage
4640
Lastpage
4651
Abstract
Two novel unsupervised dimensionality reduction techniques, termed sparse distance preserving embedding (SDPE) and sparse proximity preserving embedding (SPPE), are proposed for feature extraction and classification. SDPE and SPPE perform in the clean data space recovered by sparse representation and enhanced Euclidean distances over noise removed data are employed to measure pairwise similarities of points. In extracting informative features, SDPE and SPPE aim at preserving pairwise similarities between data points in addition to preserving the sparse characteristics. This paper calculates the sparsest representation of all vectors jointly by a convex optimization. The sparsest codes enable certain local information of data to be preserved, and can endow SDPE and SPPE a natural discriminating power, adaptive neighborhood and robust characteristic against noise and errors in delivering low-dimensional embeddings. We also mathematically show SDPE and SPPE can be effectively extended for discriminant learning in a supervised manner. The validity of SDPE and SPPE is examined by extensive simulations. Comparison with other related state-of-the-art unsupervised algorithms show that promising results are delivered by our techniques.
Keywords
convex programming; data compression; feature extraction; multimedia computing; pattern classification; unsupervised learning; SDPE; SPPE; convex optimization; discriminant supervised learning; enhanced Euclidean distances; feature extraction; low-dimensional embeddings; noise removed data; pairwise sparsity preserving embedding; sparse distance preserving embedding; sparse proximity preserving embedding; sparse representation; sparsest codes; unsupervised dimensionality reduction techniques; unsupervised subspace learning; Euclidean distance; Feature extraction; Kernel; Matrix converters; Noise; Sparse matrices; Vectors; Classification; Sparse representation; feature extraction; unsupervised subspace learning;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2013.2277780
Filename
6576866
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