DocumentCode :
3197967
Title :
Learning the sparse representation for classification
Author :
Yang, Jianchao ; Wang, Jiangping ; Huang, Thomas
Author_Institution :
Beckman Inst., Univ. of Illinois at Urbana-Champaign, Urbana, IL, USA
fYear :
2011
fDate :
11-15 July 2011
Firstpage :
1
Lastpage :
6
Abstract :
In this work, we propose a novel supervised matrix factorization method used directly as a multi-class classifier. The coefficient matrix of the factorization is enforced to be sparse by ℓ1-norm regularization. The basis matrix is composed of atom dictionaries from different classes, which are trained in a jointly supervised manner by penalizing inhomogeneous representations given the labeled data samples. The learned basis matrix models the data of interest as a union of discriminative linear subspaces by sparse projection. The proposed model is based on the observation that many high-dimensional natural signals lie in a much lower dimensional subspaces or union of subspaces. Experiments conducted on several datasets show the effectiveness of such a representation model for classification, which also suggests that a tight reconstructive representation model could be very useful for discriminant analysis.
Keywords :
learning (artificial intelligence); pattern classification; sparse matrices; ℓ1-norm regularization; atom dictionaries; coefficient matrix; data samples; discriminative linear subspaces; machine learning; multiclass classifier; sparse representation; supervised matrix factorization method; Data models; Databases; Dictionaries; Face; Face recognition; Sparse matrices; Training; Sparse representation; dictionary training; digit recognition; face recognition; matrix factorization; sparse coding;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Multimedia and Expo (ICME), 2011 IEEE International Conference on
Conference_Location :
Barcelona
ISSN :
1945-7871
Print_ISBN :
978-1-61284-348-3
Electronic_ISBN :
1945-7871
Type :
conf
DOI :
10.1109/ICME.2011.6012083
Filename :
6012083
Link To Document :
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