4.7 Article

Simultaneous discriminative projection and dictionary learning for sparse representation based classification

Journal

PATTERN RECOGNITION
Volume 46, Issue 1, Pages 346-354

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2012.07.010

Keywords

Discriminative projection learning; Dictionary learning; Metric learning; Sparse representation based classification

Funding

  1. Natural Science Foundation [60872145, 60903126]
  2. National High-Tech. [2009AA01Z315]
  3. Cultivation Fund from Ministry of Education of China [708085]
  4. Excellent Doctorate Foundation of Northwestern Polytechnical University

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Sparsity driven classification method has been popular recently due to its effectiveness in various classification tasks. It is based on the assumption that samples of the same class live in the same subspace, thus a test sample can be well represented by the training samples of the same class. Previous methods model the subspace for each class with either the training samples directly or dictionaries trained for each class separately. Although enabling strong reconstructive ability, these methods may not have desirable discriminative ability, especially when there are high correlations among the samples of different classes. In this paper, we propose to learn simultaneously a discriminative projection and a dictionary that are optimized for the sparse representation based classifier, to extract discriminative information from the raw data while respecting the sparse representation assumption. By formulating the task of projection and dictionary learning into an optimization framework, we can learn the discriminative projection and dictionary effectively. Extensive experiments are carried out on various datasets and the experimental results verify the efficacy of the proposed method. (C) 2012 Elsevier Ltd. All rights reserved.

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