Locality-sensitive kernel sparse representation classification for face recognition |
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Affiliation: | 1. Centre for Advanced Imaging, University of Queensland, Brisbane, Australia;2. ARC Science of Learning Research Centre, University of Queensland, Brisbane, Australia;3. Department of Psychology, Swansea University, Swansea, United Kingdom;1. ACCESS Linnaeus Center, Electrical Engineering, KTH Royal Institute of Technology, S-100 44 Stockholm, Sweden;2. Medical Research Council, Imperial College London, White City, London, W12 0NN, United Kingdom |
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Abstract: | In this paper a new classification method called locality-sensitive kernel sparse representation classification (LS-KSRC) is proposed for face recognition. LS-KSRC integrates both sparsity and data locality in the kernel feature space rather than in the original feature space. LS-KSRC can learn more discriminating sparse representation coefficients for face recognition. The closed form solution of the l1-norm minimization problem for LS-KSRC is also presented. LS-KSRC is compared with kernel sparse representation classification (KSRC), sparse representation classification (SRC), locality-constrained linear coding (LLC), support vector machines (SVM), the nearest neighbor (NN), and the nearest subspace (NS). Experimental results on three benchmarking face databases, i.e., the ORL database, the Extended Yale B database, and the CMU PIE database, demonstrate the promising performance of the proposed method for face recognition, outperforming the other used methods. |
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Keywords: | Sparse representation Kernal Sparsity Data locality Face recognition Discriminating Classification |
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