Locality Constraint Dictionary Learning with Support Vector for Pattern Classification
November 22, 2019 ยท Entered Twilight ยท ๐ IEEE Access
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Repo contents: Access_LCDL.pdf, Eigenface_f.m, EuDist2.m, README.md, YaleB_DR_DAT.mat, constructW.m, construct_L.m, demo_EYaleB.m, img, large_scale_svm, lcdl_sv.m
Authors
He-Feng Yin, Xiao-Jun Wu, Su-Gen Chen
arXiv ID
1911.10003
Category
cs.CV: Computer Vision
Citations
13
Venue
IEEE Access
Repository
https://github.com/yinhefeng/LCDL-SV
Last Checked
1 month ago
Abstract
Discriminative dictionary learning (DDL) has recently gained significant attention due to its impressive performance in various pattern classification tasks. However, the locality of atoms is not fully explored in conventional DDL approaches which hampers their classification performance. In this paper, we propose a locality constraint dictionary learning with support vector discriminative term (LCDL-SV), in which the locality information is preserved by employing the graph Laplacian matrix of the learned dictionary. To jointly learn a classifier during the training phase, a support vector discriminative term is incorporated into the proposed objective function. Moreover, in the classification stage, the identity of test data is jointly determined by the regularized residual and the learned multi-class support vector machine. Finally, the resulting optimization problem is solved by utilizing the alternative strategy. Experimental results on benchmark databases demonstrate the superiority of our proposed method over previous dictionary learning approaches on both hand-crafted and deep features. The source code of our proposed LCDL-SV is accessible at https://github.com/yinhefeng/LCDL-SV
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