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ICASSP
2011
IEEE

Speaker verification using sparse representation classification

13 years 4 months ago
Speaker verification using sparse representation classification
Sparse representations of signals have received a great deal of attention in recent years, and the sparse representation classifier has very lately appeared in a speaker recognition system. This approach represents the (sparse) GMM mean supervector of an unknown speaker as a linear combination of an over-complete dictionary of GMM supervectors of many speaker models, and 1-norm minimization results in a non-zero coefficient corresponding to the unknown speaker class index. Here this approach is tested on large databases, introducing channel-/session-variability compensation, and fused with a contemporary GMM-SVM system. Evaluations on the NIST 2006 SRE database show that when the outputs of the MFCC GMM-SVM-NAP based classifier are fused with the MFCC GMM-Sparse Representation ClassifierNAP (GMM-SRC-NAP) based classifier, a baseline EER of 6.56% can be reduced to 2.65%, significantly improving the performance of the speaker verification system.
Jia Min Karen Kua, Eliathamby Ambikairajah, Julien
Added 21 Aug 2011
Updated 21 Aug 2011
Type Journal
Year 2011
Where ICASSP
Authors Jia Min Karen Kua, Eliathamby Ambikairajah, Julien Epps, Roberto Togneri
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