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Speaker Recognition Using Features Derived from Fractional Fourier Transform
Buffalo, New York October 17-October 18
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/AUTOID.2005.44Fourth IEEE Workshop on Automatic Ide ...
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Jinfang Wang, Jilin University
Jinbao Wang, Northeast Normal University
As the generalization of the classical Fourier transform, fractional Fourier transform(FRFT) is introduced into the field of speaker recognition in this paper. The individual feature sets derived from fractional Fourier transform achieve the excellent recognition success rate which goes up to the extent a little higher than the counterparts of the classical MFCC parameters when applied in the GMM classifiers. In addition, the computation efficiency of the feature extraction process arrives at the acceptable level which completely matches the one of MFCC parameter acquirement.
Citation:
Jinfang Wang, Jinbao Wang, "Speaker Recognition Using Features Derived from Fractional Fourier Transform," autoid, pp.95-100, Fourth IEEE Workshop on Automatic Identification Advanced Technologies (AutoID'05), 2005
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