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Eighth IEEE International Symposium on Multimedia (ISM'06)
Feature Comparison among Various Wavelets in Speaker Recognition Using Support Vector Machine
San Diego, CA
December 11-December 13
ISBN: 0-7695-2746-9
Chien-Chang Lin, I-Shou University, Taiwan
Shi-Huang Chen, Shu-Te University, Taiwan
Tsung-Ching Lin, I-Shou University, Taiwan
T.K. Truong, I-Shou University, Taiwan
In this paper, there are 17 types of wavelet coefficients obtained from the Matlab software and an Aurora-2 database used to evaluate which wavelet type has a better accuracy in speaker recognition. We first determine the frequency cepstral coefficient (FCC) level to form a 114-dimentional feature vector by the use of Daubechies-4 wavelet and support vector machines (SVMs) with pre-selected exponential radial basis kernel function (ERBF) and under some additional conditions. Then, average, for each wavelet, the accuracy of 42 possible combinations about the gender of speakers considered in seven kinds of experiments corresponding to two to eight speakers. The experimental results show that the best accuracy in average will be achieved by using the reverse biorthogonal-3.5 or reverse biorthogonal-3.7 wavelet. The reverse biorthogonal-3.5 wavelet is then chosen to be the proposed wavelet function for speaker recognition in terms of shorter filter length.
Citation:
Chien-Chang Lin, Shi-Huang Chen, Tsung-Ching Lin, T.K. Truong, "Feature Comparison among Various Wavelets in Speaker Recognition Using Support Vector Machine," ism, pp.811-816, Eighth IEEE International Symposium on Multimedia (ISM'06), 2006
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