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KMID : 0917520070140020127
Journal of Speech Sciences
2007 Volume.14 No. 2 p.127 ~ p.135
PCA Covariance Model Based on Multiband for Speaker Verification
Choi Min-Jung

Lee Youn-Jeong
Seo, Chang-Woo
Abstract
Feature vectors of speech are generally extracted from whole frequency domain. The inherent character of a speaker is located in the low band or high band frequency. However, if the speech is corrupted by narrowband noise with concentrated energy, speaker verification performance is reduced as the individual characteristic is removed. In this paper, we propose a PCA Covariance Model based on the multiband to extract the robust feature vectors against the narrowband noise. First, we divide the overall frequency band into several subbands. Second, the correlation of feature vectors extracted independently from each subband is removed by PCA. The distance obtained from each subband has different distribution. To normalize against the different distribution, we moved the value into the normalized distribution through the mapping function. Finally, the represented value applying the weighting function is used for speaker verification. In the experiments, the proposed method shows better performance of the speaker verification and reduces the computation.
KEYWORD
PCA, covariance model, multiband, speaker verification, Bhattacharyya Distance
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