Kernel PCA를 이용한 GMM 기반의 음성변환GMM Based Voice Conversion Using Kernel PCA

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This paper describes a novel spectral envelope conversion method based on Gaussian mixture model (GMM). The core of this paper is rearranging source feature vectors in input space to the transformed feature vectors in feature space for the better modeling of GMM of source and target features. The quality of statistical modeling is dependent on the distribution and the dimension of data. The proposed method transforms both of the distribution and dimension of data and gives us the chance to model the same data with different configuration. Because the converted feature vectors should be on the input space, only source feature vectors are rearranged in the feature space and target feature vectors remain unchanged for the joint pdf of source and target features using KPCA. The experimental result shows that the proposed method outperforms the conventional GMM-based conversion method in various training environment.
Publisher
대한음성학회
Issue Date
2008-09
Language
Korean
Citation

말소리, v.1, no.67, pp.167 - 180

ISSN
1226-1173
URI
http://hdl.handle.net/10203/17664
Appears in Collection
CS-Journal Papers(저널논문)
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