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ON USING NON-LINEAR CANONICAL CORRELATION ANALYSIS FOR VOICE CONVERSION BASED ON GAUSSIAN MIXTURE MODEL

ON USING NON-LINEAR CANONICAL CORRELATION ANALYSIS FOR VOICE CONVERSION BASED ON GAUSSIAN MIXTURE MODEL
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摘要 Voice conversion algorithm aims to provide high level of similarity to the target voice with an acceptable level of quality.The main object of this paper was to build a nonlinear relationship between the parameters for the acoustical features of source and target speaker using Non-Linear Canonical Correlation Analysis(NLCCA) based on jointed Gaussian mixture model.Speaker indi-viduality transformation was achieved mainly by altering vocal tract characteristics represented by Line Spectral Frequencies(LSF).To obtain the transformed speech which sounded more like the target voices,prosody modification is involved through residual prediction.Both objective and subjective evaluations were conducted.The experimental results demonstrated that our proposed algorithm was effective and outperformed the conventional conversion method utilized by the Minimum Mean Square Error(MMSE) estimation. Voice conversion algorithm aims to provide high level of similarity to the target voice with an acceptable level of quality. The main object of this paper was to build a nonlinear relationship between the parameters for the acoustical features of source and target speaker using Non-Linear Canonical Correlation Analysis (NLCCA) based on jointed Gaussian mixture model. Speaker indi- viduality transformation was achieved mainly by altering vocal tract characteristics represented by Line Spectral Frequencies (LSF). To obtain the transformed speech which sounded more like the target voices, prosody modification is involved through residual prediction. Both objective and subjective evaluations were conducted. The experimental results demonstrated that our proposed algorithm was effective and outperformed the conventional conversion method utilized by the Minimum Mean Square Error (MMSE) estimation.
出处 《Journal of Electronics(China)》 2010年第1期1-7,共7页 电子科学学刊(英文版)
基金 Supported by the National High Technology Research and Development Program of China (863 Program,No.2006AA010102)
关键词 Speech processing Voice conversion Non-Linear Canonical Correlation Analysis(NLCCA) Gaussian Mixture Model(GMM) Speech processing Voice conversion Non-Linear Canonical Correlation Analysis (NLCCA) Gaussian Mixture Model (GMM)
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参考文献10

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