基于频率扭曲的语音转换稀疏表示

Xiaohai Tian, Zhizheng Wu, Siu Wa Lee, Nguyen Quy Hy, Chng Eng Siong, M. Dong
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引用次数: 21

摘要

提出了一种基于加权频率扭曲的稀疏表示框架。该方法首先对每个源-目标频谱对计算帧相关的翘曲函数和相应的频谱残差向量。在运行时转换时,源光谱被分解为训练数据中一组源光谱的线性组合。利用约束为稀疏的线性组合权矩阵对帧相关的扭曲函数和谱残差向量进行插值。这样,该方法既避免了GMM引起的统计平均,又保留了高质量转换语音的高分辨率频谱细节。在VOICES数据库上进行了实验。客观和主观结果均证实了所提方法的有效性。特别是,频谱失真从传统频率扭曲方法的5.55 dB降至5.0 dB。与最先进的基于gmm的转换与全局方差(GV)增强相比,我们的方法在AB偏好测试中达到了68.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse representation for frequency warping based voice conversion
This paper presents a sparse representation framework for weighted frequency warping based voice conversion. In this method, a frame-dependent warping function and the corresponding spectral residual vector are first calculated for each source-target spectrum pair. At runtime conversion, a source spectrum is factorised as a linear combination of a set of source spectra in the training data. The linear combination weight matrix, which is constrained to be sparse, is used to interpolate the frame-dependent warping functions and spectral residual vectors. In this way, the proposed method not only avoids the statistical averaging caused by GMM but also preserves the high-resolution spectral details for high-quality converted speech. Experiments are conducted on the VOICES database. Both objective and subjective results confirmed the effectiveness of the proposed method. In particular, the spectral distortion dropped from 5.55 dB of the conventional frequency warping approach to 5.0 dB of the proposed method. Compare to the state-of-the-art GMM-based conversion with global variance (GV) enhancement, our method achieved 68.5 % in an AB preference test.
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