基于贝叶斯混合概率线性回归和动态核特征的语音转换

Na Li, Y. Qiao
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引用次数: 0

摘要

语音转换可以表示为找到将源说话人的特征转换为目标说话人的特征的映射函数。基于高斯混合模型(Gaussian mixture model, GMM)的转换技术[1,2]因其有效性和高效性在语音转换中得到了广泛的应用。在最近的一项工作[3]中,我们将基于gmm的映射推广到混合概率线性回归(MPLR)。但是,基于GMM的映射和基于MPLR的映射都存在过拟合问题,特别是在训练语音稀疏的情况下,两者都忽略了语音特征之间固有的时间依赖性。本文通过引入动态核特征并对MPLR进行贝叶斯分析来解决这一问题。动态核特征是通过当前帧、前帧和下帧的核变换来计算的,它可以同时模拟特征中的非线性和动态。通过在核变换参数上引入先验,进一步发展了极大后验推理来缓解过拟合问题。实验结果表明,与基于MPLR的模型相比,所提出的方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Voice conversion using Bayesian mixture of Probabilistic Linear Regressions and dynamic kernel features
Voice conversion can be formulated as finding a mapping function which transforms the features of a source speaker to those of the target speaker. Gaussian mixture model (GMM)-based conversion techniques [1, 2] have been widely used in voice conversion due to its effectiveness and efficiency. In a recent work [3], we generalized GMM-based mapping to Mixture of Probabilistic Linear Regressions (MPLR). But both GMM based mapping and MPLR are subjected to overfitting problem especially when the training utterances are sparse,and both ignore the inherent time-dependency among speech features. This paper addresses this problem by introducing dynamic kernel features and conducting Bayesian analysis for MPLR. The dynamic kernel features are calculated as kernel transformations of current, previous and next frames, which can model both the nonlinearities and dynamics in the features. We further develop Maximum a Posterior (MAP) inference to alleviate the overfitting problem by introducing prior on the parameters of kernel transformation. Our experimental results exhibit that the proposed methods achieve better performance compared to the MPLR based model.
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