基于多重平均语音的语音合成

P. Lanchantin, M. Gales, Simon King, J. Yamagishi
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引用次数: 6

摘要

本文提出了一种基于平均语音模型(AVM)插值的统计参数语音合成系统的说话人自适应方法。最近的研究结果表明,适应语音的质量/自然程度取决于与用于说话者适应的平均语音模型的距离。这表明在精心选择的说话人群上训练了几个AVM,在适应过程中可以从中选择/插入更合适的AVM。在本文提出的方法中,一组avm(多avm)在不同的说话人簇上进行训练,这些说话人簇在根据元数据初始化的估计过程中迭代地重新分配。在适应过程中,多个AVM中的每个AVM首先适应目标说话人。从avm适应的手段,然后内插,以产生合成的最终扬声器适应的平均值。通过对不同地域口音的英国人语料库进行说话人适配,结果表明,适配后的声音合成语音的质量/自然度明显高于根据目标说话人特征选择的单因素独立AVM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple-average-voice-based speech synthesis
This paper describes a novel approach for the speaker adaptation of statistical parametric speech synthesis systems based on the interpolation of a set of average voice models (AVM). Recent results have shown that the quality/naturalness of adapted voices depends on the distance from the average voice model used for speaker adaptation. This suggests the use of several AVMs trained on carefully chosen speaker clusters from which a more suitable AVM can be selected/interpolated during the adaptation. In the proposed approach a set of AVMs, a multiple-AVM, is trained on distinct clusters of speakers which are iteratively re-assigned during the estimation process initialised according to metadata. During adaptation, each AVM from the multiple-AVM is first adapted towards the target speaker. The adapted means from the AVMs are then interpolated to yield the final speaker adapted mean for synthesis. It is shown, performing speaker adaptation on a corpus of British speakers with various regional accents, that the quality/naturalness of synthetic speech of adapted voices is significantly higher than when considering a single factor-independent AVM selected according to the target speaker characteristics.
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