A Pulse Model in Log-domain for a Uniform Synthesizer

G. Degottex, P. Lanchantin, M. Gales
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引用次数: 15

Abstract

The quality of the vocoder plays a crucial role in the performance of parametric speech synthesis systems. In order to improve the vocoder quality, it is necessary to reconstruct as much of the perceived components of the speech signal as possible. In this paper, we first show that the noise component is currently not accurately modelled in the widely used STRAIGHT vocoder, thus, limiting the voice range that can be covered and also limiting the overall quality. In order to motivate a new, alternative, approach to this issue, we present a new synthesizer, which uses a uniform representation for voiced and unvoiced segments. This synthesizer has also the advantage of using a simple signal model compared to other approaches, thus offering a convenient and controlled alternative for future developments. Experiments analysing the synthesis quality of the noise component shows improved speech reconstruction using the suggested synthesizer compared to STRAIGHT. Additionally an experiment about analysis/resynthesis shows that the suggested synthesizer solves some of the issues of another uniform vocoder, Harmonic Model plus Phase Distortion (HMPD). In text-to-speech synthesis, it outperforms HMPD and exhibits a similar, or only slightly worse, quality to STRAIGHT’s quality, which is encouraging for a new vocoding approach.
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均匀合成器的对数域脉冲模型
声码器的质量对参数化语音合成系统的性能起着至关重要的作用。为了提高声码器的质量,有必要尽可能多地重建语音信号的感知分量。在本文中,我们首先表明,在广泛使用的STRAIGHT声码器中,噪声成分目前没有准确地建模,从而限制了可以覆盖的语音范围,也限制了整体质量。为了激发一种新的替代方法来解决这个问题,我们提出了一种新的合成器,它对浊音和非浊音片段使用统一的表示。与其他方法相比,该合成器还具有使用简单信号模型的优点,从而为未来的发展提供了方便和可控的替代方案。实验分析了噪声分量的合成质量,结果表明与STRAIGHT相比,该合成器的语音重建效果更好。此外,一个关于分析/再合成的实验表明,该合成器解决了另一种均匀声码器谐波模型加相位失真(HMPD)的一些问题。在文本到语音的合成方面,它的表现优于HMPD,并且表现出与STRAIGHT的质量相似或略差的质量,这对于一种新的语音编码方法来说是令人鼓舞的。
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