Emphasized speech synthesis based on hidden Markov models

Kumiko Morizane, Keigo Nakamura, T. Toda, H. Saruwatari, K. Shikano
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引用次数: 21

Abstract

This paper presents a statistical approach to synthesizing emphasized speech based on hidden Markov models (HMMs). Context-dependent HMMs are trained using emphasized speech data uttered by intentionally emphasizing an arbitrary accentual phrase in a sentence. To model acoustic characteristics of emphasized speech, new contextual factors describing an emphasized accentual phrase are additionally considered in model training. Moreover, to build HMMs for synthesizing both normal speech and emphasized speech, we investigate two training methods; one is training of individual models for normal and emphasized speech using each of these two types of speech data separately; and the other is training of a mixed model using both of them simultaneously. The experimental results demonstrate that 1) HMM-based speech synthesis is effective for synthesizing emphasized speech and 2) the mixed model allows a more compact HMM set generating more naturally sounding but slightly less emphasized speech compared with the individual models.
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重点介绍了基于隐马尔可夫模型的语音合成
提出了一种基于隐马尔可夫模型(hmm)的强调语音合成的统计方法。上下文相关hmm是通过有意地强调句子中的任意重音短语而发出的强调语音数据来训练的。为了模拟强调语音的声学特征,在模型训练中还考虑了描述强调重音短语的新上下文因素。此外,为了构建能够综合正常语音和强调语音的hmm,我们研究了两种训练方法;一种是分别使用这两种类型的语音数据训练正常语音和强调语音的单独模型;另一种是同时使用这两种方法来训练混合模型。实验结果表明:1)基于HMM的语音合成对于合成重音语音是有效的;2)与单个模型相比,混合模型使HMM集更紧凑,生成的语音听起来更自然,但重音程度略低。
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