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Mixture Density Network for Phone-Level Prosody Modelling in Speech Synthesis

2021-02-01 14:00:16
Chenpeng Du, Kai Yu

Abstract

Recent researches on both utterance-level and phone-level prosody modelling successfully improve the voice quality and naturalness in text-to-speech synthesis. However, most of them model the prosody with a unimodal distribution such like a single Gaussian, which is not reasonable enough. In this work, we focus on phone-level prosody modelling where we introduce a Gaussian mixture model(GMM) based mixture density network. Our experiments on the LJSpeech dataset demonstrate that GMM can better model the phone-level prosody than a single Gaussian. The subjective evaluations suggest that our method not only significantly improves the prosody diversity in synthetic speech without the need of manual control, but also achieves a better naturalness. We also find that using the additional mixture density network has only very limited influence on inference speed.

Abstract (translated)

URL

https://arxiv.org/abs/2102.00851

PDF

https://arxiv.org/pdf/2102.00851.pdf


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