论文标题

探索端到端合成器Forzero Resource Speech Challenge 2020

Exploration of End-to-end Synthesisers forZero Resource Speech Challenge 2020

论文作者

S, Karthik Pandia D, Prakash, Anusha, Kumar, Mano Ranjith, Murthy, Hema A

论文摘要

看不见语言的口语对话系统称为零资源语音。这对于开发数字资源低的语言的应用程序尤其有益。零资源语音综合是在没有转录的情况下构建文本到语音(TTS)模型的任务。在这项工作中,语音被建模为一系列瞬态和稳态的声学单元,并且通过迭代训练发现了一组独特的声学单元。使用声学单元序列,训练了TTS模型。这项工作的主要目标是提高零资源TTS系统的合成质量。提出了四个不同的系统。所有系统均由三个阶段组成:单位发现,然后是单元序列到频谱图映射,最后是频谱图到语音反演。提出了对光谱图映射阶段的修改。这些修改包括使用X-矢量来改进映射,两阶段学习和特定性别的建模来训练语音数据的映射。在2020年Zerospeech 2020挑战中对拟议系统的评估表明,可以实现相当好的质量综合。

A Spoken dialogue system for an unseen language is referred to as Zero resource speech. It is especially beneficial for developing applications for languages that have low digital resources. Zero resource speech synthesis is the task of building text-to-speech (TTS) models in the absence of transcriptions. In this work, speech is modelled as a sequence of transient and steady-state acoustic units, and a unique set of acoustic units is discovered by iterative training. Using the acoustic unit sequence, TTS models are trained. The main goal of this work is to improve the synthesis quality of zero resource TTS system. Four different systems are proposed. All the systems consist of three stages: unit discovery, followed by unit sequence to spectrogram mapping, and finally spectrogram to speech inversion. Modifications are proposed to the spectrogram mapping stage. These modifications include training the mapping on voice data, using x-vectors to improve the mapping, two-stage learning, and gender-specific modelling. Evaluation of the proposed systems in the Zerospeech 2020 challenge shows that quite good quality synthesis can be achieved.

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