Improving Unsupervised Style Transfer in end-to-end Speech Synthesis with end-to-end Speech Recognition

Da-Rong Liu, Chi-Yu Yang, Szu-Lin Wu, Hung-yi Lee
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引用次数: 17

Abstract

End-to-end TTS model can directly take an utterance as reference, and generate speech from the text with prosody and speaker characteristics similar to the reference utterance. Ideally, the transcription of reference utterance does not need to match the text to be synthesized, so unsupervised style transfer can be achieved. However, in the previous model, because only the matched text and speech are used in training, given unmatched text and speech during testing would make the model synthesize blurry speech. In this paper, we propose to mitigate the problem by using the unmatched text and speech during training, and using the ASR accuracy of an end-to-end ASR model to guide the training procedure. The experimental results show that with the guidance of end-to-end ASR, both the ASR accuracy (objective evaluation) and the listener preference (subjective evaluation) of the speech generated by TTS model are improved. Moreover, we propose attention consistency loss as regularization, which is shown to accelerate the training.
用端到端语音识别改进端到端语音合成中的无监督风格迁移
端到端TTS模型可以直接将一个话语作为参考,从文本中生成与参考话语具有相似韵律和说话人特征的语音。理想情况下,参考话语的转录不需要与文本匹配来合成,因此可以实现无监督风格迁移。但是在之前的模型中,由于训练时只使用匹配的文本和语音,所以在测试时给出不匹配的文本和语音会使模型合成模糊的语音。在本文中,我们提出在训练过程中使用不匹配的文本和语音,并使用端到端ASR模型的ASR准确性来指导训练过程,以缓解这一问题。实验结果表明,在端到端ASR的指导下,TTS模型生成的语音的ASR精度(客观评价)和听者偏好(主观评价)都得到了提高。此外,我们提出了将注意力一致性损失作为正则化的方法,该方法被证明可以加速训练。
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