Transfer tasks in text-to-speech (TTS) synthesis - where one or more aspects of the speech of one set of speakers is transferred to another set of speakers that do not feature these aspects originally - remains a challenging task. One of the challenges is that models that have high-quality transfer capabilities can have issues in stability, making them impractical for user-facing critical tasks. This paper demonstrates that transfer can be obtained by training a robust TTS system on data generated by a less robust TTS system designed for a high-quality transfer task; in particular, a CHiVE-BERT monolingual TTS system is trained on the output of a Tacotron model designed for accent transfer. While some quality loss is inevitable with this approach, experimental results show that the models trained on synthetic data this way can produce high quality audio displaying accent transfer, while preserving speaker characteristics such as speaking style.
翻译:文本到语音合成(TTS)中的任务转移任务——其中一组发言者的发言的一个或几个方面被转移到原先不具有这些方面特点的另外一组发言者——仍然是一项艰巨的任务,挑战之一是,具有高质量转让能力的模型可能具有稳定性问题,使其不切实际,无法完成以用户为主的关键任务。本文件表明,可以通过培训一个强大的TTS系统来获得转让,该系统涉及为高质量转让任务设计的较不健全的TTS系统所产生的数据;特别是,一个CHieve-BERTER单语TTTS系统就为口音转移设计的Tacotron模型的输出进行了培训。如果采用这种方法,某些质量损失是不可避免的,实验结果表明,经过培训的合成数据模型可以产生高质量的音频显示口音传输,同时保留语音风格等语音特征。