Data augmentation via voice conversion (VC) has been successfully applied to low-resource expressive text-to-speech (TTS) when only neutral data for the target speaker are available. Although the quality of VC is crucial for this approach, it is challenging to learn a stable VC model because the amount of data is limited in low-resource scenarios, and highly expressive speech has large acoustic variety. To address this issue, we propose a novel data augmentation method that combines pitch-shifting and VC techniques. Because pitch-shift data augmentation enables the coverage of a variety of pitch dynamics, it greatly stabilizes training for both VC and TTS models, even when only 1,000 utterances of the target speaker's neutral data are available. Subjective test results showed that a FastSpeech 2-based emotional TTS system with the proposed method improved naturalness and emotional similarity compared with conventional methods.
翻译:在只有目标发言者的中性数据的情况下,通过语音转换(VC)增加数据的做法已成功地应用于低资源表达式文本到语音(TTS),只有目标发言者的中性数据。虽然VC的质量对这种方法至关重要,但是要学习稳定的VC模式却具有挑战性,因为低资源情景下的数据数量有限,而且高度表达式的言论具有巨大的声学多样性。为了解决这一问题,我们提议了一种新的数据增强方法,将投放式转换和VC技术结合起来。由于投放式数据增强能够覆盖各种投放动态,它大大稳定了对VC和TTS模型的培训,即使只有1 000个目标发言者的中性数据的发音。主观测试结果表明,快速语音2基情感TTS系统与拟议方法的自然性和与传统方法的情感相似性得到了改善。