ISCA Archive Interspeech 2023
ISCA Archive Interspeech 2023

GenerTTS: Pronunciation Disentanglement for Timbre and Style Generalization in Cross-Lingual Text-to-Speech

Yahuan Cong, Haoyu Zhang, Haopeng Lin, Shichao Liu, Chunfeng Wang, Yi Ren, Xiang Yin, Zejun Ma

Cross-lingual timbre and style generalizable text-to-speech (TTS) aims to synthesize speech with a specific reference tim- bre or style that is never trained in the target language. It encounters the following challenges: 1) timbre and pronun- ciation are correlated since multilingual speech of a specific speaker is usually hard to obtain; 2) style and pronunciation are mixed because the speech style contains language-agnostic and language-specific parts. To address these challenges, we pro- pose GenerTTS, which mainly includes the following works: 1) we elaborately design a HuBERT-based information bottleneck to disentangle timbre and pronunciation/style; 2) we minimize the mutual information between style and language to discard the language-specific information in the style embedding. The experiments indicate that GenerTTS outperforms baseline sys- tems in terms of style similarity and pronunciation accuracy, and enables cross-lingual timbre and style generalization.