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Scalable Controllable Accented TTS

Scalable Controllable Accented TTS

来源:Arxiv_logoArxiv
英文摘要

We tackle the challenge of scaling accented TTS systems, expanding their capabilities to include much larger amounts of training data and a wider variety of accent labels, even for accents that are poorly represented or unlabeled in traditional TTS datasets. To achieve this, we employ two strategies: 1. Accent label discovery via a speech geolocation model, which automatically infers accent labels from raw speech data without relying solely on human annotation; 2. Timbre augmentation through kNN voice conversion to increase data diversity and model robustness. These strategies are validated on CommonVoice, where we fine-tune XTTS-v2 for accented TTS with accent labels discovered or enhanced using geolocation. We demonstrate that the resulting accented TTS model not only outperforms XTTS-v2 fine-tuned on self-reported accent labels in CommonVoice, but also existing accented TTS benchmarks.

Henry Li Xinyuan、Zexin Cai、Ashi Garg、Kevin Duh、Leibny Paola García-Perera、Sanjeev Khudanpur、Nicholas Andrews、Matthew Wiesner

语言学

Henry Li Xinyuan,Zexin Cai,Ashi Garg,Kevin Duh,Leibny Paola García-Perera,Sanjeev Khudanpur,Nicholas Andrews,Matthew Wiesner.Scalable Controllable Accented TTS[EB/OL].(2025-08-10)[2025-08-24].https://arxiv.org/abs/2508.07426.点此复制

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