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Noise-robust zero-shot text-to-speech synthesis conditioned on self-supervised speech-representation model with adapters

10 January 2024
Kenichi Fujita
Hiroshi Sato
Takanori Ashihara
Hiroki Kanagawa
Marc Delcroix
Takafumi Moriya
Yusuke Ijima
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Abstract

The zero-shot text-to-speech (TTS) method, based on speaker embeddings extracted from reference speech using self-supervised learning (SSL) speech representations, can reproduce speaker characteristics very accurately. However, this approach suffers from degradation in speech synthesis quality when the reference speech contains noise. In this paper, we propose a noise-robust zero-shot TTS method. We incorporated adapters into the SSL model, which we fine-tuned with the TTS model using noisy reference speech. In addition, to further improve performance, we adopted a speech enhancement (SE) front-end. With these improvements, our proposed SSL-based zero-shot TTS achieved high-quality speech synthesis with noisy reference speech. Through the objective and subjective evaluations, we confirmed that the proposed method is highly robust to noise in reference speech, and effectively works in combination with SE.

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