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Main Authors: Lakshminarayana, Kishor Kayyar, Zalkow, Frank, Dittmar, Christian, Pia, Nicola, Habets, Emanuel A. P.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.05976
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author Lakshminarayana, Kishor Kayyar
Zalkow, Frank
Dittmar, Christian
Pia, Nicola
Habets, Emanuel A. P.
author_facet Lakshminarayana, Kishor Kayyar
Zalkow, Frank
Dittmar, Christian
Pia, Nicola
Habets, Emanuel A. P.
contents In recent years, several text-to-speech systems have been proposed to synthesize natural speech in zero-shot, few-shot, and low-resource scenarios. However, these methods typically require training with data from many different speakers. The speech quality across the speaker set typically is diverse and imposes an upper limit on the quality achievable for the low-resource speaker. In the current work, we achieve high-quality speech synthesis using as little as five minutes of speech from the desired speaker by augmenting the low-resource speaker data with noise and employing multiple sampling techniques during training. Our method requires only four high-quality, high-resource speakers, which are easy to obtain and use in practice. Our low-complexity method achieves improved speaker similarity compared to the state-of-the-art zero-shot method HierSpeech++ and the recent low-resource method AdapterMix while maintaining comparable naturalness. Our proposed approach can also reduce the data requirements for speech synthesis for new speakers and languages.
format Preprint
id arxiv_https___arxiv_org_abs_2501_05976
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Low-Resource Text-to-Speech Synthesis Using Noise-Augmented Training of ForwardTacotron
Lakshminarayana, Kishor Kayyar
Zalkow, Frank
Dittmar, Christian
Pia, Nicola
Habets, Emanuel A. P.
Audio and Speech Processing
In recent years, several text-to-speech systems have been proposed to synthesize natural speech in zero-shot, few-shot, and low-resource scenarios. However, these methods typically require training with data from many different speakers. The speech quality across the speaker set typically is diverse and imposes an upper limit on the quality achievable for the low-resource speaker. In the current work, we achieve high-quality speech synthesis using as little as five minutes of speech from the desired speaker by augmenting the low-resource speaker data with noise and employing multiple sampling techniques during training. Our method requires only four high-quality, high-resource speakers, which are easy to obtain and use in practice. Our low-complexity method achieves improved speaker similarity compared to the state-of-the-art zero-shot method HierSpeech++ and the recent low-resource method AdapterMix while maintaining comparable naturalness. Our proposed approach can also reduce the data requirements for speech synthesis for new speakers and languages.
title Low-Resource Text-to-Speech Synthesis Using Noise-Augmented Training of ForwardTacotron
topic Audio and Speech Processing
url https://arxiv.org/abs/2501.05976