To scale neural speech synthesis to various real-world languages, we present a multilingual end-to-end framework that maps byte inputs to spectrograms, thus allowing arbitrary input scripts. Besides strong results on 40+ languages, the framework demonstrates capabilities to adapt to new languages under extreme low-resource and even few-shot scenarios of merely 40s transcribed recording, without the need of per-language resources like lexicon, extra corpus, auxiliary models, or linguistic expertise, thus ensuring scalability. While it retains satisfactory intelligibility and naturalness matching rich-resource models. Exhaustive comparative and ablation studies are performed to reveal the potential of the framework for low-resource languages. Furthermore, we propose a novel method to extract language-specific sub-networks in a multilingual model for a better understanding of its mechanism.
Multilingual Byte2Speech Models for Scalable Low-resource Speech Synthesis
A multilingual end-to-end speech synthesis framework achieves robust performance across 40+ languages and adapts to low-resource scenarios using minimal data.
- Year
- 2021
- Venue
- arXiv 2021
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2103.03541v2ARXIV-DEFAULT
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