Several solutions for lightweight TTS have shown promising results. Still, they either rely on a hand-crafted design that reaches non-optimum size or use a neural architecture search but often suffer training costs. We present Nix-TTS, a lightweight TTS achieved via knowledge distillation to a high-quality yet large-sized, non-autoregressive, and end-to-end (vocoder-free) TTS teacher model. Specifically, we offer module-wise distillation, enabling flexible and independent distillation to the encoder and decoder module. The resulting Nix-TTS inherited the advantageous properties of being non-autoregressive and end-to-end from the teacher, yet significantly smaller in size, with only 5.23M parameters or up to 89.34% reduction of the teacher model; it also achieves over 3.04x and 8.36x inference speedup on Intel-i7 CPU and Raspberry Pi 3B respectively and still retains a fair voice naturalness and intelligibility compared to the teacher model. We provide pretrained models and audio samples of Nix-TTS.
Nix-TTS: Lightweight and End-to-End Text-to-Speech via Module-wise Distillation
Nix-TTS, a lightweight TTS system, uses module-wise knowledge distillation from a non-autoregressive, end-to-end teacher model to achieve reduced size and increased inference speed without compromising voice naturalness.
- Year
- 2022
- Venue
- arXiv 2022
- Authors
- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2203.15643v2ARXIV-DEFAULT
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