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BitTTS: Highly Compact Text-to-Speech Using 1.58-bit Quantization and Weight Indexing

arXiv:2506.03515 - [arXiv,PDF]
Authors
  • Name
    Masaya Kawamura
  • Name
    Takuya Hasumi
  • Name
    Yuma Shirahata
  • Name
    Ryuichi Yamamoto
  • Affiliation
    Department of Environmental Science, University of Tokyo
  • Affiliation
    Institute of Atmospheric and Oceanic Science, Kyoto University
  • Affiliation
    Graduate School of Science, Osaka University
  • Affiliation
    Faculty of Science, Hokkaido University
This paper proposes a highly compact, lightweight text-to-speech (TTS) model for on-device applications. To reduce the model size, the proposed model introduces two techniques. First, we introduce quantization-aware training (QAT), which quantizes model parameters during training to as low as 1.58-bit. In this case, most of 32-bit model parameters are quantized to ternary values {-1, 0, 1}. Second, we propose a method named weight indexing. In this method, we save a group of 1.58-bit weights as a single int8 index. This allows for efficient storage of model parameters, even on hardware that treats values in units of 8-bit. Experimental results demonstrate that the proposed method achieved 83 % reduction in model size, while outperforming the baseline of similar model size without quantization in synthesis quality.