中文

DELTA-TTS: Adapting Autoregressive Model into Diffusion Language Model for Text-to-Speech

音频与语音处理 2026-07-05 v1 计算与语言

摘要

Autoregressive (AR) text-to-speech (TTS) models generate discrete speech tokens sequentially, which makes inference slow and can degrade robustness by propagating local errors and hallucinations. This limitation stems from their left-to-right AR commitment: each token must be determined before future speech-token context is available. However, such ordering is not an inherent requirement for TTS, as the full input text is available before synthesis. In this paper, we introduce DELTA-TTS, a lightweight LoRA-based adaptation framework that converts a pretrained AR TTS model into a discrete diffusion language model (dLLM) for confidence-ordered speech-token decoding. To better capture the local structure of speech, DELTA-TTS incorporates a convolution module that injects local acoustic context, together with a 1/t1/t-weighted training objective and a time-shifted inference schedule that defer low-confidence positions to later steps. Trained on only 585585 hours of LibriTTS, DELTA-TTS achieves a 1.75%\textbf{1.75}\% WER on Seed-TTS test-en, outperforming its AR backbone while generating tokens 3.3×\textbf{3.3}\times faster. Further analysis shows that DELTA-TTS produces sharper text--speech alignment, increases overall decoding confidence, and mitigates hallucinations observed in AR generation.

引用

@article{arxiv.2607.04140,
  title  = {DELTA-TTS: Adapting Autoregressive Model into Diffusion Language Model for Text-to-Speech},
  author = {Junwon Moon and Seungbeom Kim and Yejin Lee and Hoseong Ahn and Sewoong Park and Heeseung Kim and Kyuhong Shim},
  journal= {arXiv preprint arXiv:2607.04140},
  year   = {2026}
}

备注

ICML 2026 SPIGM Workshop