English

DEX-TTS: Diffusion-based EXpressive Text-to-Speech with Style Modeling on Time Variability

Audio and Speech Processing 2024-06-28 v1 Artificial Intelligence

Abstract

Expressive Text-to-Speech (TTS) using reference speech has been studied extensively to synthesize natural speech, but there are limitations to obtaining well-represented styles and improving model generalization ability. In this study, we present Diffusion-based EXpressive TTS (DEX-TTS), an acoustic model designed for reference-based speech synthesis with enhanced style representations. Based on a general diffusion TTS framework, DEX-TTS includes encoders and adapters to handle styles extracted from reference speech. Key innovations contain the differentiation of styles into time-invariant and time-variant categories for effective style extraction, as well as the design of encoders and adapters with high generalization ability. In addition, we introduce overlapping patchify and convolution-frequency patch embedding strategies to improve DiT-based diffusion networks for TTS. DEX-TTS yields outstanding performance in terms of objective and subjective evaluation in English multi-speaker and emotional multi-speaker datasets, without relying on pre-training strategies. Lastly, the comparison results for the general TTS on a single-speaker dataset verify the effectiveness of our enhanced diffusion backbone. Demos are available here.

Keywords

Cite

@article{arxiv.2406.19135,
  title  = {DEX-TTS: Diffusion-based EXpressive Text-to-Speech with Style Modeling on Time Variability},
  author = {Hyun Joon Park and Jin Sob Kim and Wooseok Shin and Sung Won Han},
  journal= {arXiv preprint arXiv:2406.19135},
  year   = {2024}
}

Comments

Preprint

R2 v1 2026-06-28T17:21:16.528Z