Accent Normalization Using Self-Supervised Discrete Tokens with Non-Parallel Data
Audio and Speech Processing
2025-07-24 v1 Sound
Abstract
Accent normalization converts foreign-accented speech into native-like speech while preserving speaker identity. We propose a novel pipeline using self-supervised discrete tokens and non-parallel training data. The system extracts tokens from source speech, converts them through a dedicated model, and synthesizes the output using flow matching. Our method demonstrates superior performance over a frame-to-frame baseline in naturalness, accentedness reduction, and timbre preservation across multiple English accents. Through token-level phonetic analysis, we validate the effectiveness of our token-based approach. We also develop two duration preservation methods, suitable for applications such as dubbing.
Cite
@article{arxiv.2507.17735,
title = {Accent Normalization Using Self-Supervised Discrete Tokens with Non-Parallel Data},
author = {Qibing Bai and Sho Inoue and Shuai Wang and Zhongjie Jiang and Yannan Wang and Haizhou Li},
journal= {arXiv preprint arXiv:2507.17735},
year = {2025}
}
Comments
Accepted to INTERSPEECH 2025