AI RESEARCH
Controllable Accent Normalization via Discrete Diffusion
arXiv CS.AI
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ArXi:2603.14275v1 Announce Type: cross Existing accent normalization methods do not typically offer control over accent strength, yet many applications-such as language learning and dubbing-require tunable accent retention. We propose DLM-AN, a controllable accent normalization system built on masked discrete diffusion over self-supervised speech tokens. A Common Token Predictor identifies source tokens that likely encode native pronunciation; these tokens are selectively reused to initialize the reverse diffusion process.