Researchers have developed TokAN, a novel framework for accent normalization that converts non-native accented speech into a standard accent while preserving speaker identity. Unlike previous methods that require parallel L1-L2 speech data or suffer from quality degradation with synthesized targets, TokAN utilizes self-supervised discrete speech tokens. The system employs an autoregressive encoder-decoder model for token-to-token conversion and incorporates reinforcement learning for post-training optimization, further reducing word error rates. Experiments on seven English accents show TokAN significantly outperforms existing baselines in accent reduction and intelligibility. AI
IMPACT This research advances speech processing capabilities, potentially improving accessibility and usability of voice technologies for non-native speakers.
RANK_REASON Research paper detailing a new method for accent normalization. [lever_c_demoted from research: ic=1 ai=1.0]
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