Gerard I. Gállego, Roy Fejgin, Chunghsin Yeh, Xiaoyu Liu, Gautam Bhattacharya
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Single-stage TTS with Masked Audio Token Modeling and Semantic Knowledge Distillation
Audio token modeling has become a powerful framework for speech synthesis,
with two-stage approaches employing semantic tokens remaining prevalent. In
this paper, we aim to simplify this process by introducing a semantic knowledge
distillation method that enables high-quality speech generation in a single
stage. Our proposed model improves speech quality, intelligibility, and speaker
similarity compared to a single-stage baseline. Although two-stage systems
still lead in intelligibility, our model significantly narrows the gap while
delivering comparable speech quality. These findings showcase the potential of
single-stage models to achieve efficient, high-quality TTS with a more compact
and streamlined architecture.