Interspeech 2023 2023
DOI: 10.21437/interspeech.2023-1301
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Pruning Self-Attention for Zero-Shot Multi-Speaker Text-to-Speech

Abstract: For personalized speech generation, a neural text-to-speech (TTS) model must be successfully implemented with limited data from a target speaker. To this end, the baseline TTS model needs to be amply generalized to out-of-domain data (i.e., target speaker's speech). However, approaches to address this outof-domain generalization problem in TTS have yet to be thoroughly studied. In this work, we propose an effective pruning method for a transformer known as sparse attention, to improve the TTS model's generaliz… Show more

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