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arxiv: 2011.02252 · v1 · pith:4CMNA52Enew · submitted 2020-11-04 · 📡 eess.AS · cs.CL· cs.SD

Prosodic Representation Learning and Contextual Sampling for Neural Text-to-Speech

classification 📡 eess.AS cs.CLcs.SD
keywords prosodictextavailablebaselinecontextualdistributionimprovementneural
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In this paper, we introduce Kathaka, a model trained with a novel two-stage training process for neural speech synthesis with contextually appropriate prosody. In Stage I, we learn a prosodic distribution at the sentence level from mel-spectrograms available during training. In Stage II, we propose a novel method to sample from this learnt prosodic distribution using the contextual information available in text. To do this, we use BERT on text, and graph-attention networks on parse trees extracted from text. We show a statistically significant relative improvement of $13.2\%$ in naturalness over a strong baseline when compared to recordings. We also conduct an ablation study on variations of our sampling technique, and show a statistically significant improvement over the baseline in each case.

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