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What the Future Brings: Investigating the Impact of Lookahead for Incremental Neural TTS (2009.02035v1)

Published 4 Sep 2020 in eess.AS and cs.CL

Abstract: In incremental text to speech synthesis (iTTS), the synthesizer produces an audio output before it has access to the entire input sentence. In this paper, we study the behavior of a neural sequence-to-sequence TTS system when used in an incremental mode, i.e. when generating speech output for token n, the system has access to n + k tokens from the text sequence. We first analyze the impact of this incremental policy on the evolution of the encoder representations of token n for different values of k (the lookahead parameter). The results show that, on average, tokens travel 88% of the way to their full context representation with a one-word lookahead and 94% after 2 words. We then investigate which text features are the most influential on the evolution towards the final representation using a random forest analysis. The results show that the most salient factors are related to token length. We finally evaluate the effects of lookahead k at the decoder level, using a MUSHRA listening test. This test shows results that contrast with the above high figures: speech synthesis quality obtained with 2 word-lookahead is significantly lower than the one obtained with the full sentence.

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Authors (4)
  1. Brooke Stephenson (3 papers)
  2. Laurent Besacier (76 papers)
  3. Laurent Girin (40 papers)
  4. Thomas Hueber (14 papers)
Citations (12)

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