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Semi-Supervised Generative Modeling for Controllable Speech Synthesis

3 October 2019
Raza Habib
Soroosh Mariooryad
Matt Shannon
Eric Battenberg
RJ Skerry-Ryan
Daisy Stanton
David Kao
Tom Bagby
    BDL
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Abstract

We present a novel generative model that combines state-of-the-art neural text-to-speech (TTS) with semi-supervised probabilistic latent variable models. By providing partial supervision to some of the latent variables, we are able to force them to take on consistent and interpretable purposes, which previously hasn't been possible with purely unsupervised TTS models. We demonstrate that our model is able to reliably discover and control important but rarely labelled attributes of speech, such as affect and speaking rate, with as little as 1% (30 minutes) supervision. Even at such low supervision levels we do not observe a degradation of synthesis quality compared to a state-of-the-art baseline. Audio samples are available on the web.

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