Ensemble prosody prediction for expressive speech synthesis
Abstract
Generating expressive speech with rich and varied prosody continues to be a challenge for Text-to-Speech. Most efforts have focused on sophisticated neural architectures intended to better model the data distribution. Yet, in evaluations it is generally found that no single model is preferred for all input texts. This suggests an approach that has rarely been used before for Text-to-Speech: an ensemble of models. We apply ensemble learning to prosody prediction. We construct simple ensembles of prosody predictors by varying either model architecture or model parameter values. To automatically select amongst the models in the ensemble when performing Text-to-Speech, we propose a novel, and computationally trivial, variance-based criterion. We demonstrate that even a small ensemble of prosody predictors yields useful diversity, which, combined with the proposed selection criterion, outperforms any individual model from the ensemble.
Cite
@article{arxiv.2304.00714,
title = {Ensemble prosody prediction for expressive speech synthesis},
author = {Tian Huey Teh and Vivian Hu and Devang S Ram Mohan and Zack Hodari and Christopher G. R. Wallis and Tomás Gomez Ibarrondo and Alexandra Torresquintero and James Leoni and Mark Gales and Simon King},
journal= {arXiv preprint arXiv:2304.00714},
year = {2023}
}
Comments
ICASSP 2023