Czech Speech Synthesis with Generative Neural Vocoder

Date issued

2019

Journal Title

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Volume Title

Publisher

Springer

Abstract

In recent years, new neural architectures for generating high-quality synthetic speech on a per-sample basis were introduced. We describe our application of statistical parametric speech synthesis based on LSTM neural networks combined with a generative neural vocoder for the Czech language. We used a traditional LSTM architecture for generating vocoder parametrization from linguistic features. We replaced a standard vocoder with a WaveRNN neural network. We conducted a MUSHRA listening test to compare the proposed approach with the unit selection and LSTM-based parametric speech synthesis utilizing a standard vocoder. In contrast with our previous work, we managed to outperform a well-tuned unit selection TTS system by a great margin on both professional and amateur voices.

Description

Subject(s)

Citation

VÍT, J., HANZLÍČEK, Z., MATOUŠEK, J. Czech Speech Synthesis with Generative Neural Vocoder. In: Text, Speech, and Dialogue 22nd International Conference, TSD 2019, Ljubljana,Slovenia, September 11-13, 2019, Proceedings. Cham: Springer, 2019. s. 307-315. ISBN 978-3-030-27946-2 , ISSN 0302-9743.
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