Pre-training Long Short-term Memory neural networks for efficient regression in artificial speech postfiltering

 

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Detalles Bibliográficos
Autor: Coto Jiménez, Marvin
Formato: comunicación de congreso
Fecha de Publicación:2018
Descripción:Several attempts to enhance statistical parametric speech synthesis have contemplated deep-learning-based postfilters, which learn to perform a mapping of the synthetic speech parameters to the natural ones, reducing the gap between them. In this paper, we introduce a new pre-training approach for neural networks, applied in LSTM-based postfilters for speech synthesis, with the objective of enhancing the quality of the synthesized speech in a more efficient manner. Our approach begins with an auto-regressive training of one LSTM network, whose is used as an initialization for postfilters based on a denoising autoencoder architecture. We show the advantages of this initialization on a set of multi-stream postfilters, which encompass a collection of denoising autoencoders for the set of MFCC and fundamental frequency parameters of the artificial voice. Results show that the initialization succeeds in lowering the training time of the LSTM networks and achieves better results in enhancing the statistical parametric speech in most cases, when compared to the common random-initialized approach of the networks.
País:Kérwá
Institución:Universidad de Costa Rica
Repositorio:Kérwá
Lenguaje:Inglés
OAI Identifier:oai:kerwa.ucr.ac.cr:10669/86291
Acceso en línea:https://ieeexplore.ieee.org/document/8464204
https://hdl.handle.net/10669/86291
Palabra clave:Deep learning
Denoising autoencoders
Long short-term memory (LSTM)
Machine learning
Signal processing
Speech synthesis