Papers

ExcitGlow: Improving a WaveGlow-based Neural Vocoder with Linear Prediction Analysis

International Conference
2016~2020
작성자
한혜원
작성일
2020-12-01 16:59
조회
1705
Authors : Suhyeon Oh, Hyungseob Lim, Kyungguen Byun, Min-Jae Hwang, Eunwoo Song, Hong-Goo Kang

Year : 2020

Publisher / Conference : APSIPA (*awarded Best Paper)

Research area : Speech Signal Processing, Text-to-Speech

Presentation/Publication date : 2020.12.10

Related project : Embedded Neural TTS

Presentation : Oral

In this paper we propose ExcitGlow, a vocoder that incorporates the source-filter model of voice production theory into a flow-based deep generative model. By targeting the distribution of the excitation signal instead of the speech waveform itself, we significantly reduce the size of the flow-based generative model. To further reduce the number of parameters, we apply a parameter sharing technique in which a single affine coupling layer is used for several flow layers. To avoid quality degradation, we also introduce a closed-loop training framework to optimize the flow model for both the speech and excitation signal generation processes. Specifically, we choose negative log-likelihood (NLL) loss for the excitation signal and multi-resolution spectral distance for the speech signal. As a result, we are able to reduce the model size from 87.73M to 15.60M parameters while maintaining the perceptual quality of synthesized speech.

* Awarded Best paper in APSIPA 2020

전체 355
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