基于小波分解的F0作为多任务学习的基于dnn的语音合成的辅助任务

M. Ribeiro, O. Watts, J. Yamagishi, R. Clark
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引用次数: 8

摘要

我们研究了两种基于小波的f0信号分解策略,以及它们作为使用多任务深度神经网络(MTL-DNN)进行语音合成的辅助任务的有效性。第一种分解策略对训练数据中的所有话语使用一组静态尺度。我们提出了第二种策略,其中母小波的尺度根据每个话语的频率动态调整。这种方法能够捕获与音节、单词、关键字组和短语单位相关的60种变体。该方法还将小波分量限制在先前实验显示的更自然的频率范围内。在多任务深度神经网络(mtl - dnn)中,这两种策略作为次要任务进行评估。结果表明,与基线系统相比,在表达性数据集上,使用多任务学习的系统有强烈的偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet-based decomposition of F0 as a secondary task for DNN-based speech synthesis with multi-task learning
We investigate two wavelet-based decomposition strategies of the f0 signal and their usefulness as a secondary task for speech synthesis using multi-task deep neural networks (MTL-DNN). The first decomposition strategy uses a static set of scales for all utterances in the training data. We propose a second strategy, where the scale of the mother wavelet is dynamically adjusted to the rate of each utterance. This approach is able to capture f0 variations related to the syllable, word, clitic-group, and phrase units. This method also constrains the wavelet components to be within the frequency range that previous experiments have shown to be more natural. These two strategies are evaluated as a secondary task in multi-task deep neural networks (MTL-DNNs). Results indicate that on an expressive dataset there is a strong preference for the systems using multi-task learning when compared to the baseline system.
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