Multi-output RNN-LSTM for multiple speaker speech synthesis with α-interpolation model

Santiago Pascual, A. Bonafonte
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引用次数: 10

Abstract

Deep Learning has been applied successfully to speech processing. In this paper we propose an architecture for speech synthesis using multiple speakers. Some hidden layers are shared by all the speakers, while there is a specific output layer for each speaker. Objective and perceptual experiments prove that this scheme produces much better results in comparison with sin- gle speaker model. Moreover, we also tackle the problem of speaker interpolation by adding a new output layer (a-layer) on top of the multi-output branches. An identifying code is injected into the layer together with acoustic features of many speakers. Experiments show that the a-layer can effectively learn to interpolate the acoustic features between speakers.
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基于α-插值模型的多输出RNN-LSTM多扬声器语音合成
深度学习已成功应用于语音处理。在本文中,我们提出了一种使用多个扬声器的语音合成架构。一些隐藏层由所有扬声器共享,而每个扬声器都有一个特定的输出层。客观实验和感知实验证明,与单说话人模型相比,该方案具有更好的效果。此外,我们还通过在多输出分支上添加新的输出层(a层)来解决扬声器插值问题。将识别代码与多个扬声器的声学特征一起注入该层。实验表明,a层可以有效地学习插值说话人之间的声学特征。
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