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Reducing Mismatch in Training of DNN-Based Glottal Excitation Models in a Statistical Parametric Text-to-Speech System

机译:在统计参数到语音系统中减少基于DNN的导光励磁模型的训练中的不匹配

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摘要

Neural network-based models that generate glottal excitation waveforms from acoustic features have been found to give improved quality in statistical parametric speech synthesis. Until now, however, these models have been trained separately from the acoustic model. This creates mismatch between training and synthesis, as the synthesized acoustic features used for the excitation model input differ from the original inputs, with which the model was trained on. Furthermore, due to the errors in predicting the vocal tract filter, the original excitation waveforms do not provide perfect reconstruction of the speech waveform even if predicted without error. To address these issues and to make the excitation model more robust against errors in acoustic modeling, this paper proposes two modifications to the excitation model training scheme. First, the excitation model is trained in a connected manner, with inputs generated by the acoustic model. Second, the target glottal waveforms are re-estimated by performing glottal inverse filtering with the predicted vocal tract filters. The results show that both of these modifications improve performance measured in MSE and MFCC distortion, and slightly improve the subjective quality of the synthetic speech.
机译:已经发现从声学特征产生声门激励波形的神经网络的模型在统计参数致辞中提供了改进的质量。然而,到目前为止,这些模型已经与声学模型分开培训。这在训练和合成之间产生不匹配,因为用于激励模型输入的合成声学特征与原始输入不同,模型培训训练。此外,由于预测声道过滤器的错误,即使在没有错误的情况下预测,原始激励波形也不会提供语音波形的完美重建。为了解决这些问题,并使激励模型对声学建模中的错误更加强大,提出了两个对激励模型训练方案的修改。首先,激励模型以连接方式训练,具有由声学模型产生的输入。其次,通过使用预测的声道过滤器进行引声逆滤波来重新估计目标声门波形。结果表明,这两个修改都提高了MSE和MFCC失真测量的性能,略微提高了合成语音的主观质量。

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