Noise robust estimation of the voice source using a deep neural network

Manu Airaksinen, T. Raitio, P. Alku
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引用次数: 10

Abstract

In the analysis of speech production, information about the voice source can be obtained non-invasively with glottal inverse filtering (GIF) methods. Current state-of-the-art GIF methods are capable of producing high-quality estimates in suitable conditions (e.g. low noise and reverberation), but their performance deteriorates in nonideal conditions because they require noise-sensitive parameter estimation. This study proposes a method for noise robust estimation of the voice source by creating a mapping using a deep neural network (DNN) between robust low-level speech features and the desired reference, a time-domain glottal flow computed by a GIF method. The method was evaluated with two GIF methods, of which one (quasi closed phase analysis, QCP) requires additional parameter estimation and the other (iterative adaptive inverse filtering, IAIF) does not. The results show that the proposed method outperforms the QCP method with SNRs less than 50-20 dB, but the simple IAIF method only with very low SNRs.
基于深度神经网络的声源噪声鲁棒估计
在对语音产生的分析中,利用声门反滤波(GIF)方法可以无创地获得声源信息。目前最先进的GIF方法能够在适当的条件下(例如低噪声和混响)产生高质量的估计,但在非理想条件下,它们的性能会恶化,因为它们需要噪声敏感的参数估计。本研究提出了一种对声源进行噪声鲁棒估计的方法,该方法使用深度神经网络(DNN)在鲁棒的低级语音特征和期望参考(通过GIF方法计算的时域声门流)之间创建映射。用两种GIF方法对该方法进行评价,其中一种方法(准闭相分析,QCP)需要额外的参数估计,另一种方法(迭代自适应反滤波,IAIF)不需要额外的参数估计。结果表明,该方法在信噪比小于50 ~ 20 dB的情况下优于QCP方法,而简单的IAIF方法仅在非常低的信噪比下优于QCP方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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