基于Mel广义倒谱正则化的非负谱图模型的语音增强

Li Li, H. Kameoka, T. Toda, S. Makino
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引用次数: 1

摘要

基于非负谱图模型(如非负矩阵分解(NMF)和非负矩阵因子去卷积)的谱域语音增强算法在信号恢复精度方面是强大的,但它们不会直接导致特征域(如倒谱域)或感知质量方面的增强。我们之前提出了一种方法,可以同时增强频谱域和倒谱域中的语音。尽管这种方法被证明是有效的,但所设计的算法在计算上要求很高。本文提出了另一种公式,通过用NMF模型和目标频谱的mel广义倒谱(MGC)表示之间的散度测度代替正则化项,可以快速实现。由于MGC是在参数语音合成中广泛使用的音频信号的听觉激励表示,我们还期望所提出的方法在提高感知质量方面具有效果。实验结果表明,该方法在信噪比和倒谱距离方面都是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech Enhancement Using Non-Negative Spectrogram Models with Mel-Generalized Cepstral Regularization
Spectral domain speech enhancement algorithms based on nonnegative spectrogram models such as non-negative matrix factorization (NMF) and non-negative matrix factor deconvolution are powerful in terms of signal recovery accuracy, however they do not directly lead to an enhancement in the feature domain (e.g., cepstral domain) or in terms of perceived quality. We have previously proposed a method that makes it possible to enhance speech in the spectral and cepstral domains simultaneously. Although this method was shown to be effective, the devised algorithm was computationally demanding. This paper proposes yet another formulation that allows for a fast implementation by replacing the regularization term with a divergence measure between the NMF model and the mel-generalized cepstral (MGC) representation of the target spectrum. Since the MGC is an auditory-motivated representation of an audio signal widely used in parametric speech synthesis, we also expect the proposed method to have an effect in enhancing the perceived quality. Experimental results revealed the effectiveness of the proposed method in terms of both the signal-to-distortion ratio and the cepstral distance.
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