Automatic GMM-Based evaluation of noise suppression in the speech signal recorded during phonation in the open-air MRI

J. Pribil, A. Přibilová, I. Frollo
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引用次数: 1

Abstract

The paper is focused at evaluation of successfulness of de-noising of the speech signal recorded in the open-air magnetic resonance imager during phonation for the 3D human vocal tract modeling. Automatic evaluation methods based on classification by Gaussian mixture models (GMM) are described in more detail. The first performed experiments have confirmed that the proposed GMM classifier of the speech quality is functional and fully comparable with the standard evaluation based on the listening test. Our investigations have shown a relatively great influence of the number of mixtures and the type of a covariance matrix on the computational complexity. However, there was less effect of these parameters on variability of the GMM classifier results for different de-noising methods as well as less effect on gender invariability of the results.
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基于自动gmm的露天磁共振成像语音信号噪声抑制评价
本文主要对露天磁共振成像仪记录的语音信号在发声过程中的降噪效果进行评价,并用于人体声道三维建模。详细介绍了基于高斯混合模型(GMM)分类的自动评价方法。首先进行的实验证实了所提出的语音质量GMM分类器是功能性的,并且与基于听力测试的标准评价具有完全可比性。我们的研究表明,混合的数量和协方差矩阵的类型对计算复杂度有较大的影响。然而,这些参数对不同降噪方法的GMM分类器结果的可变性影响较小,对结果的性别不变性影响较小。
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