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Speech Enhancement Based on Minimum Mean-Square Error Estimation and Supergaussian Priors

机译:基于最小均方误差估计和超高斯先验的语音增强

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摘要

This paper presents a class of minimum mean-square error (MMSE) estimators for enhancing short-time spectral coefficients of a noisy speech signal. In contrast to most of the presently used methods, we do not assume that the spectral coefficients of the noise or of the clean speech signal obey a (complex) Gaussian probability density. We derive analytical solutions to the problem of estimating discrete Fourier transform (DFT) coefficients in the MMSE sense when the prior probability density function of the clean speech DFT coefficients can be modeled by a complex Laplace or by a complex bilateral Gamma density. The probability density function of the noise DFT coefficients may be modeled either by a complex Gaussian or by a complex Laplacian density. Compared to algorithms based on the Gaussian assumption, such as the Wiener filter or the Ephraim and Malah (1984) MMSE short-time spectral amplitude estimator, the estimators based on these supergaussian densities deliver an improved signal-to-noise ratio.
机译:本文提出了一种最小均方误差(MMSE)估计器,用于增强嘈杂语音信号的短时频谱系数。与大多数当前使用的方法相反,我们不假定噪声或干净语音信号的频谱系数服从(复杂的)高斯概率密度。当纯语音DFT系数的先验概率密度函数可以通过复杂的Laplace或复杂的双边Gamma密度建模时,我们得出MMSE方向上的离散傅立叶变换(DFT)系数估计问题的解析解决方案。噪声DFT系数的概率密度函数可以通过复数高斯或复数拉普拉斯密度建模。与基于高斯假设的算法(例如维纳滤波器或Ephraim和Malah(1984)MMSE短时频谱幅度估计器)相比,基于这些超高斯密度的估计器可提供更高的信噪比。

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