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ON ROBUSTNESS OF MULTI-CHANNEL MINIMUM MEAN-SQUARED ERROR ESTIMATORS UNDER SUPER-GAUSSIAN PRIORS

机译:超高斯教师在多通道最小平均误差估计的鲁棒性

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The use of microphone arrays in speech enhancement applications offer additional features, like directivity, over the classical single-channel speech enhancement algorithms. An often used strategy for multi-microphone noise reduction is to apply the multi-channel Wiener filter, which is often claimed to be mean-squared error optimal. However, this is only true if the estimator is constrained to be linear, or, if the speech and noise process are assumed to be Gaussian. Based on histograms of speech DFT coefficients it can be argued that optimal multi-channel minimum mean-squared error (MMSE) estimators should be derived under super-Gaussian speech priors instead. In this paper we investigate the robustness of these estimators when the steering vector is affected by estimation errors. Further, we discuss the sensitivity of the estimators when the true underlying distribution of speech DFT coefficients deviates from the assumed distribution.
机译:在语音增强应用中使用麦克风阵列提供额外的特征,如方向性,在经典单通道语音增强算法上。用于多麦克风降噪的经常使用的策略是应用多通道维纳滤波器,这些滤波器通常声称是均值平方的误差。然而,如果估计器被限制为线性,则这仅是真的,或者如果假设语音和噪声过程是高斯的。基于语音DFT系数的直方图,可以说明,最佳的多通道最小均值误差(MMSE)估计值应在超高斯语音前沿推导出来。在本文中,当转向载体受到估计误差的影响时,我们研究了这些估计器的鲁棒性。此外,当语音DFT系数的真实潜在分布偏离假定的分布时,我们讨论估计器的敏感性。

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