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Speech enhancement using Maximum A-Posteriori and Gaussian Mixture Models for speech and noise Periodogram estimation

机译:使用最大A后验和高斯混合模型进行语音和噪声周期图估计的语音增强

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摘要

In speech enhancement, Gaussian Mixture Models (GMMs) can be used to model the Probability Density Function (PDF) of the Periodograms of speech and different noise types. These GMMs are created by applying the Estimate Maximization (EM) algorithm on large datasets of speech and different noise type Periodograms and hence classify them into a small number of clusters whose centroid Periodograms are the mean vectors of the GMMs. These GMMs are used to realize the Maximum A-Posteriori (MAP) estimation of the speech and noise Periodograms present in a noisy speech observation. To realize the MAP estimation, use of a constrained optimization algorithm is proposed in which relatively good enhancement results with high processing times are attained. Due to the use of constraints in the optimization algorithm, incorrect estimation results may arise due to possible local maxima. A simple analytic MAP algorithm is proposed to attain global maximums in lower calculation times. With the new method the complicated MAP formula is simplified as much as possible to find the maxima, through solving a set of equations and not through conventional numerical methods used in optimization. This method results in excellent speech enhancement with a relatively short processing time.
机译:在语音增强中,高斯混合模型(GMM)可用于对语音和不同噪声类型的周期图的概率密度函数(PDF)进行建模。这些GMM是通过对语音和不同噪声类型的周期图的大型数据集应用估计最大化(EM)算法创建的,因此将它们分类为少数群,其质心周期图是GMM的均值向量。这些GMM用于实现在嘈杂的语音观察中出现的语音和噪声周期图的最大后验(MAP)估计。为了实现MAP估计,提出了一种约束优化算法,该算法可以在较高的处理时间下获得较好的增强效果。由于在优化算法中使用了约束,由于可能的局部最大值,可能会产生不正确的估计结果。提出了一种简单的解析MAP算法,可以在较短的计算时间内获得全局最大值。使用新方法,可以通过求解一组方程而不是通过用于优化的常规数值方法来尽可能简化复杂的MAP公式,以找到最大值。此方法可在较短的处理时间内实现出色的语音增强效果。

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