MMSE speech enhancement based on GMM and solving an over-determined system of equations

S. Chehresa, M. Savoji
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引用次数: 7

Abstract

A new and effective algorithm is proposed in this paper based on Gaussian Mixture Modelling (GMM) and Minimum Mean Square Error (MMSE) criterion for speech enhancement where no assumption is made on the nature or stationarity of the noise. No Voice Activity Detection (VAD) or any other means is used to estimate the input Signal to Noise Ratio (SNR). The mean vectors of the mixture models of spectral magnitudes derived from models of speech and different noise sources power spectra are used to form sets of over-determined system of equations, as many as noise source candidates, whose solutions lead to the MMSE estimations of speech and additive noise spectral magnitudes. The corresponding power spectra are then used for noise suppression by applying Wiener filtering carried out on overlapping frames. The input SNR is estimated and the nature of the noise involved is determined as by-products of the method used. Results are compared with codebook constrained methods that have shown very good results but suffer from long processing times. It is shown that, at the cost of a slight lower improvement in SNR and PESQ score, the new algorithm reduces the computation time to one fifth which makes it suitable for practical applications.
基于GMM和求解超定方程组的MMSE语音增强
本文提出了一种新的有效的语音增强算法,该算法基于高斯混合建模(GMM)和最小均方误差(MMSE)准则,在不假设噪声的性质或平稳性的情况下进行语音增强。没有使用语音活动检测(VAD)或任何其他手段来估计输入信噪比(SNR)。由语音和不同噪声源功率谱模型得到的频谱幅值混合模型的平均向量被用来形成一组与噪声源一样多的过定方程组,这些方程组的解导致语音和加性噪声频谱幅值的MMSE估计。然后通过对重叠帧进行维纳滤波,将相应的功率谱用于噪声抑制。估计输入信噪比,并确定所使用方法的副产物所涉及的噪声的性质。结果与码本约束的方法进行了比较,后者显示出非常好的结果,但处理时间长。结果表明,新算法在信噪比和PESQ分数提高幅度较小的情况下,将计算时间缩短至五分之一,适合实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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