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Speech Signal Enhancement Based on MAP Algorithm in the ICA Space

机译:ICA空间中基于MAP算法的语音信号增强

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摘要

This paper presents a novel maximum a posteriori (MAP) denoising algorithm based on the independent component analysis (ICA). We demonstrate that the employment of individual ICA transformations for signal and noise can provide the best estimate within the linear framework. The signal enhancement problem is categorized based on the distribution of signal and noise being Gaussian or non-Gaussian and the estimation rule is derived for each of the categories. Our theoretical analysis shows that under the assumption of a Gaussian noise the proposed algorithm leads to some well-known enhancement techniques, i.e., Wiener filter and sparse code shrinkage. The analysis of the denoising capability shows that the proposed algorithm is most efficient for non-Gaussian signals corrupted by a non-Gaussian noise. We employed the generalized Gaussian model (GGM) to model the distributions of speech and noise. Experimental evaluation is performed in terms of signal-to-noise ratio (SNR) and spectral distortion measure. Experimental results show that the proposed algorithms achieve significant improvement on the enhancement performance in both Gaussian and non-Gaussian noise.
机译:本文提出了一种基于独立分量分析(ICA)的新颖的最大后验(MAP)去噪算法。我们证明,采用单个ICA变换来处理信号和噪声可以在线性框架内提供最佳估计。基于信号和噪声的分布是高斯或非高斯来对信号增强问题进行分类,并针对每个类别推导估计规则。我们的理论分析表明,在高斯噪声的假设下,提出的算法会导致一些众所周知的增强技术,即维纳滤波器和稀疏代码收缩。对降噪能力的分析表明,所提出的算法对于非高斯信号被非高斯噪声破坏最有效。我们采用广义高斯模型(GGM)对语音和噪声的分布进行建模。实验评估是根据信噪比(SNR)和频谱失真度进行的。实验结果表明,该算法在高斯噪声和非高斯噪声的增强性能上均取得了明显的提高。

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