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Underdetermined Blind Source Separation Based on Subspace Representation

机译:基于子空间表示的欠定盲源分离

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摘要

This paper considers the problem of blindly separating sub- and super-Gaussian sources from underdetermined mixtures. The underlying sources are assumed to be composed of two orthogonal components: one lying in the rowspace and the other in the nullspace of a mixing matrix. The mapping from the rowspace component to the mixtures by the mixing matrix is invertible using the pseudo-inverse of the mixing matrix. The mapping from the nullspace component to zero by the mixing matrix is noninvertible, and there are infinitely many solutions to the nullspace component. The latent nullspace component, which is of lower complexity than the underlying sources, is estimated based on a mean square error (MSE) criterion. This leads to a source estimator that is optimal in the MSE sense. In order to characterize and model sub- and super-Gaussian source distributions, the parametric generalized Gaussian distribution is used. The distribution parameters are estimated based on the expectation-maximization (EM) algorithm. When the mixing matrix is unavailable, it must be estimated, and a novel algorithm based on a single source detection algorithm, which detects time-frequency regions of single-source-occupancy, is proposed. In our simulations, the proposed algorithm, compared to other conventional algorithms, estimated the mixing matrix with higher accuracy and separated various sources with higher signal-to-interference ratio.
机译:本文考虑了将亚高斯源和超高斯源与欠确定混合物盲目分离的问题。假设基础源由两个正交分量组成:一个位于行空间中,另一个位于混合矩阵的零空间中。使用混合矩阵的伪逆函数,混合矩阵从行空间分量到混合物的映射是可逆的。混合矩阵从零空间分量到零的映射是不可逆的,零分量有无限多的解。潜在零空间分量的复杂度低于基础源,是根据均方误差 (MSE) 标准估计的。这导致了一个在 MSE 意义上最优的源估计器。为了表征和模拟亚高斯和超高斯源分布,使用了参数广义高斯分布。分布参数是根据期望最大化 (EM) 算法估计的。当混合矩阵不可用时,必须对其进行估计,并提出了一种基于单源检测算法的单源检测算法,该算法可检测单源占用的时频区域。在我们的仿真中,与其他传统算法相比,所提算法以更高的精度估计了混合矩阵,并以更高的信干比分离了各种源。

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