A robust geometrical method for blind separation of noisy mixtures of non-negatives sources

W. Ouedraogo, A. Souloumiac, M. Jaidane, C. Jutten
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引用次数: 0

Abstract

Recently, we proposed an effective geometrical method for separating linear instantaneous mixtures of non-negative sources, termed Simplicial Cone Shrinking Algorithm for Unmixing Non-negative Sources (SCSA-UNS). The latter method operates in noiseless case, and estimates the mixing matrix and the sources by finding the minimum aperture simplicial cone, containing the scatter plot of mixed data. In this paper, we propose an extension of SCSA-UNS, to tackle the noisy mixtures, in the case where the sparsity degrees of the sources are known a priori. The idea is to progressively eliminate, the noisy mixed data points which are likely to significantly modify the scatter plot of noiseless mixed data and to lead to a bad estimation of the mixing matrix and the sources. Simulations on synthetic data show the effectiveness of the proposed method.
一种鲁棒的非负源噪声混合盲分离几何方法
最近,我们提出了一种有效的分离非负源线性瞬时混合的几何方法,称为非负源解混简单锥缩算法(SCSA-UNS)。后一种方法在无噪声情况下工作,通过寻找包含混合数据散点图的最小孔径简单锥估计混合矩阵和源。在本文中,我们提出了SCSA-UNS的扩展,以解决噪声源稀疏度已知先验的情况下的噪声混合。其思想是逐步消除有噪声的混合数据点,这些点可能会显著地改变无噪声混合数据的散点图,并导致对混合矩阵和源的不良估计。综合数据的仿真结果表明了该方法的有效性。
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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