A constrained least squares algorithm for fast Blind Source Separation in a non-stationary mixing environment

N. Das, A. Routray, P. Dash
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引用次数: 1

Abstract

This paper proposes a Constrained Least Square approach to the problem of Blind Source Separation (BSS) in a non-stationary mixing environment. Initially the demixing matrix is identified for the nominal system using the standard Kullback-Liebler(KL) divergence minimization technique. The KL algorithm is computationally expensive requiring longer CPU time and a large collection of samples. Therefore for small or structured changes in the mixing system which may occur due to environmental conditions this algorithm may be slow and inappropriate in certain applications. In this paper we have proposed an algorithm based on Constrained Least Square that utilizes the initially estimated demixing structure from the KL algorithm to find the new structure for the changed system. It is computationally faster even for larger number of samples. The assumptions are that the changes are infrequent and the statistical properties of the sources do not change. The performance of the technique has been compared with existing methods.
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非平稳混合环境下盲源快速分离的约束最小二乘算法
针对非平稳混合环境下的盲源分离问题,提出了一种约束最小二乘法。首先,使用标准的Kullback-Liebler(KL)散度最小化技术确定了标称系统的脱混矩阵。KL算法的计算成本很高,需要更长的CPU时间和大量的样本集合。因此,对于混合系统中可能由于环境条件而发生的小的或结构化的变化,该算法在某些应用中可能是缓慢的和不合适的。在本文中,我们提出了一种基于约束最小二乘的算法,该算法利用KL算法中初始估计的分离结构来寻找变化后系统的新结构。即使对于大量的样本,它的计算速度也更快。假设变化是不频繁的,源的统计特性不会改变。并将该技术的性能与现有方法进行了比较。
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