Source separation using second order statistics

U. Lindgren, H. Sahlin, H. Broman
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引用次数: 13

Abstract

It is often assumed that blind separation of dynamically mixed sources can not be accomplished with second order statistics. In this paper it is shown that separation of dynamically mixed sources indeed can be performed using second order statistics only. Two approaches to achieve this separation are presented. The first approach is to use a new criterion, based on second order statistics. The criterion is used in order to derive a gradient based separation algorithm as well modified Newton separation algorithm. The uniqueness of the solution representing separation is also investigated. The other approach is to use System Identification. In this context system identifiability results are presented. Simulations using both the criterion based approach and a Recursive Prediction Error Method are also presented.
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使用二阶统计量的源分离
通常认为动态混合源的盲分离不能用二阶统计量来实现。本文证明了动态混合源的分离确实可以只用二阶统计量来实现。提出了实现这种分离的两种方法。第一种方法是使用基于二阶统计量的新标准。利用该准则推导出一种基于梯度的分离算法和改进的牛顿分离算法。研究了分离解的唯一性。另一种方法是使用系统标识。在这种情况下,系统的可识别性结果被提出。采用基于准则的方法和递归预测误差方法进行了仿真。
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