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A SIGNAL-ADAPTIVE ALGORITHM FOR BLIND SEPARATION OF SOURCES WITH MIXED KURTOSIS SIGNS

机译:混合Kurtosis信号源盲分离的信号自适应算法

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摘要

This paper addresses the problem of Blind Source Separation (BSS) and presents a new BSS algorithm with a Signal-Adaptive Activation (SAA) function (SAA-BSS). By taking the sum of absolute values of the normalized kurtoses as a contrast function, the obtained signal-adaptive activation function automatically satisfies the local stability and robustness conditions. The SAA-BSS exploits the natural gradient learning on the Stiefel manifold, and it is an equivariant algorithm with a moderate computational load. Computer simulations show that the SAA-BSS can perform blind separation of mixed sub-Gaussian and super-Gaussian signals and it works more efficiently than the existing algorithms in convergence speed and robustness against outliers.
机译:本文解决了盲源分离(BSS)问题,并提出了一种具有信号自适应激活(SAA)功能(SAA-BSS)的新BSS算法。通过将归一化的果糖的绝对值之和作为对比函数,获得的信号自适应激活函数自动满足局部稳定性和鲁棒性条件。 SAA-BSS利用Stiefel流形上的自然梯度学习,它是一种中等计算量的等变算法。计算机仿真表明,SAA-BSS可以对混合的高斯信号和超高斯信号进行盲分离,并且在收敛速度和针对异常值的鲁棒性方面比现有算法更有效。

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