基于两层感知器网络的最大熵非线性盲源分离方法

Wei Li, Huizhong Yang
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引用次数: 3

摘要

研究了非线性混合信号的盲分离问题。提出了一种非线性盲源分离方法,该方法采用双层感知器网络作为分离系统,从观测到的非线性混合信号中分离出盲源。基于最大熵准则推导了分离系统参数的学习算法。利用非参数核密度估计来直接估计感知器输出的分数函数,而不是经验地选择非线性函数。仿真结果表明,该算法具有良好的性能。
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A maximum entropy based nonlinear blind source separation approach using a two-layer perceptron network
This paper addresses the problem of blind separation of nonlinear mixed signals. A nonlinear blind source separation method is developed, in which a two-layer perceptron network is employed as the separating system to separate sources from the observed non-linear mixture signals. The learning algorithms for the parameters of the separating system are derived based on the maximum entropy (ME) criterion. Instead of choosing non-linear functions empirically, the nonparametric kernel density estimation is exploited to estimate the score function of the perceptron's outputs directly. Simulations show good performance of the proposed algorithm.
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