首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.3; Lecture Notes in Computer Science; 4493 >Blind Source Separation in Post-nonlinear Mixtures Using Natural Gradient Descent and Particle Swarm Optimization Algorithm
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Blind Source Separation in Post-nonlinear Mixtures Using Natural Gradient Descent and Particle Swarm Optimization Algorithm

机译:基于自然梯度下降和粒子群算法的非线性后混合盲源分离

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摘要

Extracting independent source signals from their nonlinear mixtures is a very important issue in many realistic models. This paper proposes a new method for solving nonlinear blind source separation (NBSS) problems by exploiting particle swarm optimization (PSO) algorithm and natural gradient descent. First, we address the problem of separation of mutually independent sources in post-nonlinear mixtures. The natural gradient descent is used to estimate the separation matrix. Then we define the mutual information between output signals as the fitness function of PSO. The mutual information is used to measure the statistical dependence of the outputs of the demixing system. PSO can rapidly obtain the globally optimal coefficients of the higher order polynomial functions. Compared to conventional NBSS approaches, the main characteristics of this method are its simplicity, the rapid convergence and high accuracy. In particular, it is robust against local minima in search for inverse functions. Experiments are discussed to demonstrate these results.
机译:在许多现实模型中,从非线性混合中提取独立的源信号是一个非常重要的问题。提出了一种利用粒子群算法(PSO)和自然梯度下降法解决非线性盲源分离(NBSS)问题的新方法。首先,我们解决了非线性后混合中相互独立的源分离的问题。自然梯度下降用于估计分离矩阵。然后,我们将输出信号之间的互信息定义为PSO的适应度函数。互信息用于测量解混系统的输出的统计依赖性。 PSO可以快速获得高阶多项式函数的全局最优系数。与传统的NBSS方法相比,该方法的主要特点是简单,快速收敛和高精度。特别是,它在搜索逆函数方面对局部最小值具有鲁棒性。讨论了实验以证明这些结果。

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