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Non-parametric ICA Algorithm for Hybrid Sources Based on GKNN Estimation

机译:基于GKNN估计的混合源非参数ICA算法

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Novel independent component analysis(ICA) algorithm based on non-parametric density estimation-generalized k-nearest neighbor(GKNN) estimation is proposed using a linear ICA neural network. The proposed GKNN density estimation is directly evaluated from the original data samples, so it solves the important problem in ICA: how to choose nonlinear functions as the probability density function(PDF) estimation of the sources. Moreover the GKNN-ICA algorithm is able to separate the hybrid mixtures of source signals using only a flexible model and it is completely blind to the sources. It provides the way to wider applications of ICA methods to real world signal processing. Simulations confirm the effectiveness of the proposed algorithm.
机译:使用线性ICA神经网络提出了基于非参数密度估计通用k最近邻居(GKNN)估计的基于非参数密度估计通用k最近邻居(GKNN)估计的新型独立分量分析(ICA)算法。从原始数据样本直接评估所提出的GKNN密度估计,因此它解决了ICA中的重要问题:如何选择非线性功能作为源的概率密度函数(PDF)估计。此外,GKNN-ICA算法能够仅使用柔性模型分离源信号的混合混合物,并且对源完全盲目。它提供了更广泛应用ICA方法对现实世界信号处理的方法。仿真确认了所提出的算法的有效性。

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