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首页> 外文期刊>IEEE Transactions on Circuits and Systems. I, Regular Papers >Neural Network Approach to Blind Signal Separation of Mono-Nonlinearly Mixed Sources
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Neural Network Approach to Blind Signal Separation of Mono-Nonlinearly Mixed Sources

机译:神经网络方法在单非线性混合源盲信号分离中的应用

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摘要

A new result is developed for separating nonlinearly mixed signals in which the nonlinearity is characterized by a class of strictly monotonic continuously differentiable functions. The structure" of the blind inverse system is explicitly derived within the framework of maximum likelihood estimation and the system culminates to a special architecture of the 3-layer perceptron neural network where the parameters in the first layer are inversely related to the output layer. The proposed approach exploits both the structural and signal constraints to search for the solution and assumes that the cumulants of the source signals are known a priori. A novel statistical algorithm based on the hybridization of the generalized gradient algorithm and metropolis algorithm has been derived for training the proposed perceptron which results in improved performance in terms of accuracy and convergence speed. Simulations and real-life experiment have also been conducted to verify the efficacy of the proposed scheme in separating the nonlinearly mixed signals.
机译:提出了分离非线性混合信号的新结果,其中非线性具有一类严格单调连续可微函数的特征。盲逆系统的“结构”是在最大似然估计的框架内明确得出的,并且该系统最终达到3层感知器神经网络的特殊架构,其中第一层中的参数与输出层成反比。提出的方法利用结构和信号约束来寻找解,并假定源信号的累积量是先验的,并基于广义梯度算法和大都会算法的混合推导了一种新的统计算法来训练提出的感知器可以提高精度和收敛速度,还通过仿真和实际实验验证了该方法在分离非线性混合信号中的有效性。

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