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A cascade form blind source separation connecting source separation and linearization for nonlinear mixtures

机译:级联形式的盲源分离连接非线性混合物的源分离和线性化

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A network structure and its learning algorithm have been proposed for blind source separation applied to nonlinear mixtures. The network has a cascade form consists of a source separation block and a linearization block in this order. The conventional learning algorithm is employed for the separation block. A new learning algorithm is proposed for the linearization block assuming 2nd-order nonlinearity. After, source separation, the outputs include the nonlinear components for the same signal source. This nonlinearity is suppressed through the linearization block. Parameters in this block are iteratively adjusted based on a process of solving a 2nd-order equation of a single variable. Simulation results, using 2-channel speech signals and an instantaneous nonlinear mixing process, show good separation performance.
机译:提出了一种用于非线性混合的盲源分离的网络结构及其学习算法。该网络具有级联形式,该级联形式依次包括一个源分离模块和一个线性化模块。分离块采用传统的学习算法。提出了一种假设二阶非线性的线性化模块新的学习算法。源分离后,输出包括同一信号源的非线性分量。通过线性化模块可以抑制这种非线性。基于求解单个变量的二阶方程的过程,迭代地调整此块中的参数。使用2通道语音信号和瞬时非线性混合过程的仿真结果显示了良好的分离性能。

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