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Adaptive fast algorithm based on natural gradient for instantaneous blind source separation

机译:基于自然梯度的瞬时盲源分离自适应快速算法

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摘要

A fast adaptive algorithm based on natural gradient is proposed in this paper to address the convergence issue in instantaneous blind source separation (BSS) problem in a noisy and non-stationary mixing scenario. The natural gradient technique overcomes slow convergence properties of the gradient adaptation technique when the slope of the cost function varies widely for small changes in the parameters. To speed up the convergence further we adopt one of the heuristic methods by incorporating a momentum term. Synthetically generated data as well as real world data have been considered for validation purpose. Numerical experiments on sinusoidal signals and acoustic electromechanical signals confirm the superior performance of the proposed algorithm over the conventional natural gradient algorithm (NGA) in both noisy and noiseless situation as well as in stationary and non-stationary mixing scenario.
机译:提出了一种基于自然梯度的快速自适应算法,解决了在有噪声和非平稳混合情况下瞬时盲源分离(BSS)问题的收敛性问题。当参数的斜率随成本函数的斜率变化很大时,自然梯度技术克服了梯度自适应技术的缓慢收敛特性。为了进一步加快收敛速度​​,我们通过结合动量项采用了一种启发式方法。出于验证目的,已经考虑了合成生成的数据以及真实世界的数据。正弦信号和声学机电信号的数值实验证实了该算法在嘈杂和无噪声以及固定和非固定混合场景下均优于常规自然梯度算法(NGA)。

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