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On the performance analysis of the least mean M-estimate and normalized least mean M-estimate algorithms with Gaussian inputs and additive Gaussian and contaminated Gaussian noises

机译:利用高斯输入和加性高斯和污染高斯噪声进行最小均值m估计和归一化最小均值m-估计算法的性能分析

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摘要

This paper studies the convergence analysis of the least mean M-estimate (LMM) and normalized least mean M-estimate (NLMM) algorithms with Gaussian inputs and additive Gaussian and contaminated Gaussian noises. These algorithms are based on the M-estimate cost function and employ error nonlinearity to achieve improved robustness in impulsive noise environment over their conventional LMS and NLMS counterparts. Using the Price's theorem and an extension of the method proposed in Bershad (IEEE Transactions on Acoustics, Speech, and Signal Processing, ASSP-34(4), 793-806, 1986; IEEE Transactions on Acoustics, Speech, and Signal Processing, 35(5), 636-644, 1987), we first derive new expressions of the decoupled difference equations which describe the mean and mean square convergence behaviors of these algorithms for Gaussian inputs and additive Gaussian noise. These new expressions, which are expressed in terms of the generalized Abelian integral functions, closely resemble those for the LMS algorithm and allow us to interpret the convergence performance and determine the step size stability bound of the studied algorithms. Next, using an extension of the Price's theorem for Gaussian mixture, similar results are obtained for additive contaminated Gaussian noise case. The theoretical analysis and the practical advantages of the LMM/NLMM algorithms are verified through computer simulations. © 2009 Springer Science+Business Media, LLC.
机译:本文研究了具有高斯输入,加性高斯和污染高斯噪声的最小均值M估计(LMM)和归一化最小均值M估计(NLMM)算法的收敛性分析。这些算法基于M估计成本函数,并采用误差非线性来在脉冲噪声环境中获得优于其传统LMS和NLMS对应物的鲁棒性。使用Price定理和Bershad建议的方法的扩展(IEEE声学,语音和信号处理交易,ASSP-34(4),793-806,1986; IEEE声学,语音和信号处理交易,35 (5),636-644,1987),我们首先导出解耦差分方程的新表达式,这些方程描述了这些算法对于高斯输入和加性高斯噪声的均值和均方收敛行为。这些用广义Abelian积分函数表示的新表达式与LMS算法的表达式非常相似,使我们能够解释收敛性能并确定所研究算法的步长稳定性边界。接下来,使用对高斯混合的普莱斯定理的扩展,对于加性污染的高斯噪声情况,可以获得相似的结果。通过计算机仿真验证了LMM / NLMM算法的理论分析和实际优势。 ©2009年Springer Science + Business Media,LLC。

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    Zhou Y; Chan SC;

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  • 年度 2010
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  • 原文格式 PDF
  • 正文语种 eng
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