New enhanced robust kernel least mean square adaptive filtering algorithm

Furong Liu, W. Yuan, Yongbao Ma, Yi Zhou, Hongqing Liu
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引用次数: 4

Abstract

This paper studies an enhanced robust kernel least mean square (KLMS) adaptive filtering algorithm for nonlinear acoustic echo cancellation (NLAEC) in impulsive noise environment. Robust KLMS algorithm based on M-estimate theory shows robustness to simulated, Contaminated Gaussian (CG) impulsive noise. However, it fails to combat real-world impulsive noise which normally consists of a few consecutive impulsive samples. In this work, the linear prediction (LP) scheme is applied to the KLMS algorithm to detect and cancel the impulsive noise. The resultant LP-based KLMS (LPKLMS) algorithm thus can achieve improved robustness to the real-world impulsive noise which is frequently encountered in NLAEC and other applications alike.
新的增强鲁棒核最小均方自适应滤波算法
研究了一种增强鲁棒核最小均方(KLMS)自适应滤波算法,用于脉冲噪声环境下的非线性声回波抵消。基于m估计理论的鲁棒KLMS算法对模拟污染高斯(CG)脉冲噪声具有鲁棒性。然而,它不能对抗现实世界的脉冲噪声,通常由几个连续的脉冲样本组成。本文将线性预测(LP)方案应用于KLMS算法中,以检测和消除脉冲噪声。由此产生的基于lp的KLMS (LPKLMS)算法可以提高对NLAEC和其他类似应用中经常遇到的现实世界脉冲噪声的鲁棒性。
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