新的增强鲁棒核最小均方自适应滤波算法

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

摘要

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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New enhanced robust kernel least mean square adaptive filtering algorithm
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.
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