Kernel Adaptive Filtering Based on Maximum Versoria Criterion

Sandesh Jain, R. Mitra, V. Bhatia
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引用次数: 12

Abstract

Information theoretic learning based approaches have been combined with the framework of reproducing kernel Hilbert space (RKHS) based techniques for nonlinear and non-Gaussian signal processing applications. In particular, generalized kernel maximum correntropy (GKMC) algorithm has been proposed in the literature which adopts generalized Gaussian probability density function (GPDF) as the cost function in order to train the filter weights. Recently, a more flexible and computationally efficient algorithm called maximum Versoria criterion (MVC) which adopts the generalized Versoria function as the adaptation cost has been proposed in the literature which delivers better performance as compared to the maximum correntropy criterion. In this paper, we propose a novel generalized kernel maximum Versoria criterion (GKMVC) algorithm which combines the advantages of RKHS based approaches and MVC algorithm. Further, a novelty criterion based dictionary sparsification technique as suggested for kernel least mean square (KLMS) algorithm is proposed for GKMVC algorithm for reducing its computational complexity. Furthermore, an analytical upper bound on step-size is also derived in order to ensure the convergence of the proposed algorithm. Simulations are performed over various non-Gaussian noise distributions which indicate that the proposed GKMVC algorithm exhibits superior performance in terms of lower steady-state error floor as compared to the existing algorithms, namely the KLMS and the GKMC algorithms.
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基于最大Versoria准则的核自适应滤波
基于信息理论学习的方法与基于核希尔伯特空间再现(RKHS)的技术框架相结合,用于非线性和非高斯信号处理应用。其中,有文献提出了广义核最大熵(GKMC)算法,该算法采用广义高斯概率密度函数(GPDF)作为代价函数来训练滤波器权值。近年来,文献中提出了一种更灵活、计算效率更高的算法,称为最大Versoria准则(MVC),该算法采用广义Versoria函数作为自适应代价,具有比最大熵准则更好的性能。在本文中,我们提出了一种新的广义核最大Versoria准则(GKMVC)算法,它结合了基于RKHS的方法和MVC算法的优点。此外,为了降低GKMVC算法的计算复杂度,提出了一种基于新颖性准则的字典稀疏化技术,该技术适用于核最小均方(KLMS)算法。此外,为了保证算法的收敛性,还给出了步长的解析上界。在各种非高斯噪声分布下进行的仿真表明,与现有的算法(即KLMS和GKMC算法)相比,所提出的GKMVC算法在更低的稳态误差层方面表现出优越的性能。
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