Regularization of the improved proportionate affine projection algorithm

C. Paleologu, J. Benesty, F. Albu
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引用次数: 12

Abstract

In sparse adaptive filters, the adaptation gain is “proportionately” redistributed among all the coefficients, emphasizing the large ones in order to speed up their convergence. The improved proportionate affine projection algorithm (IPAPA) is a very attractive choice for echo cancellation, since it combines the good convergence features of the affine projection algorithm (APA) and the gain factors of the improved proportionate normalized least-mean-square (IPNLMS) algorithm. Similar to the APA, a matrix inversion is required within the IPAPA. For practical reasons, the matrix needs to be regularized before inversion, i.e., a positive constant is added to the elements of its main diagonal. In this paper, we propose a formula for choosing the regularization parameter of the IPAPA, aiming at attenuating the effects of the noise in the adaptive filter estimate. Simulation results indicate the validity of this approach in both network and acoustic echo cancellation scenarios.
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改进比例仿射投影算法的正则化
在稀疏自适应滤波器中,自适应增益在所有系数之间“按比例”重新分配,强调较大的系数以加快其收敛速度。改进的比例仿射投影算法(IPAPA)结合了仿射投影算法(APA)良好的收敛特性和改进的比例归一化最小均方(IPNLMS)算法的增益因子,是一种非常有吸引力的回波消除算法。与APA类似,在IPAPA中需要矩阵反转。由于实际原因,需要在反转之前对矩阵进行正则化,即在其主对角线的元素中添加一个正常数。本文针对自适应滤波估计中噪声的影响,提出了一种选择IPAPA正则化参数的公式。仿真结果表明,该方法在网络和声回波抵消场景下都是有效的。
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