Sparsity-aware adaptive filtering based on a Douglas-Rachford splitting

I. Yamada, Silvia Gandy, M. Yamagishi
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引用次数: 15

Abstract

In this paper, we propose a novel online scheme for the sparse adaptive filtering problem. It is based on a formulation of the adaptive filtering problem as a minimization of the sum of (possibly nonsmooth) convex functions. Our proposed scheme is a time-varying extension of the so-called Douglas-Rachford splitting method. It covers many existing adaptive filtering algorithms as special cases. We show several examples of special choices of the cost functions that reproduce those existing algorithms. Our scheme achieves a monotone decrease of an upper bound of the distance to the solution set of the minimization under certain conditions. We applied a simple algorithm that falls under our scheme to a sparse echo cancellation problem where it shows excellent convergence performance.
基于Douglas-Rachford分裂的稀疏感知自适应滤波
本文针对稀疏自适应滤波问题,提出了一种新的在线方案。它基于自适应滤波问题的一个公式,即(可能是非光滑的)凸函数和的最小化。我们提出的方案是对所谓的Douglas-Rachford分裂方法的时变扩展。它涵盖了许多现有的自适应滤波算法作为特例。我们展示了几个例子的特殊选择的成本函数,再现这些现有的算法。我们的方案在一定条件下实现了到最小解集的距离上界的单调递减。我们将一种简单的算法应用于稀疏回波抵消问题,该算法具有良好的收敛性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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