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首页> 外文期刊>IEICE Transactions on fundamentals of electronics, communications & computer sciences >Exploiting Group Sparsity in Nonlinear Acoustic Echo Cancellation by Adaptive Proximal Forward-Backward Splitting
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Exploiting Group Sparsity in Nonlinear Acoustic Echo Cancellation by Adaptive Proximal Forward-Backward Splitting

机译:自适应近前向前-向后分裂在非线性回声抵消中利用群稀疏性

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In this paper, we propose a use of the group sparsity in adaptive learning of second-order Volterra filters for the nonlinear acoustic echo cancellation problem. The group sparsity indicates sparsity across the groups, i.e., a vector is separated into some groups, and most of groups only contain approximately zero-valued entries. First, we provide a theoretical evidence that the second-order Volterra systems tend to have the group sparsity under natural assumptions. Next, we propose an algorithm by applying the adaptive proximal forward-backward splitting method to a carefully designed cost function to exploit the group sparsity effectively. The designed cost function is the sum of the weighted group t_1 norm which promotes the group sparsity and a weighted sum of squared distances to data-fidelity sets used in adaptive filtering algorithms. Finally, Numerical examples show that the proposed method outperforms a sparsity-aware algorithm in both the system-mismatch and the echo return loss enhancement.
机译:在本文中,我们提出将组稀疏性用于非线性声学回声消除问题的二阶Volterra滤波器的自适应学习中。组稀疏度表示各组之间的稀疏度,即,矢量被分成一些组,并且大多数组仅包含近似零值的条目。首先,我们提供了理论证据,表明二阶Volterra系统在自然假设下倾向于具有群稀疏性。接下来,我们提出一种算法,将自适应近端向前-向后拆分方法应用于精心设计的成本函数,以有效利用组稀疏性。设计的成本函数是加权组t_1范数的总和,该总和提高了组稀疏性,而平方距离的加权总和是自适应滤波算法中使用的数据保真度集。最后,数值算例表明,该方法在系统失配和回波回波损耗增强方面均优于稀疏感知算法。

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