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A fast compressive sensing method with application to network echo cancellation

机译:一种快速压缩感知方法及其在网络回声消除中的应用

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Compressive sensing methods have been effectively used for sparse system identification. Many methods have been proposed to exploit this sparsity to reduce the amount of data required for identification. Most though, have high computational complexity. Recently, an iterative method based on the proportionate affine projection algorithm with row action projections (iPAPA-RAP) has been shown to have good convergence properties with relatively low complexity. Here, we present extensions of that algorithm that significantly speed convergence and as a result lower overall computational complexity. The main improvement is the addition of a zero attractor step with a variable scale factor. Significantly, this scale factor is made to be a function of the sparsity of the estimated system parameters. This greatly improves the convergence behavior of the resulting algorithm. It is compared with iteratively reweighted least-squares (IRLS) and l0 - zero attracting projections (l0-ZAP). Results show that the proposed algorithm converges faster with lower overall complexity.
机译:压缩感测方法已被有效地用于稀疏系统识别。已经提出了许多方法来利用这种稀疏性来减少识别所需的数据量。但是,大多数情况下具有很高的计算复杂度。近来,基于具有行动作投影的比例仿射投影算法(iPAPA-RAP)的迭代方法已被证明具有良好的收敛性,且复杂度较低。在这里,我们介绍了该算法的扩展,该扩展显着加快了收敛速度,从而降低了总体计算复杂度。主要的改进是增加了具有可变比例因子的零吸引器步骤。重要的是,使该比例因子成为估计的系统参数的稀疏性的函数。这大大改善了所得算法的收敛性能。将其与迭代加权最小二乘法(IRLS)和10-零吸引投影(10-ZAP)进行比较。结果表明,所提算法收敛速度较快,总体复杂度较低。

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