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Iteratively reweighted two-stage LASSO for block-sparse signal recovery under finite-alphabet constraints

机译:迭代重加权两阶段LASSO用于有限字母约束下的块稀疏信号恢复

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摘要

In this paper, we derive an efficient iterative algorithm for the recovery of block-sparse signals given the finite data alphabet and the non-zero block probability. The non-zero block number is supposed to be far smaller than the total block number (block-sparse). The key principle is the separation of the unknown signal vector into an unknown support vector s and an unknown data symbol vector a. Both number (parallel to s parallel to(0)) and positions (s(i) is an element of{0, 1}) of non-zero blocks are unknown. The proposed algorithms use an iterative two-stage LASSO procedure consisting in optimizing the recovery problem alternatively with respect to a and with respect to s. The first algorithm resorts on l(1)-norm of the support vector and the second one applies reweighted l(1)-norm, which further improves the recovery performance. Performance of proposed algorithms is illustrated in the context of sporadic multiuser communications. Simulations show that the reweighted-l(1) algorithm performs close to its lower bound (perfect knowledge of the support vector). (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们给出了一种有效的迭代算法,用于在给定有限数据字母和非零块概率的情况下恢复块稀疏信号。假定非零块号远小于总块号(块稀疏)。关键原理是将未知信号向量分离为未知支持向量s和未知数据符号向量a。非零块的数目(与s平行于(0)平行)和位置(s(i)是{0,1}的元素)都是未知的。所提出的算法使用迭代两阶段LASSO程序,该程序包括相对于a和相对于s来优化恢复问题。第一种算法采用支持向量的l(1)-范数,第二种算法应用重新加权的l(1)-范数,这进一步提高了恢复性能。在零星多用户通信的情况下说明了所提出算法的性能。仿真表明,reweighted-l(1)算法的性能接近其下限(完全了解支持向量)。 (C)2018 Elsevier B.V.保留所有权利。

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