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Cross Low-Dimension Pursuit for Sparse Signal Recovery from Incomplete Measurements Based on Permuted Block Diagonal Matrix

机译:交叉低维追踪基于置换块对角矩阵的不完整测量中的稀疏信号恢复

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In this paper, a novel algorithm, Cross Low-dimension Pursuit, based on a new structured sparse matrix, Permuted Block Diagonal (PBD) matrix, is proposed in order to recover sparse signals from incomplete linear measurements. The main idea of the proposed method is using the PBD matrix to convert a high-dimension sparse recovery problem into two (or more) groups of highly low-dimension problems and crossly recover the entries of the original signal from them in an iterative way. By sampling a sufficiently sparse signal with a PBD matrix, the proposed algorithm can recover it efficiently. It has the following advantages over conventional algorithms: (1) low complexity, i.e., the algorithm has linear complexity, which is much lower than that of existing algorithms including greedy algorithms such as Orthogonal Matching Pursuit and (2) high recovery ability, i.e., the proposed algorithm can recover much less sparse signals than even ℓ~1-norm minimization algorithms. Moreover, we demonstrate both theoretically and empirically that the proposed algorithm can reliably recover a sparse signal from highly incomplete measurements.
机译:本文提出了一种基于新型结构化稀疏矩阵“置换块对角线”(PBD)矩阵的交叉低维追踪算法,以从不完整的线性测量中恢复稀疏信号。提出的方法的主要思想是使用PBD矩阵将高维稀疏恢复问题转换为两组(或更多组)高低维问题,并以迭代方式从中交叉恢复原始信号的条目。通过用PBD矩阵采样足够稀疏的信号,该算法可以有效地恢复它。与传统算法相比,它具有以下优点:(1)低复杂度,即该算法具有线性复杂度,这比包括贪婪算法(如正交匹配追踪)在内的现有算法要低得多;(2)高恢复能力,即与algorithm〜1范数最小化算法相比,所提出的算法可以恢复少得多的稀疏信号。此外,我们在理论和经验上都证明了该算法可以从高度不完整的测量中可靠地恢复出稀疏信号。

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