An improved RIP-based performance guarantee for sparse signal reconstruction via subspace pursuit

Ling-Hua Chang, Jwo-Yuh Wu
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引用次数: 10

Abstract

Subspace pursuit (SP) is a well-known greedy algorithm capable of reconstructing a sparse signal vector from a set of incomplete measurements. In this paper, by exploiting an approximate orthogonality condition characterized in terms of the achievable angles between two compressed orthogonal sparse vectors, we show that perfect signal recovery in the noiseless case, as well as stable signal recovery in the noisy case, is guaranteed if the sensing matrix satisfies RIP of order 3K with RIC δ3K ≤ 0.2412 . Our work improves the best-known existing results, namely, δ3K <; 0.165 for the noiseless case [3] and δ3K <; 0.139 when noise is present [4]. In addition, for the noisy case we derive a reconstruction error upper bound, which is shown to be smaller as compared to the bound reported in [4].
一种改进的基于rip的子空间追踪稀疏信号重构性能保证
子空间追踪(SP)是一种著名的贪婪算法,它能够从一组不完全测量数据中重建稀疏信号向量。本文利用以两个压缩的正交稀疏向量之间的可达角度为特征的近似正交性条件,证明了如果传感矩阵满足3K阶RIP且RIC δ3K≤0.2412,则保证了在无噪声情况下的完美信号恢复,以及在有噪声情况下的稳定信号恢复。我们的工作改进了最著名的现有结果,即δ3K <;无噪声情况为0.165 [3],δ3K <;噪声存在时为0.139[4]。此外,对于有噪声的情况,我们推导了一个重构误差上界,与文献[4]中报道的边界相比,该上界更小。
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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