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Stable signal recovery in compressed sensing with a structured matrix perturbation

机译:具有结构化矩阵微扰的压缩感测中的稳定信号恢复

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The sparse signal recovery in standard compressed sensing (CS) requires that the sensing matrix is exactly known. The CS problem subject to perturbation in the sensing matrix is often encountered in practice and has attracted interest of researches. Unlike existing robust signal recoveries with the recovery error growing linearly with the perturbation level, this paper analyzes the CS problem subject to a structured perturbation to provide conditions for stable signal recovery under measurement noise. Under mild conditions on the perturbed sensing matrix, similar to that for the standard CS, it is shown that a sparse signal can be stably recovered by ℓ1 minimization. A remarkable result is that the recovery is exact and independent of the perturbation if there is no measurement noise and the signal is sufficiently sparse. In the presence of noise, largest entries (in magnitude) of a compressible signal can be stably recovered. The result is demonstrated by a simulation example.
机译:标准压缩感测(CS)中的稀疏信号恢复要求完全了解感测矩阵。感知矩阵中易受扰动的CS问题在实践中经常遇到,引起了研究的兴趣。与现有的鲁棒信号恢复不同,恢复误差随扰动水平呈线性增长,本文分析受结构扰动影响的CS问题,以提供在测量噪声下实现稳定信号恢复的条件。在柔和的条件下,与标准CS相似,在扰动的传感矩阵上,通过ℓ1最小化可以稳定地恢复稀疏信号。一个显着的结果是,如果没有测量噪声并且信号足够稀疏,则恢复是精确的,并且与扰动无关。在存在噪声的情况下,可压缩信号的最大条目(大小)可以被稳定地恢复。仿真示例演示了结果。

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