Robustness of Partial Sparse Signal Recovery Based on $l_{q}$ Minimization Model

Liying Ma, Yi Gao, Qingyun He
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Abstract

This paper discusses the recovery of partial sparse signal in compressed sensing. Firstly, a $l_{q} (0 < q< 1)$ non-convex optimization model is developed for partial sparse signal recovery under noisy measurement. Secondly, according to the existing partial $l_{q}$ null space property ($l_{q}$-NSP), we propose the partial $l_{q}$ robust null space property ($l_{q}$-RNSP) and the partial $l_{2,q}$ robust null space property ($1_{2,q}$-RNSP), and it is show that both properties are weaker than the partial restricted isometry property (RIP) proposed in the existing reference. Finally, the robustness estimation of the model solution is established based on the partial RNSP.
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基于$l_{q}$最小化模型的部分稀疏信号恢复鲁棒性
讨论了压缩感知中部分稀疏信号的恢复问题。首先,针对噪声测量下的部分稀疏信号恢复问题,建立了$l_{q} (0 < q< 1)$非凸优化模型。其次,根据已有的部分$l_{q}$零空间性质($l_{q}$-NSP),提出了部分$l_{q}$鲁棒零空间性质($l_{q}$-RNSP)和部分$l_{2,q}$ -RNSP),并证明了这两个性质都弱于已有文献中提出的部分受限等距性质(RIP)。最后,基于部分RNSP建立了模型解的鲁棒性估计。
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