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Sparsity-Inducing Super-Resolution Passive Radar Imaging with Illuminators of Opportunity

机译:带有机会照明器的稀疏性诱导超高分辨率无源雷达成像

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摘要

Multiple illuminators of opportunity (IOs) and a large rotation angle are often required for current passive radar imaging techniques. However, a large rotation angle demands a long observation time, which cannot be implemented for actual passive radar system. To overcome this disadvantage, this paper proposes a super-resolution passive radar imaging framework with a sparsity-inducing compressed sensing (CS) technique, which allows for fewer IOs and a smaller rotation angle. In the proposed imaging framework, the sparsity-based passive radar imaging is modeled mathematically, and the spatial frequencies and amplitudes of different scatterers on the target are recovered by the log-sum penalty function-based CS reconstruction algorithm. In doing so, a super-resolution passive radar imagery is obtained by the frequency searching approach. Simulation results not only validate that the proposed method outperforms existing super-resolution algorithms, such as ESPRIT and RELAX, especially in the cases with low signal-to-noise ratio (SNR) and limited number of measurements, but also have shown that our proposed method can perform robust reconstruction no matter if the target is on grid or not.
机译:当前的无源雷达成像技术通常需要多个机会照明器(IO)和较大的旋转角度。但是,大的旋转角度需要较长的观察时间,这对于实际的无源雷达系统是无法实现的。为克服此缺点,本文提出了一种超稀疏无源雷达成像框架,该框架采用稀疏诱导压缩传感(CS)技术,可减少IO并减小旋转角度。在提出的成像框架中,对基于稀疏度的无源雷达成像进行数学建模,并通过基于对数和罚函数的CS重建算法恢复目标上不同散射体的空间频率和幅度。这样,通过频率搜索方法可以获得超分辨率的无源雷达图像。仿真结果不仅验证了该方法优于现有的超分辨率算法,例如ESPRIT和RELAX,尤其是在信噪比(SNR)低且测量次数有限的情况下,而且还表明我们的方法无论目标是否在网格上,该方法都可以执行鲁棒的重建。

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