Clutter estimation based on compressed sensing in bistatic MIMO radar

Peng Chen, Ping Zhan, Lenan Wu
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引用次数: 4

Abstract

In this paper, the clutter estimation problem in the bistatic multiple-input and multiple-output (MIMO) radar system is considered, and a novel compressed sensing (CS)-based model is proposed to describe the clutter by exploiting the clutter sparsity in the angle domain. Then, the CS-based methods are adopted to reconstruct the sparse clutter, and to estimate the clutter scattering coefficients and angles. Additionally, different from the traditionally colocated MIMO radar system with the antenna distance being half of wavelength, we show that the optimal antenna distance in the CS-based radar system can be obtained by minimizing the mutual coherence of the dictionary matrix. Moreover, since the sparse reconstruction performance depends on the geographical positions of the clutter scatterers, an indirect method based on the mutual coherence is proposed to measure the estimation performance, and to optimize the radar parameters. Simulation results show that the CS-based method can estimate the clutter information efficiently, and the better estimation performance is achieved by optimizing the radar parameters.
基于压缩感知的双基地MIMO雷达杂波估计
研究了双基地多输入多输出(MIMO)雷达系统中的杂波估计问题,提出了一种基于压缩感知(CS)的杂波描述模型,利用角度域的杂波稀疏性来描述杂波。然后,采用基于cs的方法重构稀疏杂波,估计杂波散射系数和散射角;此外,与传统的天线距离为波长一半的多址多址雷达系统不同,我们表明cs雷达系统的最优天线距离可以通过最小化字典矩阵的相互相干性来获得。此外,由于稀疏重建性能与杂波散射体的地理位置有关,提出了一种基于互相干性的间接方法来衡量估计性能,并对雷达参数进行优化。仿真结果表明,该方法能够有效地估计杂波信息,并通过优化雷达参数获得了较好的估计效果。
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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