基于脉冲的前视探地雷达高分辨率成像

Ode Ojowu, Luzhou Xu, Jian Li, John M. M. Anderson, L. Nguyen, P. Stoica
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引用次数: 8

摘要

前视探地雷达(FLGPR)具有多种应用,其中之一包括用于探测地雷和其他埋藏的简易爆炸装置(ied)。该雷达合成孔径雷达(SAR)图像的标准生成方法是反向投影(BP)算法,该算法存在分辨率差和高旁瓣问题。在本文中,我们考虑使用稀疏迭代协方差估计(SPICE)算法和通过迭代最小化的备用学习(SLIM)算法生成FLGPR的稀疏高分辨率图像。预处理步骤包括将接收到的数据正交投影到与感兴趣区域相关的子空间上,以降低数据的维数并减少杂波。SLIM和SPICE算法不需要用户参数,能够提供分辨率更高的SAR图像。我们还使用了众所周知的基于时域信号模型的CLEAN方法进行成像。我们通过模拟数据证明SPICE和SLIM算法比CLEAN和标准BP提供更高的分辨率。通过同步脉冲重建(SIRE)雷达收集的真实数据进行成像,这是一种由陆军研究实验室(ARL)开发的多输入多输出(MIMO) FLGPR雷达,也被提出并用于分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Resolution Imaging for Impulse-Based Forward-Looking Ground Penetrating Radar
Forward-Looking Ground Penetrating Radar (FLGPR) has multiple applications, one of which includes its use for detecting landmines and other buried improvised explosive devices (IEDs). The standard method for generating synthetic aperture radar (SAR) images for this radar is the backprojection (BP) algorithm, which has poor resolution and high sidelobe problems. In this paper, we consider using the Sparse Iterative Covariance-based Estimation (SPICE) algorithm and the Spare Learning via Iterative Minimization (SLIM) algorithm for generating sparse high-resolution images for FLGPR. A pre-processing step, which involves an orthogonal projection of the received data onto a subspace related to the region of interest is performed, for decreasing the dimension of the data and for clutter reduction. The SLIM and SPICE algorithms are user-parameter free, and are capable of providing SAR images with improved resolution. We also use the well-known CLEAN approach for imaging based on a proposed signal model in the time domain. We show using simulated data that the SPICE and SLIM algorithms provide higher resolution than CLEAN and the standard BP. Imaging using real data collected via the Synchronous Impulse Reconstruction (SIRE) radar, a multiple-input multiple-output (MIMO) FLGPR radar developed by the Army Research Laboratory (ARL), is also presented and used for analysis.
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