Radar & Electronic Warfare, QinetiQ, Malvern WR14 3PS, UK.
Centre for Electronic Warfare, Information and Cyber, Cranfield University, Defence Academy of the United Kingdom, Shrivenham SN6 8LA, UK.
Sensors (Basel). 2023 Jan 9;23(2):732. doi: 10.3390/s23020732.
Multirotor Unmanned Air Systems (UAS) represent a significant improvement in capability for Synthetic Aperture Radar (SAR) imaging when compared to traditional, fixed-wing, platforms. In particular, a swarm of UAS can generate significant measurement diversity through variation of spatial and frequency collections across an array of sensors. In such imaging schemes, the image formation step is challenging due to strong extended sidelobe; however, were this to be effectively managed, a dramatic increase in image quality is theoretically possible. Since 2015, QinetiQ have developed the RIBI system, which uses multiple UAS to perform short-range multistatic collections, and this requires novel near-field processing to mitigate the high sidelobes observed and form actionable imagery. This paper applies a number of algorithms to assess image reconstruction of simulated near-field multistatic SAR with an aim to suppress sidelobes observed in the RIBI system, investigating techniques including traditional SAR processing, regularised linear regression, compressive sensing. In these simulations presented, Elastic net, Orthogonal Matched Pursuit, and Iterative Hard Thresholding all show the ability to suppress sidelobes while preserving accuracy of scatterer RCS. This has also lead to a novel processing approach for reconstructing SAR images based on the observed Elastic net and Iterative Hard Thresholding performance, mitigating weaknesses to generate an improved combined approach. The relative strengths and weaknesses of the algorithms are discussed, as well as their application to more complex real-world imagery.
多旋翼无人机系统 (UAS) 在合成孔径雷达 (SAR) 成像方面的能力与传统的固定翼平台相比有了显著的提高。特别是,一组 UAS 可以通过在传感器阵列中变化空间和频率收集来产生显著的测量多样性。在这种成像方案中,由于强烈的扩展旁瓣,图像形成步骤具有挑战性;然而,如果能够有效地管理,图像质量就有可能得到显著提高。自 2015 年以来,QinetiQ 开发了 RIBI 系统,该系统使用多个 UAS 执行短程多基地收集,这需要新的近场处理来减轻观察到的高旁瓣并形成可操作的图像。本文应用了许多算法来评估模拟近场多基地 SAR 的图像重建,目的是抑制 RIBI 系统中观察到的旁瓣,研究的技术包括传统的 SAR 处理、正则化线性回归、压缩感知。在呈现的这些模拟中,弹性网络、正交匹配追踪和迭代硬阈值都显示出了抑制旁瓣的能力,同时保持了散射体 RCS 的准确性。这也导致了一种新的处理方法,用于根据观察到的弹性网络和迭代硬阈值性能来重建 SAR 图像,从而减轻弱点以生成改进的组合方法。讨论了算法的相对优势和弱点,以及它们在更复杂的实际图像中的应用。