Multiple Target Measurements: Bayesian Framework for Moving Object Detection in Mimo Radar

Bastian Eisele, Ali Bereyhi, R. Müller
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Abstract

Utilizing compressive sensing (CS), one can significantly reduce the number of required antenna elements in MIMO radar systems, while preserving a high spatial resolution. Most CS-based studies focus on individual processing of a single set of measurements collected from an stationary scene. In this paper, we propose a new scheme called multiple target measurements (MTM). This scheme uses the target movement to collect multiple sets of measurements from jointly sparse stationary scenes. Invoking approximate message passing, we develop a Bayesian-like iterative algorithm to recover the sparse scenes jointly. Our analytical and numerical investigations demonstrate that MTM can further reduce the array size required to achieve a desired spatial resolution.
多目标测量:Mimo雷达运动目标检测的贝叶斯框架
利用压缩感知(CS),可以显著减少MIMO雷达系统中所需天线元件的数量,同时保持高空间分辨率。大多数基于cs的研究侧重于从固定场景中收集的一组测量数据的单独处理。本文提出了一种新的多目标测量(MTM)方案。该方案利用目标运动从联合稀疏静止场景中收集多组测量值。采用近似消息传递的方法,提出了一种类贝叶斯迭代算法来联合恢复稀疏场景。我们的分析和数值研究表明,MTM可以进一步减小阵列尺寸,以达到理想的空间分辨率。
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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