非特征分析快速投影技术在STAP中的应用

C. Gierull, B. Balaji
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引用次数: 2

摘要

在机载或天基雷达的地面监视中,希望能够在严重的地面杂波中探测到小型和缓慢移动的目标。在作战运动目标指示系统中,由于干扰环境的快速变化,杂波滤波系数需要频繁更新。研究了不同快速全自适应时空处理器(STAP)的小样本性能,并将其与最优检测器性能进行了比较。这些先前提出的技术,称为基于矩阵变换的投影(MTP)和精益矩阵反演(LMI),最初是为了在多单元相控阵雷达中提供快速干扰抑制而开发的。对于这种应用,它们已被证明具有接近最佳性能的操作,但在大多数实际情况下,与最佳检测器相比,计算费用大大降低。本文的研究重点是在只有很少的数据样本可用于适应(更新)杂波滤波系数时所取得的性能。
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Application of fast projection techniques without eigenanalysis to STAP
In ground surveillance from an airborne or space-based radar it is desirable to be able to detect small and slowly moving targets, within severe ground clutter. For operational moving target indication (MTI) systems the clutter filter coefficients have to be updated frequently due to rapidly changing interference environment. This paper examines the small sample size performance of different fast fully adaptive space-time processors (STAP) and compares it to the optimum-detector performance. These previously proposed techniques, named matrix transformation based projection (MTP) and lean matrix inversion (LMI), were originally developed to provide fast jammer suppression in phased array radars with many elements. For this application they have been proven to operate with near-optimum performance, yet with a computational expense extremely reduced from that of the optimum detector in most practical cases. The investigation herein focuses on the performance achieved when only a very few data samples are available to adapt (update) the clutter filter coefficient.
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