Space-time adaptive processing (STAP) with limited sample support

Ping Li, H. Schuman, J.H. Micheis, B. Himed
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引用次数: 9

Abstract

A particularly active area of research in space-time adaptive processing (STAP) involves scenarios in which the sample support available for training the adaptive processor is limited. Several of these scenarios are of significant current interest. One of those scenarios is an environment in which targets are potentially so dense (relative to the sample support requirements) that they bias the weight training, thereby causing significant performance degradation of the STAP processor. Such environments include those containing roads and highways, for example. Other related problems include scenarios in which the clutter itself is not homogeneous over significant ranges, e.g. conditions where the terrain type is highly variable, urban environments, etc. One technique that addresses the low-sample support conditions described above is the parametric adaptive matched filter (PAMF). Performance of this technique and several contending. STAP approaches are demonstrated using the KASSPER challenge dataset only.
有限样本支持的时空自适应处理
时空自适应处理(STAP)的一个特别活跃的研究领域涉及到训练自适应处理器可用的样本支持有限的情况。其中几个场景是当前的重要关注点。其中一种情况是,目标可能非常密集(相对于样本支持需求),从而使权重训练产生偏差,从而导致STAP处理器的性能显著下降。例如,这些环境包括有道路和高速公路的环境。其他相关的问题还包括:杂波本身在很大范围内不均匀的情况,例如地形类型高度变化的情况,城市环境等。解决上述低样本支持条件的一种技术是参数自适应匹配滤波器(PAMF)。本技术的性能与几种技术相比较。STAP方法仅使用KASSPER挑战数据集进行演示。
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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