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An Information Elasticity Framework for the Adaptive Matched Filter

机译:自适应匹配滤波器的信息弹性框架

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The adaptive matched filter (AMF) uses a number of training samples observed by the radar to estimate the unknown disturbance covariance matrix of a cell under test. In general, as the number of homogeneous training samples increases, the detection performance of the AMF improves up to a theoretical limit (defined by the performance of a matched filter detector where the disturbance covariance is known). However, radar data are nonhomogeneous in practice. Consequently, a high number of training samples is typically undesirable, since nonhomogeneous training data cause detection performance to suffer. Thus, a decision maker (DM) must consider these tradeoffs when selecting this number of training samples, along with other decision parameters for the AMF. Using the concept of information elasticity, this tradeoff behavior is characterized for decisions that are relevant to a DM. A simple user defined constraint function is proposed, characterizing the relative cost of selecting different decisions. Using a multi-objective optimization (MOO) technique known as compromise programming, information overload is observed, in that increasing the cost of decisions improves performance up to a point, beyond which increasing the cost no longer provides meaningful benefit. Using this framework, a cost-efficient solution is selected.
机译:自适应匹配过滤器(AMF)使用雷达观察到的许多训练样本来估计正在测试的细胞的未知干扰协方差矩阵。通常,随着均匀训练样本的数量增加,AMF的检测性能提高了理论极限(通过匹配的滤波器检测器的性能而被众知)。然而,雷达数据在实践中是非均匀的。因此,通常不希望的训练样本是不希望的,因为非均匀训练数据导致检测性能受到影响。因此,决策者(DM)必须在选择此次培训样本时考虑这些权衡,以及AMF的其他决策参数。使用信息弹性的概念,这种权衡行为的特点是与DM相关的决定。提出了一种简单的用户定义约束函数,表征了选择不同决策的相对成本。使用称为易核对编程的多目标优化(MOO)技术,观察到信息过载,因此提高决策成本提高了一点,超出了增加成本不再提供有意义的益处。使用此框架,选择了经济高效的解决方案。

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