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Characterizing Detection Thresholds Using Extreme Value Theory in Compressive Noise Radar Imaging

机译:在压缩噪声雷达成像中使用极值理论表征检测阈值

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摘要

An important outcome of radar signal processing is the detection of the presence or absence of target reflections at each pixel location in a radar image. In this paper, we propose a technique based on extreme value theory for characterizing target detection in the context of compressive sensing. In order to accurately characterize target detection in radar systems, we need to relate detection thresholds and probabilities of false alarm. However, when convex optimization algorithms are used for compressive radar imaging, the recovered signal may have unknown and arbitrary probability distributions. In such cases, we resort to Monte Carlo simulations to construct empirical distributions. Computationally, this approach is impractical for computing thresholds for low probabilities of false alarm. We propose to circumvent this problem by using results from extreme-value theory.
机译:雷达信号处理的重要结果是检测雷达图像中每个像素位置是否存在目标反射。在本文中,我们提出了一种基于极值理论的技术,用于在压缩感测环境下表征目标检测。为了准确地表征雷达系统中的目标检测,我们需要关联检测阈值和虚警概率。但是,当凸优化算法用于压缩雷达成像时,恢复的信号可能具有未知和任意概率分布。在这种情况下,我们求助于蒙特卡洛模拟来构建经验分布。从计算上来说,这种方法对于计算误报警概率较低的阈值是不切实际的。我们建议通过使用极值理论的结果来规避此问题。

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