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Probability distribution mixture model for detection of targets in high-resolution SAR images

机译:高分辨率SAR图像中目标检测的概率分布混合模型

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In this paper, the detection of close targets in heterogeneous clutter in high-resolution SAR images is investigated. We adopt a probability distribution mixture model where each pixel intensity image is characterised by two probability density functions: one related to the targets and one related to the background clutter. A specific detection threshold, based on the estimates of the mixture parameters, is used. The statistical characterisation of SAR images modeling is a key issue for detection. The clutter is modelled using the K distribution that is a flexible tool over non-homogenous areas. We show that our method is able to detect close targets at constant false alarm ratio without making any assumptions about their size and their spatial configuration.
机译:本文研究了高分辨率SAR图像中杂波附近目标的检测。我们采用概率分布混合模型,其中每个像素强度图像都具有两个概率密度函数:一个与目标有关,一个与背景杂波有关。使用基于混合物参数估计值的特定检测阈值。 SAR图像建模的统计表征是检测的关键问题。使用K分布对杂波建模,该分布是非均匀区域上的灵活工具。我们证明了我们的方法能够以恒定的误报率检测近距离目标,而无需对其大小和空间配置做任何假设。

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