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Adaptive target detection in foliage-penetrating SAR images using alpha-stable models

机译:使用alpha稳定模型的穿透树叶的SAR图像中的自适应目标检测

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摘要

Detecting targets occluded by foliage in foliage-penetrating (FOPEN) ultra-wideband synthetic aperture radar (UWB SAR) images is an important and challenging problem. Given the different nature of target returns in foliage and nonfoliage regions and very low signal-to-clutter ratio in UWB imagery, conventional detection algorithms fail to yield robust target detection results. A new target detection algorithm is proposed that (1) incorporates symmetric alpha-stable (S/spl alpha/S) distributions for accurate clutter modeling, (2) constructs a two-dimensional (2-D) site model for deriving local context, and (3) exploits the site model for region-adaptive target detection. Theoretical and empirical evidence is given to support the use of the S/spl alpha/S model for image segmentation and constant false alarm rate (CFAR) detection. Results of our algorithm on real FOPEN images collected by the Army Research Laboratory are provided.
机译:在树叶穿透(FOPEN)超宽带合成孔径雷达(UWB SAR)图像中检测树叶遮挡的目标是一个重要且具有挑战性的问题。鉴于树叶和非树叶区域目标返回的不同性质以及UWB图像中信杂比非常低,常规检测算法无法获得可靠的目标检测结果。提出了一种新的目标检测算法,该算法(1)合并对称的α稳定(S / spl alpha / S)分布以进行精确的杂波建模;(2)构造二维(2-D)站点模型以导出局部上下文, (3)利用站点模型进行区域自适应目标检测。提供了理论和经验证据来支持使用S / spl alpha / S模型进行图像分割和恒定误报率(CFAR)检测。提供了我们的算法在陆军研究实验室收集的真实FOPEN图像上的结果。

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