首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >FEATURES FOR DETECTING OBSCURED OBJECTS IN ULTRA-WIDEBAND (UWB) SAR IMAGERY USING A PHENOMENOLOGICAL APPROACH
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FEATURES FOR DETECTING OBSCURED OBJECTS IN ULTRA-WIDEBAND (UWB) SAR IMAGERY USING A PHENOMENOLOGICAL APPROACH

机译:现象学方法在超宽带(UWB)SAR影像中检测对象的功能

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摘要

We describe a technique that is based on phenomenological principles for detecting man-made objects in ultra-wideband (UWB) synthetic aperture radar (SAR) imagery. The UWB sensor (50 MHz to a GHz) provides penetration and high resolution necessary for detecting man-made objects that are obscured by some random media. Traditional 2-D pattern matching techniques are not effective since the SAR image of an object is distorted by the obscuring media. An electromagnetic model is used to predict the backscatter received from the scene objects. We show that the backscatter is highly dependent on the aspect angle of the incident wave on the object. Man-made objects exhibit specular reflections, at certain aspect angles while natural objects generally do not. Aspect-angle signatures of objects are established using a multi-aperture approach which essentially reconstructs the SAR image of an object over smaller subapertures of the full synthetic aperture. These signatures are matched to the object's polarimetric counterparts to establish feature vectors, which are used for detection. This procedure is applied to detection of man-made vehicles that are embedded in a deciduous forest and obscured by foliage. Results are presented using real data. Copyright (C) 1996 Pattern Recognition Society. [References: 17]
机译:我们描述了一种基于现象学原理的技术,用于在超宽带(UWB)合成孔径雷达(SAR)图像中检测人造物体。 UWB传感器(50 MHz至GHz)可提供检测某些随机介质遮挡的人造物体所需的穿透力和高分辨率。传统的2D模式匹配技术无效,因为对象的SAR图像会被遮挡介质扭曲。电磁模型用于预测从场景对象接收的反向散射。我们证明了反向散射高度依赖于物体上入射波的长宽角。人造物体在某些纵横比下会出现镜面反射,而自然物体通常不会。使用多孔径方法建立对象的纵横角签名,该方法实质上是在整个合成孔径的较小子孔径上重建对象的SAR图像。这些签名与对象的偏振匹配项相匹配,以建立用于检测的特征向量。此程序适用于检测埋在落叶林中并被树叶遮挡的人造车辆。使用真实数据显示结果。版权所有(C)1996模式识别学会。 [参考:17]

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