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THE LOW BACKSCATTERING TARGETS CLASSIFICATION IN URBAN AREAS

机译:城市地区的低反向散射目标分类

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The Polarimetric and Interferometric Synthetic Aperture Radar (POLINSAR) is widely used in urban area nowadays. Because of the physical and geometric sensitivity, the POLINSAR is suitable for the city classification, power-lines detection, building extraction, etc. As the new X-band POLINSAR radar, the china prototype airborne system, XSAR works with high spatial resolution in azimuth (0.1m) and slant range (0.4m). In land applications, SAR image classification is a useful tool to distinguish the interesting area and obtain the target information. The bare soil, the cement road, the water and the building shadow are common scenes in the urban area. As it always exists low backscattering sign objects (LBO) with the similar scattering mechanism (all odd bounce except for shadow) in the XSAR images, classes are usually confused in Wishart-H-Alpha and Freeman-Durden methods. It is very hard to distinguish those targets only using the general information. To overcome the shortage, this paper explores an improved algorithm for LBO refined classification based on the Pre-Classification in urban areas. Firstly, the Pre-Classification is applied in the polarimetric datum and the mixture class is marked which contains LBO. Then, the polarimetric covariance matrix C3 is re-estimated on the Pre-Classification results to get more reliable results. Finally, the occurrence space which combining the entropy and the phase-diff standard deviation between HH and VV channel is used to refine the Pre-Classification results. The XSAR airborne experiments show the improved method is potential to distinguish the mixture classes in the low backscattering objects.
机译:偏振和干涉式合成孔径雷达(Polinsar)现在广泛用于城市地区。由于物理和几何灵敏度,PONINAR适用于城市分类,电力线检测,建筑提取等作为新的X频段PORINSAR雷达,中国原型机载系统,XSAR在方位角的高空间分辨率工作(0.1米)和倾斜范围(0.4米)。在土地应用中,SAR图像分类是区分有趣区域并获得目标信息的有用工具。裸露的土壤,水泥道,水和建筑阴影是市区的常见场景。由于它总是存在低背散射标志对象(LBO),其中XSAR图像中的类似散射机制(除了阴影之外的所有奇怪反射),类通常在Wishart-H-Alpha和Freeman-Durden方法中混淆。只有使用一般信息,才很难区分这些目标。为了克服短缺,本文探讨了基于城市地区预先分类的LBO精制分类改进算法。首先,将预分类施加在偏振基数据中,并标记混合物类,其含有LBO。然后,在预分类结果上重新估计Polarimetric协方差矩阵C3以获得更可靠的结果。最后,使用它们在HH和VV信道之间组合熵和相位差标准偏差的发生空间来优化预分类结果。 XSAR空中实验表明,改进的方法是区分低背散射物体中混合物类的可能性。

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