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An improved building detection approach using L-band POLSAR two-dimensional time-frequency decomposition over oriented built-up areas

机译:在定向建筑物区域上使用L波段POLSAR二维时频分解的改进建筑物检测方法

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The objective of this study is to efficiently extract detailed information about various man-made targets in oriented built-up areas using polarimetric synthetic aperture radar (POLSAR) images. This paper develops an improved approach for building detection by utilizing Two-Dimensional Time-Frequency (2-D TF) decomposition. This method performs outstandingly in distinguishing between man-made and natural targets based on the isotropic behaviors, frequency-sensitive responses, and scattering mechanisms of objects. The proposed method can preserve the spatial resolution and exploit the advantages of TF decomposition; specifically, the exact outlines of buildings can be effectively located, and more types of features (e.g., flat roofs, roads, and walls that are oblique to the radar illumination) can be distinguished from forests in complex built-up areas by 2-D TF decomposition. The coarser-resolution subaperture images that are produced in the azimuth direction, which correspond to different looking angles, are beneficial for detecting man-made structures with main scattering centers oriented at oblique angles with respect to the radar illumination. In the range direction, the obtained subaperture images, which correspond to various observation frequencies, can be helpful in distinguishing flat roofs and roads from forests. This method was successfully implemented to analyze both NASA/JPL L-band AIRSAR and L-band EMISAR data sets. The building detection results of the proposed method exhibit a significant improvement over those of other methods and reach an overall accuracy over 80%, with approximately 20% higher than the accuracies of K-means clustering and the entropy/alpha-Wishart classifier and approximately 10% higher than the accuracy of the support vector machine method. Moreover, building details can be precisely detected, obliquely oriented buildings can be identified, and the distinction between buildings and forests is significantly improved, as both visually and statistically indicated. This method is highly adaptable and has substantial application value.
机译:这项研究的目的是使用极化合成孔径雷达(POLSAR)图像有效地提取定向建筑物区域内各种人造目标的详细信息。本文利用二维时频(2-D TF)分解开发了一种改进的建筑物检测方法。该方法在基于各向同性行为,频率敏感响应和对象的散射机制来区分人造目标和自然目标方面表现出色。该方法可以保留空间分辨率,并可以利用TF分解的优势。具体而言,可以有效地定位建筑物的确切轮廓,并且可以通过2D将复杂类型的特征(例如,平坦的屋顶,道路和倾斜于雷达照明的墙壁)与复杂建成区中的森林区分开来TF分解。沿方位角方向生成的,对应于不同视角的较高分辨率子孔径图像,对于检测人造散射中心相对于雷达照明呈倾斜角度的主散射中心很有帮助。在范围方向上,获得的对应于各种观察频率的子孔径图像有助于区分平坦的屋顶和道路与森林。该方法已成功实施,可以分析NASA / JPL L波段AIRSAR和L波段EMISAR数据集。提出的方法的建筑物检测结果显示出比其他方法显着的改进,并且达到了80%以上的总体准确度,比K均值聚类和熵/α-Wishart分类器的准确度高出约20%,而准确率约为10比支持向量机方法的精度高%。此外,如在视觉和统计上所指示的,可以精确地检测建筑物的细节,可以识别倾斜的建筑物,并且显着改善了建筑物和森林之间的区别。该方法适应性强,具有重要的应用价值。

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