基于自适应体散射模型的PolSAR图像建筑密度估计

Xiaofang Xu, Lamei Zhang, Ligang Zou, Lin-shan Yuan
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引用次数: 1

摘要

建筑密度是指建筑面积与基础面积之比,在城市基础设施规划和管理中具有重要意义。极化合成孔径雷达(PolSAR)图像提供了丰富的被探测区域信息,使建筑密度检测更加方便和准确。森林密度的估计很大程度上取决于建筑物检测的精度,由于森林和建筑物的混淆,这是PolSAR图像解译中的一个难题。针对现有解译方法不能准确区分建筑物和森林的问题,本文提出了一种基于模型分解的自适应体散射模型来帮助检测建筑物面积。结合支持向量机算法、标记控制分水岭算法和回归分析,可以更精确、更全面地计算建筑密度比。对欧伯法芬霍芬的l波段PolSAR数据进行了实验。结果表明,该方法在建筑面积和森林划分方面具有较好的性能,能够以较高的精度检测建筑密度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building density estimation using PolSAR images based on adaptive volume scattering model
Building density, which is ratio of building area to basal area, is of great significance in infrastructure planning and management for cities. Polarimetric synthetic aperture radar (PolSAR) images, delivering abundant information of detected areas, make the building density detection more convenient and accurate. The estimation of the density depends largely on the precision of building detection, which is a tough problem in PolSAR image interpretation because of the confusion of forest and buildings. Since the existing interpretation methods cannot distinguish buildings from forest accurately, an adaptive volume scattering model for the model-based decomposition is proposed in this study to help detect the building area. Together with the support vector machine algorithm, marker-controlled watershed algorithm and regression analysis, the ratio of building density can be calculated more precisely and comprehensively. Experiments on the ESAR L-band PolSAR data of the Oberpfaffenhofen have been taken out. The results demonstrate that the proposed method has a better performance in division of building areas and forest and can detect the building density with a higher degree of precision.
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