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Large-scale Building Height Estimation from Single VHR SAR image Using Fully Convolutional Network and GIS building footprints

机译:使用完全卷积网络和GIS构建脚印的单vhr sar图像的大规模建筑高度估计

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Height reconstruction of large-scale buildings from single very high resolution (VHR) SAR image is of great interest especially in applications with temporal restrictions. The problem is highly challenging due to the inherent complexity of SAR images, e.g., side-looking geometry and different microwave scattering contributions. In this work, we present a framework to estimate large-scale building heights from single VHR SAR image. The individual buildings are defined by GIS data, and deep neural network is used to segment wall area in SAR image. The wall layover length is then converted to height and assigned to each building footprint. Experiment in center Berlin area shows results of overall instance height accuracy around 3.51 meters.
机译:从单一非常高分辨率(VHR)SAR图像的大型建筑物的高度重建非常兴趣,特别是在具有时间限制的应用中。由于SAR图像的固有复杂性,例如侧面看几何和不同的微波散射贡献,问题是强大的挑战性。在这项工作中,我们介绍了一个框架来估计来自单个VHR SAR图像的大规模建筑高度。各个建筑物由GIS数据定义,深神经网络用于在SAR图像中划分墙区域。然后将墙壁铺设长度转换为高度并分配给每个建筑物足迹。中心柏林地区的实验显示总体实例高度精度的结果约为3.51米。

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