Estimating the heightmaps of buildings and vegetation in single remotely sensed images is a challenging problem. Effective solutions to this problem can comprise the stepping stone for solving complex and demanding problems that require 3D information of aerial imagery in the remote sensing discipline, which might be expensive or not feasible to require. We propose a task-focused Deep Learning (DL) model that takes advantage of the shadow map of a remotely sensed image to calculate its heightmap. The shadow is computed efficiently and does not add significant computation complexity. The model is trained with aerial images and their Lidar measurements, achieving superior performance on the task. We validate the model with a dataset covering a large area of Manchester, UK, as well as the 2018 IEEE GRSS Data Fusion Contest Lidar dataset. Our work suggests that the proposed DL architecture and the technique of injecting shadows information into the model are valuable for improving the heightmap estimation task for single remotely sensed imagery.
翻译:估算单一遥感图像中建筑物和植被的高度分布图是一个具有挑战性的问题。这一问题的有效解决办法包括解决复杂和艰巨问题的垫脚石,这些问题需要遥感学科的航空图像3D信息,可能费用昂贵或不可行。我们提议了一个以任务为重点的深层学习模型,利用遥感图像的影子地图来计算其高度分布。阴影是高效计算的,不会增加重要的计算复杂性。模型经过航空图像及其利达尔测量的培训,在任务上取得了优异的绩效。我们用一个数据集验证模型,覆盖英国曼彻斯特大片地区以及2018年IEEEE GRSS Data Fusion Contestard Lidar数据集。我们的工作表明,拟议的DL结构以及将影子信息注入模型的方法对于改进单一遥感图像的高度分布估计任务很有价值。