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AUTOMATED BUILDING DETECTION IN DENSE POINT CLOUD AND UPDATE OF OPEN SOURCE DATA BASES

机译:密集点云中的自动建筑检测和开放源数据库的更新

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In this paper a method of detecting buildings in dense populated city areas using a three-dimensional model, produced by aerial images, is described. Further to the detection of the outline of the building, we exact information about the buildings height. The study area is the wider centre of Athens, Greece. Our aim is to exact 3D information for large area, in minimum time and minimum cost, in order to support opensource data bases, such as openstreetmap.org. The proposed methodology consists of three main stages. In the first part of the procedure, aerial images are used to produce a point cloud, using the Semi-Global dense matching algorithm. Following, we classify the objects in the point cloud by remote sensing and photogrammetric methods. The classification’s results are divided in three main classes: ground, vegetation and buildings. Having detected the buildings and their complexes we attempt to find the outlines of each separate building, depending on its level; different levels are considered as different buildings. After detecting individual buildings in the point cloud, a polygon is created around their outline. All polygons were compared to the building polygons available on openstreetmap.org, in order to evaluate the results. The number of levels of 100 buildings, in different parts of the city, was measured manually in order to evaluate the Z-dimension’s results, and openstreetmap.org was updated with that information. Further update and combination of the database created in the current process, with the one available on openstreetmap.org is yet under study.
机译:本文介绍了一种通过航空图像生成的三维模型在人口稠密的城市地区检测建筑物的方法。除了检测建筑物的轮廓外,我们还提供有关建筑物高度的准确信息。研究区域是希腊雅典的更广泛的中心。我们的目标是以最短的时间和最低的成本为大面积提供精确的3D信息,以支持开源数据库,例如openstreetmap.org。拟议的方法包括三个主要阶段。在该过程的第一部分中,使用半全局密集匹配算法将航拍图像用于生成点云。接下来,我们通过遥感和摄影测量方法对点云中的对象进行分类。分类的结果分为三个主要类别:地面,植被和建筑物。在检测到建筑物及其综合体后,我们尝试根据其级别查找每个单独建筑物的轮廓;不同级别被视为不同建筑物。在检测到点云中的各个建筑物后,将在其轮廓周围创建一个多边形。为了评估结果,将所有多边形与openstreetmap.org上可用的建筑多边形进行了比较。为了评估Z维度的结果,手动测量了城市不同地区的100座建筑物的层数,并使用该信息更新了openstreetmap.org。当前过程中创建的数据库的进一步更新和组合以及openstreetmap.org上可用的数据库仍在研究中。

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