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Detecting Building-Level Changes of a City Using Street Images and a 2D City Map

机译:使用街道图像和2D城市地图检测城市的建筑物级别变化

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This paper presents a method for detecting city-scale changes of a city from its street images and a 2D map. Using SfM to reconstruct point cloud of the structures of the city, the method estimates the existence of each building by matching the point cloud with the 3D building structures recovered from the map. There are multiple difficulties, such as inaccuracy of the recovered building structures, large differences in observation and thus in point cloud size of individual buildings, and mutual dependency of building existences due to potential occlusions. To solve these, we develop a model of how point cloud is generated in the sequential processes of SfM, an observation model of a building wall, and a greedy iterative approach to cope with the mutual dependency. We experimentally apply the method to the cities damaged by the tsunami that struck Japan in 2011. The results show the effectiveness of the method.
机译:本文提出了一种从街道图像和二维地图中检测城市规模变化的方法。使用SfM重建城市结构的点云,该方法通过将点云与从地图中恢复的3D建筑结构进行匹配来估计每个建筑物的存在。存在多种困难,例如恢复的建筑结构的不准确性,各个建筑物的观测(因此点云大小)存在较大差异,以及由于潜在的遮挡而导致建筑物存在的相互依赖性。为了解决这些问题,我们开发了一个模型,该模型如何在SfM的顺序过程中生成点云,建筑物墙的观察模型以及用于应对相互依赖性的贪婪迭代方法。我们将这种方法实验性地应用于2011年遭受日本海啸袭击的城市。结果证明了该方法的有效性。

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