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Comprehensive Automated 3D Urban Environment Modelling Using Terrestrial Laser Scanning Point Cloud

机译:使用地面激光扫描点云的综合自动化3D城市环境建模

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In this paper we present a novel street scene modelling framework, which takes advantage of 3D point cloud captured by a high definition LiDAR laser scanner. We propose an automatic and robust approach to detect, segment and classify urban objects from point clouds hence reconstructing a comprehensive 3D urban environment model. Our system first automatically segments grounds point cloud. Then building facades will be detected by using binary range image processing. Remained point cloud will be grouped into voxels and subsequently transformed into super voxels. Local 3D features are extracted from super voxels and classified by trained boosted decision trees with semantic classes e.g. tree, pedestrian, and car. Given labeled point cloud the proposed algorithm reconstructs the realistic model in two phases. Firstly building facades will be rendered by ShadVis algorithm. In the second step we apply a novel and fast method for fitting the solid predefined template mesh models to non-building labeled point cloud. The proposed method is evaluated both quantitatively and qualitatively on a challenging TLS NAVTEQ True databases.
机译:在本文中,我们提出了一种新颖的街道场景建模框架,该框架利用了高清LiDAR激光扫描仪捕获的3D点云。我们提出了一种自动且鲁棒的方法来检测,分割和分类来自点云的城市对象,从而重建了一个全面的3D城市环境模型。我们的系统首先自动分割地面点云。然后,将通过使用二进制范围图像处理来检测建筑物的外墙。剩余点云将被分组为体素,随后将其转换为超级体素。从超级体素中提取局部3D特征,并通过训练后的增强决策树将其分类为语义类,例如树,行人和汽车。给定带标签的点云,提出的算法分两个阶段重建现实模型。首先,将通过ShadVis算法渲染建筑立面。在第二步中,我们应用了一种新颖且快速的方法来将实体预定义模板网格模型拟合到非建筑物标记点云。在具有挑战性的TLS NAVTEQ True数据库上,对所提出的方法进行了定量和定性评估。

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