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Hierarchical extraction of urban objects from mobile laser scanning data

机译:从移动激光扫描数据中分层提取城市物体

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Point clouds collected in urban scenes contain a huge number of points (e.g., billions), numerous objects with significant size variability, complex and incomplete structures, and variable point densities, raising great challenges for the automated extraction of urban objects in the field of photogrammetry, computer vision, and robotics. This paper addresses these challenges by proposing an automated method to extract urban objects robustly and efficiently. The proposed method generates multi-scale supervoxels from 3D point clouds using the point attributes (e.g., colors, intensities) and spatial distances between points, and then segments the supervoxels rather than individual points by combining graph based segmentation with multiple cues (e.g., principal direction, colors) of the supervoxels. The proposed method defines a set of rules for merging segments into meaningful units according to types of urban objects and forms the semantic knowledge of urban objects for the classification of objects. Finally, the proposed method extracts and classifies urban objects in a hierarchical order ranked by the saliency of the segments. Experiments show that the proposed method is efficient and robust for extracting buildings, streetlamps, trees, telegraph poles, traffic signs, cars, and enclosures from mobile laser scanning (MLS) point clouds, with an overall accuracy of 92.3%.
机译:在城市场景中收集的点云包含大量点(例如,数十亿个),许多物体,这些物体具有明显的尺寸可变性,复杂而不完整的结构以及可变的点密度,这在摄影测量领域对自动提取城市物体提出了巨大挑战,计算机视觉和机器人技术。本文提出了一种自动方法来稳健而有效地提取城市物体,从而解决了这些挑战。所提出的方法使用点属性(例如颜色,强度)和点之间的空间距离从3D点云生成多尺度超体素,然后通过将基于图的分段与多个线索(例如,主角)相结合,对超体素而不是单个点进行分段方向,颜色)。所提出的方法定义了一组规则,用于根据城市对象的类型将段合并为有意义的单元,并形成城市对象的语义知识以进行对象分类。最后,所提出的方法以按段的显着性排序的等级顺序提取和分类城市对象。实验表明,该方法从移动激光扫描(MLS)点云中提取建筑物,路灯,树木,电杆,交通标志,汽车和围护结构是有效且鲁棒的,总精度为92.3%。

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