首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >An algorithm for automatic detection of pole-like street furniture objects from Mobile Laser Scanner point clouds
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An algorithm for automatic detection of pole-like street furniture objects from Mobile Laser Scanner point clouds

机译:一种从移动激光扫描仪点云自动检测杆状街道家具物体的算法

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摘要

An algorithm for automatic extraction of pole-like street furniture objects using Mobile Laser Scanner data was developed and tested. The method consists in an initial simplification of the point cloud based on the regular voxelization of the space. The original point cloud is spatially discretized and a version of the point cloud whose amount of data represents 20-30% of the total is created. All the processes are carried out with the reduced version of the data, but the original point cloud is always accessible without any information loss, as each point is linked to its voxel. All the horizontal sections of the voxelized point cloud are analyzed and segmented separately. The two-dimensional fragments compatible with a section of a target pole are selected and grouped. Finally, the three-dimensional voxel representation of the detected pole-like objects is identified and the points from the original point cloud belonging to each pole-like object are extracted. The algorithm can be used with data from any Mobile Laser Scanning system, as it transforms the original point cloud and fits it into a regular grid, thus avoiding irregularities produced due to point density differences within the point cloud. The algorithm was tested in four test sites with different slopes and street shapes and features. All the target pole-like objects were detected, with the only exception of those severely occluded by large objects and some others which were either attached or too close to certain features.
机译:开发并测试了一种使用Mobile Laser Scanner数据自动提取杆状街道家具物体的算法。该方法包括基于空间的常规体素化对点云进行初始简化。将原始点云在空间上离散化,然后创建一个点云版本,其数据量表示总数的20%至30%。所有过程都使用简化版本的数据执行,但是原始点云始终可以访问,而不会丢失任何信息,因为每个点都链接到其体素。对体素化点云的所有水平部分进行了分析和分段。选择并分组与目标极的一部分兼容的二维片段。最后,识别检测到的极点对象的三维体素表示,并从原始点云中提取属于每个极点对象的点。该算法可与来自任何移动激光扫描系统的数据一起使用,因为它可以转换原始点云并将其拟合为规则网格,从而避免了由于点云内的点密度差异而产生的不规则性。该算法已在四个具有不同坡度,街道形状和特征的测试地点进行了测试。所有目标杆状物体都被检测到,唯一的例外是那些被大型物体严重阻塞的物体,还有一些附着或太靠近某些特征的物体。

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