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On-street Parking Statistics Using LiDAR Mobile Mapping

机译:使用LIDAR移动映射的街边停车统计数据

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This paper presents a procedure to extract parking statistics from a 3D point cloud recorded with two 2D LiDAR sensors mounted on a vehicle. Policy makers can use these parking statistics to reduce parking search traffic in cities by identifying parking characteristics and adjusting current parking rules and policies. The extraction procedure basically consists of an object segmentation and a classification step. For object segmentation, a region growing approach is used to extract the ground surface and to separate distinct objects. For object classification, a random forest classifier is employed with various local and global point features to identify the characteristic shape of vehicles. Comparing the point clouds of both LiDAR scanners allows the exclusion of moving vehicles from the result. A second segmentation in a finer raster after classification is used to reduce the occurrence of undersegmentation. The procedure is evaluated on a 5.5 km track including a residential and a commercial district with parallel and perpendicular parking in a large city in Germany. The results reveal reliable detection of parked vehicles in most situations and therefore approve its suitability for parking studies. Multiple statistics like vehicle dimensions, parking gaps and temporal behavior can be extracted from this procedure. As an example, the occupancy of street segments in the course of one day is presented.
机译:本文提出了一种方法,用于从记录的3D点云中提取停放统计数据,其中包含安装在车辆上的两个2D激光雷达传感器。政策制定者可以通过识别停车特性和调整当前停车规则和政策来使用这些停车统计来减少城市的停车搜索流量。提取过程基本上由对象分割和分类步骤组成。对于对象分割,使用区域生长方法来提取地面并分离不同的物体。对于对象分类,随机林分类器用于各种局部和全局点特征,以识别车辆的特征形状。比较LIDAR扫描仪的点云允许从结果中排除移动的车辆。分类后更精细的光栅中的第二分割用于减少缺省的发生。该程序在5.5公里的轨道上进行评估,包括住宅和商业区,并在德国的一个大城市中的平行和垂直停车场。结果揭示了大多数情况下停放车辆的可靠检测,因此批准了其适用于停车研究。可以从该过程中提取车辆尺寸,停车差距和时间行为等多种统计数据。例如,展示了一天的街头段的占用。

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