一种车载激光点云数据中道路自动提取方法

An Automatic Extraction Method of Road from Vehicle-Borne Laser Scanning Point Clouds

  • 摘要: 针对车载移动测量系统数据采集特点,构建车载激光点云扫描线索引,提出了一种基于扫描线索引的道路路面与路边点云稳健分类法。首先通过分析扫描线上不同地物剖面的空间分布特征,进行剖面激光点生长聚类,形成完整的地物剖面目标点集;然后根据点集的几何特征因子判断点集类型;最后利用相邻多条扫描线上路边点分布规律进行去噪。对车载移动测量系统获取的两份点云数据进行实验,路面与路边提取的平均完整率分别为94.4%、86%,平均准确率分别为98.9%、99.1%。实验分析表明,该方法能有效减少粗糙路面点的错误分类,适应不同的道路路边条件,降低独立地物对路边提取的干扰。

     

    Abstract: Laser scanning lines index are built from original vehicle-borne laser scanning data. An classification method for automatic extraction of road pavement and side is proposed. Firstly, through the analysis of the spatial distribution characteristics of different objects in scanning lines, a clustering of objects profile points are applied. Then, according to the geometric features of the point set, the type of point set is determined. Finally, the distribution of the edge points of the adjacent multiple scanning lines is used to de-noise. Two point cloud data provided by Vehicle Survey System are used in the experiment. The average integrity rate of road pavement and side extraction are 94.4%, 86%, the average accuracy rate are 98.9%, 99.1%.The experiment shows that this method can effectively decrease the error classification of pavement points, reduce the objects interference to the roadside extraction, and adapt to different road conditions of urban street.

     

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