College of Land and Environment, Shenyang Agricultural University, Shenyang, China.
School of Transportation Engineering, Shenyang Jianzhu University, Shenyang, China.
PLoS One. 2020 May 29;15(5):e0232778. doi: 10.1371/journal.pone.0232778. eCollection 2020.
The LiDAR technology is a means of urban 3D modeling in recent years, and the extraction of buildings is a key step in urban 3D modeling. In view of the complexity of most airborne LiDAR building point cloud extraction algorithms that need to combine multiple feature parameters, this study proposes a building point cloud extraction method based on the combination of the Point Cloud Library (PCL) region growth segmentation and the histogram. The filtered LiDAR point cloud is segmented by using the PCL region growth method, and then the local normal vector and direction cosine are calculated for each cluster after segmentation. Finally, the histogram is generated to effectively separate the building point cloud from the non-building.Two sets of airborne LiDAR data in the south and west parts of Tokushima, Japan, are used to test the feasibility of the proposed method. The results are compared with those of the commercial software TerraSolid and the K-means algorithm. Results show that the proposed extraction algorithm has lower type I and II errors and better extraction effect than that of the TerraSolid and the K-means algorithm.
激光雷达技术是近年来城市三维建模的一种手段,建筑物的提取是城市三维建模的关键步骤。针对大多数机载激光雷达建筑点云提取算法需要结合多个特征参数的复杂性,本研究提出了一种基于点云库(PCL)区域生长分割和直方图相结合的建筑点云提取方法。利用 PCL 区域生长方法对滤波后的激光雷达点云进行分割,然后计算分割后的每个聚类的局部法向量和方向余弦,最后生成直方图,有效地将建筑物点云与非建筑物点云分离。本研究使用日本德岛县南部和西部的两组机载激光雷达数据对所提方法的可行性进行了测试,并与商业软件 TerraSolid 和 K-means 算法的结果进行了比较。结果表明,所提提取算法的 I 型和 II 型错误率较低,提取效果优于 TerraSolid 和 K-means 算法。