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Segmentation approach for terrestrial point clouds based on the integration of graph theory and region growing

机译:基于图论与区域增长相结合的地面点云分割方法

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In view of the disadvantage of region growing in the point clouds segmentation, this paper proposes a novel segmentation method for TLS data by integrating graph theory and region growing. This method can be divided into four steps: (1) According to the reflectance value of each laser point, the reflectance image can be created directly from the terrestrial point clouds. (2) The reflectance image will be segmented by the graph theory-based method; (3) The seed points will be selected automatically according to the segmentation result of the reflectance image. The growing condition is the normal vector of the seed point and the intensity information of their neighboring points. Then the point clouds data can be segmented by using region growing method. (4) We combine the segmentation results of the above-mentioned two methods. In order to achieve a satisfying segmentation result, the point clouds are segmented with different segmentation thresholds based on the selected different seed points. The point clouds of terrestrial laser scanner FARO LS 880 was used in the experiment to verify the proposed method.
机译:针对点云分割中区域增长的弊端,提出了一种结合图论和区域增长的TLS数据分割新方法。该方法可以分为四个步骤:(1)根据每个激光点的反射率值,可以直接从地面点云创建反射率图像。 (2)反射率图像将采用基于图论的方法进行分割; (3)根据反射率图像的分割结果自动选择种子点。生长条件是种子点的法向向量及其相邻点的强度信息。然后可以使用区域增长方法对点云数据进行分割。 (4)结合上述两种方法的分割结果。为了获得满意的分割结果,基于选择的不同种子点,以不同的分割阈值对点云进行分割。实验中使用了地面激光扫描仪FARO LS 880的点云来验证所提出的方法。

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