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A new segmentation method for point cloud data

机译:一种新的点云数据分割方法

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摘要

In the process of generating a surface model from point cloud data, a segmentation that extracts the edges and partitions the three-dimensional (3D) point data is necessary and plays an important role in fitting surface patches and applying the scan data to the manufacturing process. Many researchers have tried to develop segmentation methods by fitting curves or surfaces in order to extract geometric information, such as edges and smooth regions, from the scan data. However, the surface- or curve-fitting tasks take a long time and it is also difficult to extract the exact edge points because the scan data consist of discrete points and the edge points are not always included in these data. In this research, a new method for segmenting the point cloud data is proposed. The proposed algorithm uses the octree-based 3D-grid method to handle a large amount of unordered sets of point data. The final 3D-grids are constructed through a refinement process and iterative subdivisioning of cells using the normal values of points. This 3D-grid method enables us to extract edge-neighborhood points while considering the geometric shape of a part. The proposed method is applied to two quadric models and the results are discussed.
机译:在从点云数据生成表面模型的过程中,需要进行分割以提取边缘并划分三维(3D)点数据,这在拟合表面补丁并将扫描数据应用于制造过程中起着重要作用。 。许多研究人员试图通过拟合曲线或曲面来开发分割方法,以便从扫描数据中提取几何信息,例如边缘和平滑区域。但是,曲面或曲线拟合任务需要很长时间,并且提取精确的边缘点也很困难,因为扫描数据由离散点组成,并且边缘点并不总是包含在这些数据中。在这项研究中,提出了一种分割点云数据的新方法。所提出的算法使用基于八叉树的3D网格方法来处理大量无序的点数据集。最终的3D网格是通过细化过程和使用点的法线值对单元进行迭代细分而构建的。这种3D网格方法使我们能够在考虑零件几何形状的同时提取边缘相邻点。将该方法应用于两个二次模型并讨论了结果。

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