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Extracting of Cross Section Profiles from Complex Point Cloud Data Sets

机译:从复杂点云数据集中提取截面配置文件

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Point cloud data sets are widely used in design and manufacturing. Extracting 2D and 3D features from a point cloud is a field that many researchers are working on. In the present work, a slicing algorithm is implemented for segmenting a point cloud by parallel planes in the X, Y and Z directions and storing the point coordinates within each sectioned plane into separate files. After slicing, a new method is developed for filtering and extracting the outer boundary for each cross section. In the next step, this algorithm is combined with the density-based spatial clustering of applications with noise (DBSCAN) method to achieve a better boundary extraction result for complex outlines. The codes are written in Python (v. 3.7) and executed in Spyder using the Anaconda software package (v. 5.3.1). Complex case studies (*.STL lung model and a femur model) are used to illustrate the merits of this approach.
机译:点云数据集广泛用于设计和制造。从点云中提取2D和3D功能是许多研究人员正在努力的领域。在本作工作中,实现切片算法,用于通过X,Y和Z方向上的并行平面分割点云,并将每个切片平面内的点坐标存储到单独的文件中。切片后,开发了一种用于过滤和提取每个横截面的外边界的新方法。在下一步中,该算法与具有噪声(DBSCAN)方法的应用的密度的空间聚类组合,以实现复杂轮廓的更好的边界提取结果。代码用Python(v.3.7)编写,并使用anaconda软件包(v.5.1.1)在Spyder中执行。复杂案例研究(* .stl肺模型和股骨模型)用于说明这种方法的优点。

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