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逆向工程中基于模糊聚类的点云数据分区
引用本文:刘雪梅,张树生,洪歧,黄绍林.逆向工程中基于模糊聚类的点云数据分区[J].机械科学与技术(西安),2007,26(4):515-517,520.
作者姓名:刘雪梅  张树生  洪歧  黄绍林
作者单位:西北工业大学现代设计与集成制造技术教育部重点实验室,西安710072
基金项目:国家自然科学基金 , 航空基础科学基金 , 河南省教育厅自然科学基金
摘    要:点云数据分区是逆向工程中重要而又难以解决的问题。首次将模糊聚类方法应用于逆向工程中的点云数据分区,用点的位置矢量、法矢量、高斯曲率和平均曲率8维向量作为特征向量,加权距离替代欧氏距离。在实现分区的同时,可以识别区域内部点和边界附近点,便于后续曲面特征参数精确提取。实验结果证明此算法具有较强的抗噪性,并具有较高的分区效率。

关 键 词:模糊聚类  逆向工程  点云分区
文章编号:1003-8728(2007)04-0515-03
修稿时间:2005-06-20

Point Cloud Data Segmentation Based on Fuzzy C-means Clustering Algorithm in Reverse Engineering
Liu Xuemei,Zhang Shusheng,Hong Qi,Huang Shaolin.Point Cloud Data Segmentation Based on Fuzzy C-means Clustering Algorithm in Reverse Engineering[J].Mechanical Science and Technology,2007,26(4):515-517,520.
Authors:Liu Xuemei  Zhang Shusheng  Hong Qi  Huang Shaolin
Abstract:Point cloud data segmentation is an important but difficult question in reverse engineering. For the first time, the fuzzy c-means clustering algorithm was applied to the point cloud data segmentation. 8D feature vectors of points including 3D coordinates, 3D normal vector, mean curvature and Gauss curvature were taken as input feature vectors, and weighted distance replaced the Euclidean distance. The algorithm can also identify inner points and border points at the same time when the segmentation was implemented, creating convenience for extracting accu- rately the feature parameters of subsequent surfaces. Experimental results show that the algorithm has strong noise resistance and efficient segmentation.
Keywords:fuzzy c-means clustering algorithm  reverse engineering  point cloud data segmentation
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