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3D point cloud cluster analysis based on principal component analysis of normal-vectors

机译:基于法向量的主成分分析的3D点云聚类分析

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Technical demands for extraction of significant components from spatial models are increasing as 3D sensors and their application technology has been developed and popularized. In this paper, we propose the 3D point cloud cluster analysis based on the principal component analysis(PCA) of normal-vectors. The distribution of normal vectors depends on a 3D surface shape within the local neighborhood. We discussed the PCA of the distribution of normal vectors to the point cloud. The results of the experiment show that our method could classify a local point cloud as a plane, a boundary and a vertex.
机译:随着3D传感器及其应用技术的发展和普及,从空间模型中提取重要成分的技术要求也在不断提高。在本文中,我们提出了基于法向量的主成分分析(PCA)的3D点云聚类分析。法线向量的分布取决于局部邻域内的3D表面形状。我们讨论了法向矢量分布到点云的PCA。实验结果表明,该方法可以将局部点云分类为平面,边界和顶点。

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