A method for dynamic simplification of massive point cloud

Yonghui Chen, Lihua Yue
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引用次数: 7

Abstract

Aiming at point cloud simplification often loses too many feature details, a simplification method for massive unstructured point cloud is proposed to preserve the geometrical and features. Firstly, the normal vector of the data points is calculated, and the feature points are calculated by position and curvature of the data points. Sharp feature points and edge feature points which are extracted based on gauss map are used to segment the point cloud. Finally, according to the segmentation of the point cloud and the eigenvalue of the constraint points, the point cloud is dynamic simplified. Experimental results show that the proposed method not only preserves the features of the point cloud, but also have the high rate of simplification.
一种海量点云的动态简化方法
针对点云简化容易丢失太多特征细节的问题,提出了一种保留大量非结构化点云几何特征和特征的点云简化方法。首先计算数据点的法向量,根据数据点的位置和曲率计算特征点;利用高斯映射提取的尖锐特征点和边缘特征点对点云进行分割。最后,根据点云的分割和约束点的特征值,对点云进行动态简化。实验结果表明,该方法既保留了点云的特征,又具有较高的简化率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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