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Curvature and Density based Feature Point Detection for Point Cloud Data

机译:基于曲率和密度的点云数据特征点检测

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摘要

Information of unordered point cloud is limited because of no direct topologic relation between points or triangular facets. So it will be difficult to obtain the feature points of 3D point cloud data. In this article, we use the geometry properties, such as normal, curvature and density of the points' information to detect features of the 3D point cloud data and propose a curvature and density based feature point detection method for unordered 3D point cloud data. Firstly, we define a feature parameter of 3D point cloud data, which includes the distance with its neighboring points, the sum of the normal angle between the point and neighboring points, and point cloud data curvature. Secondly, the density of data points is calculated by using Octree and is used as the features of points by a threshold of their feature parameter. The experimental results show that our new approach might detect feature points accurately for the given 3D point cloud data.
机译:由于点或三角形小面之间没有直接的拓扑关系,因此无序点云的信息受到限制。因此,将很难获得3D点云数据的特征点。在本文中,我们使用点信息的法线,曲率和密度等几何属性来检测3D点云数据的特征,并针对无序3D点云数据提出了一种基于曲率和密度的特征点检测方法。首先,我们定义3D点云数据的特征参数,包括与相邻点的距离,点与相邻点之间的法线角之和以及点云数据曲率。其次,使用Octree计算数据点的密度,并通过其特征参数的阈值将其用作点的特征。实验结果表明,对于给定的3D点云数据,我们的新方法可以准确地检测特征点。

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