Efficient Calculation of Multi-Scale Features for MMS Point Clouds

Keita Hiraoka, G. Takahashi, Hiroshi Masuda
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Abstract

Abstract. Point clouds acquired by Mobile Mapping System (MMS) are useful for creating 3D maps that can be used for autonomous driving and infrastructure development. However, many applications require semantic labels to each point of the point clouds, and the manual labeling process is very time consuming and expensive. Therefore, there is a strong need to develop a method to automatically assigning semantic labels. For automatic labeling tasks, classification methods using multiscale features are effective because multiscale features include features of various scales of roadside objects. Multiscale features are calculated using points inside spheres of multiscale radii centered at each point in a point cloud. When calculating multiscale features that are useful for classifying MMS point clouds, it is necessary to calculate features using relatively large radii. However, when calculating multiscale features using wide range of neighbor points, existing methods, such as kd-tree, require unacceptably long computation time for neighbor search. In this paper, we propose a method to calculate multiscale features in practical time for semantic labeling of large-scale point clouds. In our method, an MMS point cloud is first divided into small spherical regions. Then, radius search using multiscale radii is performed, and multiscale features are calculated using those neighbor points. Our experimental results showed that our method achieved significantly faster computational performance than conventional methods, and multiscale features could be calculated from large-scale point clouds in practical time.
高效计算 MMS 点云的多尺度特征
摘要移动测绘系统(MMS)获取的点云有助于创建三维地图,可用于自动驾驶和基础设施开发。然而,许多应用都要求为点云的每个点加上语义标签,而人工标注过程非常耗时且昂贵。因此,亟需开发一种自动分配语义标签的方法。对于自动标注任务,使用多尺度特征的分类方法是有效的,因为多尺度特征包括路边物体的各种尺度特征。多尺度特征是使用以点云中每个点为中心的多尺度半径球内的点进行计算的。在计算有助于对 MMS 点云进行分类的多尺度特征时,有必要使用相对较大的半径来计算特征。然而,在使用大范围的邻接点计算多尺度特征时,现有的方法(如 kd-tree)需要很长的邻接点搜索计算时间,令人难以接受。在本文中,我们提出了一种在实际时间内计算多尺度特征的方法,用于大规模点云的语义标注。在我们的方法中,首先将 MMS 点云划分为小的球形区域。然后,利用多尺度半径进行半径搜索,并利用这些相邻点计算多尺度特征。实验结果表明,与传统方法相比,我们的方法计算速度明显更快,而且可以在实际时间内计算出大规模点云的多尺度特征。
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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