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A Coarse-to-Fine Algorithm for Registration in 3D Street-View Cross-Source Point Clouds

机译:一种粗略对3D街视图跨源点云注册的算法

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摘要

With the development of numerous 3D sensing technologies, object registration on cross-source point cloud has aroused researchers' interests. When the point clouds are captured from different kinds of sensors, there are large and different kinds of variations. In this study, we address an even more challenging case in which the differently-source point clouds are acquired from a real street view. One is produced directly by the LiDAR system and the other is generated by using VSFM software on image sequence captured from RGB cameras. When it confronts to large scale point clouds, previous methods mostly focus on point-to-point level registration, and the methods have many limitations.The reason is that the least mean error strategy shows poor ability in registering large variable cross-source point clouds. In this paper, different from previous ICP-based methods, and from a statistic view, we propose a effective coarse-to-fine algorithm to detect and register a small scale SFM point cloud in a large scale Lidar point cloud. Seen from the experimental results, the model can successfully run on LiDAR and SFM point clouds, hence it can make a contribution to many applications, such as robotics and smart city development.
机译:随着众多3D传感技术的发展,跨源点云上的对象登记引起了研究人员的兴趣。当点云从不同类型的传感器捕获时,存在大而不同的变化。在这项研究中,我们解决了更具挑战性的情况,其中从真正的街道视图获取不同源点云。一个由LIDAR系统直接生产,另一个是通过在RGB摄像机捕获的图像序列上使用VSFM软件来生成。当它对大规模点云面对时,之前的方法大多专注于点对点级别注册,并且该方法具有许多限制。原因是最少的误差策略表现出较差的注册大变量跨源点云的能力差。在本文中,与先前的基于ICP的方法不同,并且从统计视图中,我们提出了一种有效的粗细算法来检测和注册大规模LIDAR点云中的小规模SFM点云。从实验结果看,该模型可以在LIDAR和SFM点云上成功运行,因此它可以为许多应用程序提供贡献,例如机器人和智能城市开发。

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