Global Localization for Single 3D Point Cloud using Voting Mechanism

Ye Jin, Qinying Chen, Jie Qian, Jialing Liu, Jianhua Zhang
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引用次数: 2

Abstract

Global localization on a given map is a vital problem for robot navigation tasks. Segments-based methods most rely on the dense point clouds, and do not work well when points are sparse. It needs robots to walk a certain distance to accumulate point clouds for segments, which is not safe for robots in an unknown environment. To solve this problem, we propose a novel global localization method which only needs the first single LiDAR scan at the initial stage when the robot starts. The first single LiDAR scan is treated as a query point cloud, the extracted descriptors of this query point cloud is compared with the prior Map’s descriptors in the database which are stored in a KD tree, and the most similar frame is selected for registration. In particular, we create a voting mechanism, a two-phase search strategy for place recognition, which reduces the query time. We evaluate our method on KITTI and MVSEC datasets, and our localization accuracy is increased by 52.8% compared with SegMap validated the effectiveness of our method.
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基于投票机制的单三维点云全局定位
在给定地图上的全局定位是机器人导航任务的关键问题。基于片段的方法大多依赖于密集的点云,当点稀疏时效果不佳。它需要机器人走一定的距离来积累分段的点云,这对于机器人在未知的环境中是不安全的。为了解决这一问题,我们提出了一种新的全局定位方法,该方法在机器人启动的初始阶段只需要进行第一次激光雷达扫描。将第一次单次LiDAR扫描作为查询点云,提取的查询点云描述符与数据库中存储在KD树中的先前Map描述符进行比较,并选择最相似的帧进行配准。特别地,我们创建了一种投票机制,一种用于地点识别的两阶段搜索策略,减少了查询时间。我们在KITTI和MVSEC数据集上对我们的方法进行了评估,与SegMap相比,我们的定位精度提高了52.8%,验证了我们方法的有效性。
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