激光雷达和头顶图像之间基于点的度量和拓扑定位

IF 3.7 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Tim Yuqing Tang, Daniele De Martini, Paul Newman
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引用次数: 2

摘要

在本文中,我们提出了一种仅使用头顶图像解决地面激光雷达定位的方法。谷歌卫星图像等公共头顶图像是现成的资源。它们可以用作机器人定位的地图代理,从而放宽了传统方法中对地图先验遍历的要求。虽然先前的方法专注于距离传感器和头顶图像之间的度量定位,但我们的方法是第一个使用头顶图像学习地面激光雷达的位置识别和度量定位,并且在具有大初始姿态偏移的度量定位方面也优于先前的方法。为了弥合激光雷达数据和头顶图像之间的巨大领域差距,我们的方法学习将头顶图像转换为2D点的集合,模拟位于头顶图像中心附近的激光雷达传感器扫描的点云。在两种模式都表示为点集之后,应用基于点的机器学习方法进行定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Point-based metric and topological localisation between lidar and overhead imagery

Point-based metric and topological localisation between lidar and overhead imagery

In this paper, we present a method for solving the localisation of a ground lidar using overhead imagery only. Public overhead imagery such as Google satellite images are readily available resources. They can be used as the map proxy for robot localisation, relaxing the requirement for a prior traversal for mapping as in traditional approaches. While prior approaches have focused on the metric localisation between range sensors and overhead imagery, our method is the first to learn both place recognition and metric localisation of a ground lidar using overhead imagery, and also outperforms prior methods on metric localisation with large initial pose offsets. To bridge the drastic domain gap between lidar data and overhead imagery, our method learns to transform an overhead image into a collection of 2D points, emulating the resulting point-cloud scanned by a lidar sensor situated near the centre of the overhead image. After both modalities are expressed as point sets, point-based machine learning methods for localisation are applied.

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来源期刊
Autonomous Robots
Autonomous Robots 工程技术-机器人学
CiteScore
7.90
自引率
5.70%
发文量
46
审稿时长
3 months
期刊介绍: Autonomous Robots reports on the theory and applications of robotic systems capable of some degree of self-sufficiency. It features papers that include performance data on actual robots in the real world. Coverage includes: control of autonomous robots · real-time vision · autonomous wheeled and tracked vehicles · legged vehicles · computational architectures for autonomous systems · distributed architectures for learning, control and adaptation · studies of autonomous robot systems · sensor fusion · theory of autonomous systems · terrain mapping and recognition · self-calibration and self-repair for robots · self-reproducing intelligent structures · genetic algorithms as models for robot development. The focus is on the ability to move and be self-sufficient, not on whether the system is an imitation of biology. Of course, biological models for robotic systems are of major interest to the journal since living systems are prototypes for autonomous behavior.
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