Robust online map merging system using laser scan matching and omnidirectional vision

Fredy Tungadi, W. Lui, L. Kleeman, R. Jarvis
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引用次数: 27

Abstract

This paper describes a probabilistic online map merging system for a single mobile robot. It performs intermittent exploration by fusing laser scan matching and omnidirectional vision. Moreover, it can also be adapted to a multi-robot system for large scale environments. Map merging is achieved by means of a probabilistic Haar-based place recognition system using omnidirectional images and is capable of discriminating new and previously visited locations in the current or previously collected maps. This dramatically reduces the search space for laser scan matching. The combination of laser range finding and omnidirectional vision is very attractive because they reinforce one another when there is sufficient structure and visual information in the environment. In other cases, they complement one another, leading to improved robustness of the system. This is the first system to combine a probabilistic Haar-based place recognition system using omnidirectional images with laser range finding to merge maps. The proposed system is also algorithmically simple, efficient and does not require any offline processing. Experimental results of the approach clearly illustrate that the proposed system can perform both online map merging and exploration robustly using a single robot configuration in a real indoor lab environment.
基于激光扫描匹配和全向视觉的鲁棒在线地图合并系统
本文介绍了一种单机移动机器人概率在线地图合并系统。它通过融合激光扫描匹配和全方位视觉进行间歇性探测。此外,它还可以适应于大规模环境下的多机器人系统。地图合并是通过使用全向图像的基于haar的概率位置识别系统实现的,并且能够在当前或先前收集的地图中区分新的和以前访问过的位置。这大大减少了激光扫描匹配的搜索空间。当环境中有足够的结构和视觉信息时,激光测距与全向视觉的结合具有很强的互补性。在其他情况下,它们相互补充,从而提高了系统的健壮性。这是第一个将基于haar的概率位置识别系统结合起来的系统,该系统使用全向图像和激光测距来合并地图。该系统算法简单,效率高,不需要任何离线处理。该方法的实验结果清楚地表明,该系统可以在真实的室内实验室环境中使用单个机器人配置进行在线地图合并和探索。
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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