SLAM auto-complete: Completing a robot map using an emergency map

Malcolm Mielle, Martin Magnusson, Henrik Andreasson, A. Lilienthal
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引用次数: 19

Abstract

In search and rescue missions, time is an important factor; fast navigation and quickly acquiring situation awareness might be matters of life and death. Hence, the use of robots in such scenarios has been restricted by the time needed to explore and build a map. One way to speed up exploration and mapping is to reason about unknown parts of the environment using prior information. While previous research on using external priors for robot mapping mainly focused on accurate maps or aerial images, such data are not always possible to get, especially indoor. We focus on emergency maps as priors for robot mapping since they are easy to get and already extensively used by firemen in rescue missions. However, those maps can be outdated, information might be missing, and the scales of rooms are typically not consistent. We have developed a formulation of graph-based SLAM that incorporates information from an emergency map. The graph-SLAM is optimized using a combination of robust kernels, fusing the emergency map and the robot map into one map, even when faced with scale inaccuracies and inexact start poses. We typically have more than 50% of wrong correspondences in the settings studied in this paper, and the method we propose correctly handles them. Experiments in an office environment show that we can handle up to 70% of wrong correspondences and still get the expected result. The robot can navigate and explore while taking into account places it has not yet seen. We demonstrate this in a test scenario and also show that the emergency map is enhanced by adding information not represented such as closed doors or new walls.
SLAM自动完成:使用紧急地图完成机器人地图
在搜救任务中,时间是一个重要因素;快速导航和快速获取态势感知可能是生死攸关的问题。因此,在这种情况下,机器人的使用受到了探索和构建地图所需时间的限制。加速探索和绘图的一种方法是利用先验信息对环境的未知部分进行推理。而以往使用外部先验进行机器人测绘的研究主要集中在精确的地图或航空图像上,这些数据并不总是能够获得,尤其是在室内。我们将重点放在应急地图上,因为它们易于获取,并且已经被消防员在救援任务中广泛使用。然而,这些地图可能是过时的,信息可能会丢失,房间的比例通常不一致。我们开发了一种基于图表的SLAM公式,其中包含了来自应急地图的信息。图形slam使用鲁棒核的组合进行优化,将紧急地图和机器人地图融合到一个地图中,即使面临比例不准确和不精确的开始姿势。在本文研究的设置中,我们通常有50%以上的错误对应,我们提出的方法正确地处理了它们。在办公环境中进行的实验表明,我们可以处理高达70%的错误信件,并且仍然得到预期的结果。机器人可以导航和探索,同时考虑到它还没有看到的地方。我们在一个测试场景中演示了这一点,并且还展示了通过添加未表示的信息(如关闭的门或新墙)来增强紧急地图。
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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