AMOS: comparison of scan matching approaches for self-localization in indoor environments

Jens-Steffen Gutmann, Christian Schlegel
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引用次数: 287

Abstract

This paper describes results from evaluating different self-localization approaches in indoor environments for mobile robots. The algorithms examined are based on 2D laser scans and an odometry position estimate and do not need any modifications in the environment. An important requirement for the self-localization is the ability to cope with office-like environments as well as with environments without orthogonal and rectilinear walls. Furthermore, the approaches have to be robust enough to cope with slight modifications in the daily environment and should be fast enough to be used online on board of the robot system. To fulfil these requirements we made some extensions to the existing approaches and combined them in a suitable manner. Real world experiments with our robot within the everyday environment of our institute show that the position error can be kept small enough to perform navigation tasks.
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AMOS:室内环境下自定位的扫描匹配方法比较
本文描述了移动机器人在室内环境中不同自定位方法的评估结果。所测试的算法基于二维激光扫描和里程计位置估计,不需要在环境中进行任何修改。对自我定位的一个重要要求是能够应对类似办公室的环境以及没有正交和直线墙壁的环境。此外,这些方法必须足够健壮,以应对日常环境中的微小变化,并且应该足够快,以便在机器人系统上在线使用。为了满足这些需求,我们对现有方法进行了一些扩展,并以合适的方式将它们组合起来。我们的机器人在我们研究所的日常环境中进行的真实世界实验表明,位置误差可以保持在足够小的范围内,以执行导航任务。
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