一种基于激光和二维码的机器人导航方法

Qian Zou, Xin Wang
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引用次数: 4

摘要

本文提出了一种传感器数据融合的方法来解决机器人导航过程中的一些问题。众所周知,二维距离激光具有精度高、距离远、避障等优点。利用激光技术解决导航过程中同时定位与制图问题是一种非常普遍的方法。然而,如果我们使用纯激光的方法来构建我们的环境图,在像办公室这样的对称结构或像狭长的走廊这样的几何简单的场景中,可能会出现激光匹配扫描的错误。特别是,当我们使用基于图的SLAM算法检测到错误的循环关闭时,我们构建的地图可能会产生破坏性的结果。在本文中,一种可以提供一个地方的唯一标识的二维代码被用来克服这个问题。另一方面,二维代码不仅可以为机器人提供初始姿态估计,还可以根据其他传感器的大量累积误差调整机器人姿态。在我们的实验中,我们测试了二维代码的定位精度,然后在两个不同的机器人上分别建立了两个真实环境下的二维占用网格地图(包括二维代码)。实验结果表明了改进的基于图的SLAM算法的有效性。
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A robot navigation method based on laser and 2D code
In this paper, we present a method of sensor data fusion to solve some problems in the robot navigation process. As we all known, 2D range laser has the advantage of high precision, long distance and obstacle avoidance. It is very common to solve the problem of Simultaneous Localization and Mapping (SLAM) during navigation by using lasers. However, if we use the laser-only method to build our environment map, some wrong matching scan of lasers may be occurred in the scenarios with symmetric structure like offices or geometrical simplicity like long and narrow corridors. Especially, when we detect a wrong loop closure with a graph-based SLAM algorithm, the map we build may have a destructive result. In this paper, a type of 2D code, which can provide unique identification of a place, is used to overcome this problem. On the other hand, 2D codes can not only provide a robot with initial pose estimation, but also adjust the robot pose for largely cumulative errors of other sensors. In our experiments, we tested the localization accuracy of 2D code, and then built the 2D occupancy grid map (including 2D codes) in two real environments on two different robots respectively. The results show the effectiveness of our modified based-graph SLAM algorithm.
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