Incorporating Moving Landmarks within 2D Graph-Based SLAM for Dynamic Environments

Peter Aerts, P. Slaets, E. Demeester
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引用次数: 1

Abstract

In recent years, Simultaneous Localisation and Map-ping (SLAM) in dynamic environments received more and more attention. Most approaches focus on efficiently removing dynamic objects present within the scene to perform SLAM with the assumption of a static environment. Some approaches incorporate dynamic objects within the optimization problem to perform SLAM and dynamic object tracking concurrently. In this paper, we propose to incorporate information from dynamic objects into a 2D graph-based SLAM approach. We experimentally show that, by adding a measurement function of the dynamic objects to the front-end graph structure, and adopting a motion model of the object, the trajectory of the dynamic object as well as the robot's trajectory can be substantially improved in the absence of static features within the graph. Experimental results based on simulated data and data from a differential drive robot with a LiDAR sensor validate this approach.
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在动态环境中结合二维图形SLAM中的移动地标
近年来,动态环境下的同步定位和地图绘制(SLAM)越来越受到人们的关注。大多数方法侧重于有效地删除场景中存在的动态对象,以在静态环境中执行SLAM。有些方法在优化问题中加入动态对象,同时进行SLAM和动态对象跟踪。在本文中,我们建议将动态对象的信息整合到基于二维图形的SLAM方法中。实验表明,通过在前端图结构中加入动态对象的测量函数,并采用对象的运动模型,在图中没有静态特征的情况下,动态对象的轨迹和机器人的轨迹都可以得到很大的改善。基于仿真数据和带有LiDAR传感器的差动驱动机器人数据的实验结果验证了该方法。
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