基于室内环境二维/三维地图的服务机器人鲁棒再定位算法研究

Li Wang, Ruifeng Li, Lijun Zhao, Zhenghua Hou, Xiaoyu Li, Zhenye Sun
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引用次数: 2

摘要

室内服务机器人可以通过视觉传感器建立环境的三维地图。当机器人再次使用已建立的地图时,会出现机器人的视角处于新的位置,无法获得地图的相对位置的情况。针对这一问题,提出了一种基于多维地图信息的再定位算法。该算法在建立的三维环境地图的基础上,对二维地图进行采样,并基于粒子滤波算法将该地图与当前帧的二维观测信息进行匹配,得到机器人的初始位置。然后,在三维地图中对当前帧对应的目标点云进行分割,通过迭代最近点算法计算当前帧云和目标点云之间的精确位姿关系。该方法采用SVD分解和g20优化,提高了计算效率和精度。最后,在室内环境下进行了大范围机器人视角下的再定位实验。实验结果验证了该算法的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on service robots robust relocalization algorithm based on 2D/3D map of indoor environment
An indoor service robot can establish a 3D map of the environment by a visual sensor. When the robot uses the established map again, there is a situation that the robot's view is in a new position and the relative position of the map can not be obtained. A relocalization algorithm based on multi-dimensional map information is proposed to solve the problem. Based on the established 3D environment map, the algorithm samples a 2D map and matches the map with the 2D observation information of the current frame based on the particle filter algorithm to obtain the robot's initial position. Then, the target point cloud corresponding to the current frame is segmented in the 3D map, and the exact pose relationship between the current frame cloud and the target point cloud is calculated by the iterative closest point algorithm. The SVD decomposition and g2o optimization are used in the method to improve the computational efficiency and accuracy. Finally, the relocalization experiments under the wide range of robot perspective are carried out in the indoor environment. The results verify the effectiveness and robustness of the algorithm.
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