基于AMCL的异构传感器多机器人SLAM地图融合

Baoxian Zhang, Jun Liu, Haoyao Chen
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引用次数: 13

摘要

提出了一种基于自适应蒙特卡罗定位(AMCL)的有效方法来对齐由多机器人系统构建的占用网格地图。地图对齐对于多机器人同步定位与测绘(SLAM)的地图融合,特别是异构传感器SLAM的地图融合具有重要作用。两个分别配备激光和Kinect的机器人在相同的环境中执行FastSLAM 2.0,但起点不同;运动和测量信息用时间戳记录下来。为了合并不同机器人绘制的地图,首先利用记录的运动序列和测量信息将一个机器人重新定位到另一个机器人绘制的地图中。根据重新定位结果,计算出两个不同映射之间的变换矩阵;将该矩阵作为ICP过程的初始相对位姿信息,以获得精确的对准结果。最后通过实验验证了该方法的有效性。索引术语- AMCL;地图融合;多机器人摔;异构传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AMCL based map fusion for multi-robot SLAM with heterogenous sensors
This paper proposes an efficient adaptive Monte Carlo Localization (AMCL) based approach to align the occupancy grid maps built by a multi-robot system. Map alignment plays an important role for the map fusion of multi-robot simultaneous localization and mapping (SLAM), especially for the SLAM with heterogenous sensors. Two robots equipped with a laser and Kinect respectively are executing FastSLAM 2.0 in the same environment but at different starting point; the motion and measurement information is recorded with time-stamps. To merge the maps built by different robots, one robot is first relocated in the map built by the other robot by using the recorded motion sequences and measurement information. With the relocation result, the transformation matrix between the two different maps is the calculated; the matrix is further used as the initial relative pose information for ICP process to obtain precise alignment result. Experiments are finally performed to demonstrate the effectiveness of the proposed approach. Index Terms - AMCL; map fusion; multi-robot SLAM; heterogenous sensors.
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