基于RBPF-SLAM算法的同步定位与地图构建

Hong He, Yunhui Jia, Lei Sun
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引用次数: 5

摘要

解决同时定位和地图构建问题是机器人自主导航的核心问题。目前,大多数算法通常只考虑移动机器人的里程表信息,因此存在采样粒子数量多、复杂度大导致计算量增加的问题。为此,本文提出了一种基于RBPF-SLAM算法的地图构建与定位方案。硬件和软件平台建立在ROS上,将机器人的里程表信息与激光传感器采集的距离信息合并,有效地减少了滤波预测阶段所需粒子数和机器人姿态估计的不确定性。通过实验,得出结论:基于RBPF-SLAM算法和地图构建系统的同步定位可以实时生成高精度的在线栅格地图,并且与实际地图更加吻合。
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Simultaneous Location and Map Construction Based on RBPF-SLAM Algorithm
Solving the problem of simultaneous location and map construction (SLAM) is the core of robot autonomous navigation. At present, most algorithms usually only consider the odometer information of mobile robot, therefor, there exists some problems of increasing computation amount caused by a large number of sampling particles and the complexity. So, this paper developed a scheme of map construction and positioning based on RBPF-SLAM algorithm. The hardware and software platform is set up on the ROS, and it merge the odometer information of the robot into the distance information collected by the laser sensor, which effectively reduces the number of required particles and the uncertainty of the robot's pose estimates in filter prediction phase. Through the experimental, get the conclusion: simultaneous positioning based on RBPF-SLAM algorithm and map construction system can create high-precision online raster map in real time, and it is more consistent with the actual map.
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