基于RGB-D SLAM和行人轨迹预测的移动机器人路径规划

Yi Zhang, Yong Hu, Xiaolin Hu, Bin Xing
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引用次数: 3

摘要

本文实现了基于RGB-D SLAM的三维点云图的构建,将SLAM系统输出的三维点云信息作为Octomap的输入,生成八叉树图,并进行三维投影变换,将点云图转换为二维栅格图,用于路径规划研究。为解决移动机器人局部路径规划中二次避障和无局部最优解导致的紧急停车问题,提出了一种基于动态目标轨迹预测的移动机器人路径规划新算法,并结合强化学习算法Sarsa选择最优路径,有效避开动态障碍物。在利用RGB-D摄像机实时定位行人的基础上,利用卡尔曼滤波算法预测下一时刻行人的全局坐标。然后设计了一种新的奖惩机制,基于改进的Sarsa算法实现动态避障,使移动机器人能够尽快离开行人预测坐标的辐射圈,避开行人行走路径。
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Path Planning for Mobile Robot Based on RGB-D SLAM and Pedestrian Trajectory Prediction
This paper implements the construction of three-dimensional point cloud map based on RGB-D SLAM, and takes the three-dimensional point cloud information output by SLAM system as the input of Octomap, generates octree map and performs three-dimensional projection transformation, which converts point cloud map into two-dimensional raster map for path planning research. In order to solve the problem of secondary obstacle avoidance and the problem of emergency stop caused by no local optimal solution in local path planning, a new path planning algorithm for mobile robot based on dynamic object trajectory prediction is presented, and the best path is selected by combining the reinforcement learning algorithm, Sarsa, to avoid dynamic obstacles effectively. On the basis of using RGB-D camera to locate pedestrians in real time, Kalman filter algorithm is used to predict the global coordinates of pedestrians in the next moment. Then a new reward and punishment mechanism is designed to realize the dynamic obstacle avoidance based on the improved Sarsa algorithm, so that the mobile robot can leave the radiation circle of pedestrian prediction coordinates as soon as possible and avoid the pedestrian walking path.
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