不确定条件下移动机器人导航的增量自适应概率路线图

W. Khaksar, Md. Zia Uddin, J. Tørresen
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引用次数: 0

摘要

随着基于采样的运动规划应用领域的增长,越来越复杂的规划问题出现,对这些规划器的功能提出了挑战。其中一个主要的挑战是在对机器人运动、障碍物和传感中的不确定性做出反应时,性能较弱。本文提出了一种基于最优概率路线图算法的基于多查询采样的规划器,该算法采用混合样本分类和自调整策略来处理不同类型的规划不确定性。该方法首先将生成的无碰撞样本存储在矩阵网格结构中。使用得到的网格结构使得在特定区域搜索和查找样本的计算成本很低。在初始计划的执行过程中,机器人一旦感知到障碍物,就会检测被占用的网格单元,选择相关的样本,并在机器人的视觉范围内移除碰撞顶点。此外,连接到当前直接邻居的第二层节点被检查是否发生碰撞,这给了规划器更多的时间在太靠近障碍物之前对不确定性做出反应。不确定性问题的仿真结果表明,与同类算法相比,该算法在失效率、处理时间和最小障碍物距离方面都有显著改善。该计划器还在TurtleBot上成功地实现了两种不同的不确定场景。
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Incremental Adaptive Probabilistic Roadmaps for Mobile Robot Navigation under Uncertain Condition
As the application domains of sampling-based motion planning grow, more complicated planning problems arise that challenge the functionality of these planners. One of the main challenges is the weak performance when reacting to uncertainty in robot motion, obstacles, and sensing. In this paper, a multi-query sampling-based planner is presented based on the optimal probabilistic roadmaps algorithm that employs a hybrid sample classification and self-adjustment strategy to handle diverse types of planning uncertainty. The proposed method starts by storing the collision-free generated samples in a matrix-grid structure. Using the resulted grid structure makes it computationally cheap to search and find samples in a specific region. As soon as the robot senses an obstacle during the execution of the initial plan, the occupied grid cells are detected, relevant samples are selected, and in-collision vertices are removed within the vision range of the robot. Furthermore, a second layer of nodes connected to the current direct neighbors are checked against collision which gives the planner more time to react to uncertainty before getting too close to an obstacle. The simulation results in problems with uncertainty show significant improvement comparing to similar algorithms in terms of failure rate, processing time and minimum distance from obstacles. The planner was also successfully implemented on a TurtleBot in two different scenarios with uncertainty.
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