四轴联动的移动机器人导航

M. Kurdi, Alex K. Dadykin, I. Elzein
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引用次数: 4

摘要

机器人导航异构群的仿真研究本文讨论了无人驾驶地面车辆(UGV)、无人驾驶飞行器(UAV)、数字地图和使用概率路线图方法(PRM)的图像处理。具有精确导航能力是移动机器人有效执行各种工作(包括操作、对接和运输)的主要能力之一。为了达到理想的导航精度,移动机器人通常配备机载传感器来观察环境中的持续特征,并根据这些观察结果估计其姿态,并相应地调整其运动[1]。根据任务场景,UAV从UGV上起飞,对地形进行测量并传送图像给地面机器人。UGV对图像进行处理,在GPS的帮助下计算最优轨迹方法Probabilistic Roadmap,并根据计算出的路线在室外提供独立导航。这组机器人是:UGV白俄罗斯- 132n和无人机幻影-2视觉四轴飞行器。
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Navigation of mobile robot with cooperation of quadcopter
The simulation of a navigation heterogeneous group of robots; unmanned ground vehicle (UGV), unmanned aerial vehicle (UAV) through GPS, digital map and image processing using probabilistic roadmap method (PRM) are addressed throughout this paper. Having the capacitato navigate accurately is one of the major abilities of a mobile robot to effectively execute a variety of jobs including manipulation, docking, and transportation. To achieve the desired navigation accuracy, mobile robots are typically equipped with on-board sensors to observe persistent features in the environment, to estimate their pose from these observations, and to adjust tneir motion accordingly [1]. According to the scenario of the mission, UAV takes off from UGV, surveys the terrain and transmits Image terrestrial robot. UGV processes images, calculating the optimum trajectory method Probabilistic Roadmap with the help of GPS, and provide standalone navigate through the outdoor based on the calculated route. The group of robots is: UGV Belarus-132N and UAV Phantom-2 Vision quadcopter.
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