Online generation of collision free trajectories is of prime importance for autonomous navigation. Dynamic environments, robot motion and sensing uncertainties adds further challenges to collision avoidance systems. This paper presents an approach for collision avoidance in dynamic environments, incorporating robot and obstacle state uncertainties. We derive a tight upper bound for collision probability between robot and obstacle and formulate it as a motion planning constraint which is solvable in real time. The proposed approach is tested in simulation considering mobile robots as well as quadrotors to demonstrate that successful collision avoidance is achieved in real time application. We also provide a comparison of our approach with several state-of-the-art methods.
翻译:动态环境、机器人运动和感知不确定性给避免碰撞系统带来了进一步的挑战。本文介绍了一种在动态环境中避免碰撞的方法,其中结合了机器人和障碍状态不确定性。我们为机器人和障碍物之间的碰撞概率设定了一个紧紧的上限,并将其作为实时可溶解的动作规划限制。在模拟考虑移动机器人和四重体时测试了拟议方法,以证明在实时应用中成功避免碰撞是成功的。我们还比较了我们的方法与几种最先进的方法。