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Autonomous navigation for UAVs managing motion and sensing uncertainty

机译:用于无人机管理运动和传感不确定性的自主导航

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摘要

We present a motion planner for the autonomous navigation of UAVs that manages motion and sensing uncertainty at planning time. By doing so, optimal paths in terms of probability of collision, traversal time and uncertainty are obtained. Moreover, our approach takes into account the real dimensions of the UAV in order to reliably estimate the probability of collision from the predicted uncertainty. The motion planner relies on a graduated fidelity state lattice and a novel multi-resolution heuristic which adapt to the obstacles in the map. This allows managing the uncertainty at planning time and yet obtaining solutions fast enough to control the UAV in real time. Experimental results show the reliability and the efficiency of our approach in different real environments and with different motion models. Finally, we also report planning results for the reconstruction of 3D scenarios, showing that with our approach the UAV can obtain a precise 3D model autonomously. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们为无人机的自主导航提供了一项运动计划,该计划在规划时间内管理运动和感知不确定性。通过这样做,获得碰撞,遍历时间和不确定性的概率的最佳路径。此外,我们的方法考虑了UAV的实际尺寸,以便可靠地估计来自预测的不确定性的碰撞概率。运动计划者依赖于毕业的保真状态格子和新的多分辨率启发式,适应地图中的障碍物。这允许在规划时间内管理不确定性,但最快地获得解决方案以实时控制无人机。实验结果表明了我们在不同真实环境中的方法和不同运动模型的可靠性和效率。最后,我们还报告了3D场景重建的规划结果,表明我们的方法可以自主地获得精确的3D模型。 (c)2020 Elsevier B.V.保留所有权利。

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