Towards autonomous exploration with information potential field in 3D environments

Chaoqun Wang, Lili Meng, Teng Li, C. D. Silva, M. Meng
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引用次数: 16

Abstract

Autonomous exploration is one of the key components for flying robots in 3D active perception. Fast and accurate exploration algorithms are essential for aerial vehicles due to their limited flight endurance. In this paper, we address the problem of exploring the environment and acquiring information using aerial vehicles within limited flight endurance. We propose an information potential field based method for autonomous exploration in 3D environments. In contrast to the existing approaches that only consider either the traveled distances or the information collected during exploration, our method takes into account both the traveled cost and information-gain. The next best view point is chosen based on a multi-objective function which considers information of several candidate regions and the traveled path cost. The selected goal attracts the robot while the known obstacles form the repulsive force to repel the robot. These combined force drives the robot to explore the environment. Different from planners that use all acquired global information, our planner only considers the goal selected and the nearby obstacles, which is more efficient in high-dimensional environments. Furthermore, we present a method to help the robot escape when it falls into a trapped area. The experimental results demonstrate the efficiency and efficacy of our proposed method.
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面向三维环境中具有信息势场的自主勘探
自主探索是飞行机器人三维主动感知的关键组成部分之一。由于飞行器的飞行续航力有限,快速准确的探测算法对其至关重要。在本文中,我们解决了在有限的飞行耐力下使用飞行器探索环境和获取信息的问题。提出了一种基于信息势场的三维环境自主探测方法。与现有方法只考虑旅行距离或在勘探过程中收集的信息相比,我们的方法同时考虑了旅行成本和信息收益。基于考虑多个候选区域信息和路径代价的多目标函数选择次优视点。选定目标对机器人产生吸引力,已知障碍物对机器人产生排斥力。这些合力驱动机器人探索环境。与使用所有全局信息的规划器不同,我们的规划器只考虑所选择的目标和附近的障碍物,在高维环境下效率更高。此外,我们还提出了一种帮助机器人在落入被困区域时逃生的方法。实验结果证明了该方法的有效性和有效性。
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