阿古斯:无人机的真实目标覆盖

Ahmed Saeed, Ahmed Abdelkader, Mouhyemen Khan, A. Neishaboori, Khaled A. Harras, Amr M. Mohamed
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引用次数: 34

摘要

具有先进传感和机动性的低成本微型无人机使一类新的智能视觉传感系统成为可能。这种潜力激发了一些研究工作,将无人机用作独立的监视系统或辅助传统部署。然而,仍有几个根本性的挑战尚未解决,包括:1)足够覆盖相当大的目标;2)目标方向,使覆盖仅从某些方向有效;3)被环境中的元素遮挡,包括其他目标。在本文中,我们提出了Argus,一个系统,提供广泛和定向目标的视觉覆盖,使用安装摄像头的无人机,考虑到上述挑战。Argus依赖于捕获目标形状和覆盖限制的几何模型。由于无人机是Argus中最稀缺的资源,我们研究了覆盖一组这样的目标所需的无人机数量最小化的问题,并得出了最佳逼近算法。在此基础上,我们提出了一种性能良好的抽样启发式算法,与近似算法相比,它的运行速度快了100倍。我们实现了一个完整的Argus原型,以演示和评估在完全自主监视系统中提出的覆盖算法。最后,我们通过模拟来评估所提出的算法,以比较它们在各种条件下的大规模性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Argus: Realistic Target Coverage by Drones
Low-cost mini-drones with advanced sensing and maneuverability enable a new class of intelligent visual sensing systems. This potential motivated several research efforts to employ drones as standalone surveillance systems or to assist legacy deployments. However, several fundamental challenges remain unsolved including: 1) Adequate coverage of sizable targets; 2) Target orientation that render coverage effective only from certain directions; 3) Occlusion by elements in the environment, including other targets.In this paper, we present Argus, a system that provides visual coverage of wide and oriented targets, using camera-mounted drones, taking into account the challenges stated above. Argus relies on a geometric model that captures both target shapes and coverage constraints. With drones being the scarcest resource in Argus, we study the problem of minimizing the number of drones required to cover a set of such targets and derive a best-possible approximation algorithm. Building upon that, we present a sampling heuristic that performs favorably, while running up to 100x faster compared to the approximation algorithm. We implement a complete prototype of Argus to demonstrate and evaluate the proposed coverage algorithms within a fully autonomous surveillance system. Finally, we evaluate the proposed algorithms via simulations to compare their performance at scale under various conditions.
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