Swarms of drones are being more and more used in many practical scenarios, such as surveillance, environmental monitoring, search and rescue in hardly-accessible areas, etc.. While a single drone can be guided by a human operator, the deployment of a swarm of multiple drones requires proper algorithms for automatic task-oriented control. In this paper, we focus on visual coverage optimization with drone-mounted camera sensors. In particular, we consider the specific case in which the coverage requirements are uneven, meaning that different parts of the environment have different coverage priorities. We model these coverage requirements with relevance maps and propose a deep reinforcement learning algorithm to guide the swarm. The paper first defines a proper learning model for a single drone, and then extends it to the case of multiple drones both with greedy and cooperative strategies. Experimental results show the performance of the proposed method, also compared with a standard patrolling algorithm.
翻译:无人驾驶飞机的群落正在许多实际情景中越来越多地被使用,例如监视、环境监测、在难以进入的地区搜索和救援等。 虽然单个无人驾驶飞机可以由人类操作者来指导,但部署一群多无人驾驶飞机需要适当的算法来进行自动任务导向控制。在本文中,我们侧重于使用无人驾驶飞机的摄像传感器进行视觉覆盖优化。我们特别考虑了覆盖要求不均衡的具体案例,这意味着环境的不同部分有不同的覆盖重点。我们用相关地图来模拟这些覆盖要求,并提出一个深度强化学习算法来引导这些群。该文件首先界定了单一无人驾驶飞机的适当学习模式,然后将其扩展至具有贪婪和合作战略的多无人驾驶飞机。实验结果显示了拟议方法的绩效,也与标准的巡逻算法相比。