Unmanned Aerial Vehicles (UAVs) dynamic encirclement is an emerging field with great potential. Researchers often get inspiration from biological systems, either from macro-world like fish schools or bird flocks etc, or from micro-world like gene regulatory networks (GRN). However, most swarm control algorithms rely on centralized control, global information acquisition, and communications among neighboring agents. In this work, we propose a distributed swarm control method based purely on vision and GRN without any direct communications, in which swarm agents of e.g. UAVs can generate an entrapping pattern to encircle an escaping target of UAV based purely on their installed omnidirectional vision sensors. A finite-state-machine (FSM) describing the behavioral model of each drone is also designed so that a swarm of drones can accomplish searching and entrapping of the target collectively in an integrated way. We verify the effectiveness and efficiency of the proposed method in various simulation and real-world experiments.
翻译:无人驾驶航空飞行器(UAVs)动态包围是一个新兴领域,具有巨大潜力。研究人员往往从生物系统中得到灵感,如鱼类学校或鸟群等宏观世界,或基因管理网络等微观世界。然而,大多数群落控制算法依赖于集中控制、全球信息获取和邻接物剂之间的通信。在这项工作中,我们建议一种纯粹基于视觉和GRN的分散的群落控制方法,而没有任何直接通信,其中无人驾驶航空器的群落代理物可以产生一种编织模式,将无人驾驶航空器纯粹基于其安装的全天线视觉传感器的逃逸目标围起来。描述每架无人驾驶飞机行为模型的固定状态机器也设计成这样一种使无人机能够以综合方式完成对目标的搜索和包围。我们核查了各种模拟和现实世界实验中拟议方法的有效性和效率。