首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A, Systems and humans >A Multiagent Swarming System for Distributed Automatic Target Recognition Using Unmanned Aerial Vehicles
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A Multiagent Swarming System for Distributed Automatic Target Recognition Using Unmanned Aerial Vehicles

机译:一种使用无人机的分布式自动目标识别多智能体群化系统

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Over the past few years, automatic target recognition (ATR) has emerged as an essential image analysis tool to identify objects from temporally and spatially disjoint possibly noisy image data. For many current applications, ATR is performed by unmanned aerial vehicles (UAVs) that fly within a reconnaissance area to collect image data through sensors and upload the data to a central ground control station for analyzing and identifying potential targets. The centralized approach to ATR introduces several problems, including scalability with the number of UAVs, network delays in communicating with the central location, and the susceptibility of the system to malicious attacks on the central location. These challenges can be addressed by using a distributed system for performing ATR. In this paper, we describe a multiagent-based prototype system that uses swarming techniques inspired from insect colonies to perform ATR using UAVs in a distributed manner within simulated scenarios. We assume that UAVs are constrained in the resources available onboard and in their capabilities for performing ATR due to payload limitations. Our focus in this paper is on the coordination aspects between UAVs to efficiently decide how they are to act by using a swarming mechanism. We describe algorithms for the different operations performed by the UAVs in the system and for different swarming strategies, which are embedded within software agents located on the UAVs. We provide empirical simulations of our system within a simulated area of interest to determine its behavior in different scenarios with varying operational constraints. Our experimental results indicate that swarming strategies for distributed ATR perform favorably compared with centralized ATR strategies.
机译:在过去的几年中,自动目标识别(ATR)成为一种必不可少的图像分析工具,可以从时间和空间上分离的,可能有噪声的图像数据中识别出物体。对于许多当前应用,ATR由在侦察区域内飞行的无人飞行器(UAV)执行,以通过传感器收集图像数据,并将数据上传到中央地面控制站以分析和识别潜在目标。 ATR的集中式方法引入了几个问题,包括可扩展的无人机数量,与中心位置通信的网络延迟以及系统对中心位置进行恶意攻击的敏感性。这些挑战可以通过使用执行ATR的分布式系统来解决。在本文中,我们描述了一个基于多代理的原型系统,该系统使用了从昆虫殖民地获得的蜂群技术,在模拟场景中以分布式方式使用无人机进行ATR。我们假设由于有效载荷的限制,无人机在机载可用资源及其执行ATR的能力方面受到限制。我们在本文中的重点是无人机之间的协调方面,以通过使用群集机制有效地决定无人机的行为方式。我们描述了用于无人机在系统中执行的不同操作的算法以及用于不同蜂群策略的算法,这些算法嵌入了位于无人机上的软件代理中。我们在感兴趣的模拟区域内提供系统的经验模拟,以确定其在具有不同操作约束的不同情况下的行为。我们的实验结果表明,与集中式ATR策略相比,用于分布式ATR的群集策略表现良好。

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