Peer-to-Peer Localization via On-board Sensing for Aerial Flocking

Fatima Rajab, Samet Güler, J. Shamma
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引用次数: 1

Abstract

The performance of mobile multi-robot systems dramatically depends on the mutual awareness of individual robots, particularly the positions of other robots. GPS and motion capture cameras are commonly used to acquire and ultimately communicate positions of robots. Such sensing schemes depend on infrastructure and restrict the capabilities of a multi-robot system, e.g., the robots cannot operate in both indoor and outdoor environments. Conversely, peer-to-peer localization algorithms can be used to free the robots from such infrastructures. In such systems, robots use on-board sensing to infer the positions of nearby robots. In this approach, it is essential to have a model of the motion of other robots. We introduce a flocking localization scheme that takes into account motion behavior exhibited by the other robots. The proposed scheme depends only on the robots’ on-board sensors and computational capabilities and yields a more accurate localization solution than the peer-to-peer localization algorithms that do not take into account the flocking behavior. We verify the performance of our scheme in simulations and demonstrate experiments on two unmanned aerial vehicles.
基于机载传感的空中蜂群点对点定位
移动多机器人系统的性能很大程度上取决于单个机器人的相互感知,特别是其他机器人的位置。GPS和运动捕捉相机通常用于获取和最终通信机器人的位置。这种传感方案依赖于基础设施,并限制了多机器人系统的能力,例如,机器人不能在室内和室外环境中操作。相反,点对点定位算法可用于将机器人从此类基础设施中解放出来。在这样的系统中,机器人使用车载传感来推断附近机器人的位置。在这种方法中,有一个其他机器人的运动模型是必不可少的。我们引入了一种考虑其他机器人运动行为的群集定位方案。该方案仅依赖于机器人的机载传感器和计算能力,比不考虑群集行为的点对点定位算法产生更准确的定位解决方案。通过仿真验证了该方案的有效性,并在两架无人机上进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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