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Marker-Less Micro Aerial Vehicle Detection and Localization Using Convolutional Neural Networks

机译:使用卷积神经网络的标记微空气车辆检测和本地化

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摘要

A relative localization system for micro aerial vehicles (MAVs), which is able to work without any markers or other specialized equipment, is presented in this letter. The system utilizes images from an onboard camera to detect nearby MAVs using a convolutional neural network. When compared to traditional computer vision-based relative localization systems, this approach removes the need for specialized markers to be placed on the MAVs, saving weight and space, while also enabling localization of non-cooperating robots. The system is designed and implemented to run online, onboard an MAV platform in order to enable relative stabilization of several MAVs in a formation or swarm-like behavior, when operating in a closed feedback loop with the control system of the MAVs. We demonstrate the viability and robustness of the proposed method in real-world experiments. The method was also designed for the purpose of autonomous aerial interception and is a fitting complement to other MAV detection and relative localization methods for this purpose, as is shown in the experiments.
机译:在这封信中呈现了没有任何标记或其他专用设备的微型航空车辆(MAVS)的相对定位系统,其能够在没有任何标记或其他专用设备。该系统利用船上摄像机的图像使用卷积神经网络检测附近的MAV。与传统计算机视觉的相对定位系统相比,这种方法会消除对专业标记的需求放在MAV,节省重量和空间,同时也能够实现非协作机器人的本地化。该系统被设计和实现以在线运行,在MAV平台上运行,以便在使用MAVS的控制系统的闭合反馈循环中操作时,在形成或群体状行为中实现多个MAV的相对稳定。我们展示了现实世界实验中所提出的方法的可行性和稳健性。该方法还设计用于自主空中拦截的目的,并且是对其他MAV检测和相对定位方法的装配补充,如实验所示。

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