Automated Foreign Object Debris Detection System based on UAV

Chadi M'Sila, R. Ayad, N. A. Oufroukh
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引用次数: 1

Abstract

The presence of Foreign Object Debris (FOD) on airport platforms constitutes a big risk, both for aircraft and for personnel. This debris, whatever its nature or size, whether it's a private effect, a tool, a component from an aircraft, or any object, As soon because it isn't observed and removed, it's liable becoming a FOD within the moving area. FOD can even be violently projected by jet blast, which might cause damage to other aircraft and injure personnel on the bottom, This paper discuss briefly FOD detection systems and the use of unmanned aerial systems for an automated FOD detection system on runways, which involves taking images of the runway with an Unmanned Aerial Vehicle (UAV), which could be detected and identified using artificial intelligence techniques. The method for determining an exact FOD position from aerial data is described in this study using a perspective projection transformation is used to determine the object's location in the field. For accurate findings, a strong object detection is essential, which is why the cutting-edge deep neural network YOLOV5 is used with both DeepSort Object tracking method. The paper represent an Automated UAV Navigation with PID control based for path tracking. A GUI that has been developed alow the operator to select the runway's intended path to be scanned and visualize the tracked FOD that has been found and its position in order to send a report that the operator can erase from the runway. The proposed system was assessed in real-time testing and a built-in Simulation under GAZEBO using the commercial quad copter Bebop connected to a base station operating under the Robot Operating System (ROS). our approach successfully identified several FODs using a combination of YOLOv5 and deepsort with an inference speed of 30 fps with a high accuarcy over 80%. The advantages of this system is the fulfilment of the FAA performance criteria of an AFDS, it facilitate the FOD scanning operation by using a graphical user interface that allow the operator to start the FOD scanning operation by selecting only the interested area in the runway, drone navigation tests with a 10 m/s wind speed were satisfactory, as well as it's ability to locate and send report of the detected FODs with small distance error less than 40 cm while a drone navigate with a 5m/s speed.
基于无人机的异物碎片自动检测系统
机场平台上的异物碎片(FOD)的存在对飞机和人员都构成了很大的风险。这些碎片,无论其性质或大小,无论是私人物品,工具,飞机部件还是任何物体,只要它没有被观察和移除,它就有可能成为移动区域内的FOD。FOD甚至可以通过喷射冲击波猛烈地投射,这可能会对其他飞机造成伤害,并对底部的人员造成伤害。本文简要讨论了FOD检测系统以及无人机系统在跑道上的自动FOD检测系统的应用,该系统涉及使用无人机(UAV)拍摄跑道图像,并使用人工智能技术进行检测和识别。本研究描述了从航空数据中确定精确FOD位置的方法,该方法使用透视投影变换来确定目标在野外的位置。为了获得准确的发现,强大的目标检测是必不可少的,这就是为什么尖端的深度神经网络YOLOV5与DeepSort对象跟踪方法一起使用。提出了一种基于路径跟踪的PID控制无人机自动导航系统。已经开发的GUI允许操作员选择要扫描的跑道的预定路径,并将已发现的跟踪FOD及其位置可视化,以便发送操作员可以从跑道上删除的报告。提出的系统在GAZEBO下进行了实时测试和内置仿真评估,使用商用四旋翼飞机Bebop连接到机器人操作系统(ROS)下运行的基站。我们的方法使用YOLOv5和deepsort的组合成功地识别了几个FODs,推理速度为30 fps,精度超过80%。该系统的优点是满足FAA对AFDS的性能要求,通过图形用户界面方便了FOD扫描操作,允许操作员在跑道上选择感兴趣的区域开始FOD扫描操作,在10 m/s风速下进行无人机导航测试令人满意。以及在无人机以5米/秒的速度导航时,以小于40厘米的距离误差定位和发送检测到的FODs报告的能力。
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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