基于数据包长度签名的无人机检测与识别

Pongjarun Kosolyudhthasarn, V. Visoottiviseth, Doudou Fall, S. Kashihara
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引用次数: 7

摘要

无人驾驶飞行器(UAV)在世界范围内变得非常流行。然而,消费级无人机可以在未经允许的情况下远距离控制,录制居住者的视频,这会导致隐私问题。现有的无人机探测系统需要特定的硬件和专家来操作和部署,这对于个人使用来说是昂贵的。在本文中,我们提出了一种无人机检测和识别系统,该系统利用廉价的商用现货(COTS)硬件,不需要专业知识来部署。我们的技术方法是被动地监听无人机与其控制器之间的无线信号,观察每架无人机的数据包传输特性。我们用三种类型的无人机来评估我们的原型系统,它们是Spark, AR和多比。实验结果表明,利用数据帧长度在20秒内识别飞行无人机类型是可行的。
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Drone Detection and Identification by Using Packet Length Signature
Unmanned Aerial Vehicle (UAV) as known as Drone has been becoming very popular around the world. However, a consumer UAV can be controlled from a long distance to record a video of occupants without permission, which causes privacy issues. Existing drone detection systems are required specific hardware and specialists to operate and deploy which are expensive for personal use. In this paper, we propose a drone detection and identification system which utilizes inexpensive commercial off-the-shelf (COTS) hardware and does not requires specialist knowledge to deploy. Our technical approach is to passively listen to the wireless signal between drone and its controller to observe for packet transmission characteristics of each drone. We evaluate our prototype system with three types of drones, which are Spark, AR, and Dobby. Our experiment results illustrate the feasibility of using the data frame length to identify the type of flying drone within 20 seconds.
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