AirID: Injecting a Custom RF Fingerprint for Enhanced UAV Identification using Deep Learning

Subhramoy Mohanti, N. Soltani, K. Sankhe, Dheryta Jaisinghani, M. D. Felice, K. Chowdhury
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引用次数: 17

Abstract

We propose a framework called AirID that identifies friendly/authorized UAVs using RF signals emitted by radios mounted on them through a technique called as RF fingerprinting. Our main contribution is a method of intentionally inserting ‘signatures’ in the transmitted I/Q samples from each UAV, which are detected through a deep convolutional neural network (CNN) at the physical layer, without affecting the ongoing UAV data communication process. Specifically, AirID addresses the challenge of how to overcome the channel-induced perturbations in the transmitted signal that lowers identification accuracy. AirID is implemented using Ettus B200mini Software Defined Radios (SDRs) that serve as both static ground UAV identifiers, as well as mounted on DJI Matrice M100 UAVs to perform the identification collaboratively as an aerial swarm. AirID tackles the well-known problem of low RF fingerprinting accuracy in ‘train on one day test on another day’ conditions as the aerial environment is constantly changing. Results reveal 98% identification accuracy for authorized UAVs, while maintaining a stable communication BER of 10 -4 for the evaluated cases.
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AirID:使用深度学习注入自定义射频指纹以增强无人机识别
我们提出了一个名为AirID的框架,该框架使用安装在无人机上的无线电发出的射频信号,通过一种称为射频指纹的技术来识别友好/授权的无人机。我们的主要贡献是在每架无人机传输的I/Q样本中有意插入“签名”的方法,这些签名通过物理层的深度卷积神经网络(CNN)检测,而不会影响正在进行的无人机数据通信过程。具体来说,AirID解决了如何克服传输信号中降低识别精度的信道诱导扰动的挑战。AirID是使用Ettus B200mini软件定义无线电(sdr)实现的,该无线电既可以作为静态地面无人机标识符,也可以安装在大疆matrix M100无人机上,作为空中蜂群协同执行识别。由于空中环境不断变化,AirID解决了众所周知的“一天训练一天测试”条件下射频指纹识别精度低的问题。结果显示,授权无人机的识别准确率为98%,同时在评估情况下保持10 -4的稳定通信误码率。
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