使用深度学习识别无人机的特征感知射频利用(陷阱)指纹识别

Hossein Jafari, Erik Blasch, K. Pham, Genshe Chen
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引用次数: 0

摘要

当前,非合作型无人机在城市空域的运行面临着新的挑战。同样,执法部门也需要无人机的探测能力来保障安全(例如,机场和森林火灾的情况感知,协议限制无人机在距离事件几海里的范围内操作)。本文提出了一种新的物理层认证方案,用于识别具有相同视觉特征的无人机,如相同的无人机类型和制造商。在每架无人机内,从无人机传输的射频(RF)信号具有独特的特征,称为RF指纹,可用于区分无人机。在无线领域知识中提出的传输信号的信噪比(SNR)表示无人机上的设备。snr感知射频开发(SNARE)方法解决方案提高了应用于图像的传统机器学习神经网络模型的整体性能。本文比较了卷积神经网络(CNN)、深度神经网络(DNN)、递归神经网络(RNN)等不同深度学习技术的性能指标,以及滑动窗口大小、学习率、信噪比范围等相关超参数的影响。本研究采用多架相同的无人机在距离接收节点不同距离悬停时采集的实验射频数据。与不考虑接收射频信号相关信噪比信息的传统模型相比,我们提出的SNARE将CNN、DNN和RNN模型的无人机分类分别从84%提高到96%、91%提高到96%和80%提高到86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signature-Aware RF Exploitation (SNARE) Fingerprinting using Deep Learning to identify UAVs
Currently, there are emerging challenges with non-cooperative unmanned aerial vehicle (UAV) operating in urban airspaces. Likewise, law-enforcement groups need UAV detection capabilities to respond for safety and security (e.g., as defined for situation awareness at airports and forest fires where protocols restrict UAVs from operating within a few nautical miles from the event). This paper presents a novel physical layer authentication solution to identify UAVs that have identical visual signatures such as the same drone type and manufacturer. Within each UAV, the radio frequency (RF) signals transmitted from UAVs have a unique signature, called RF fingerprint, that can be used to distinguish among UAVs. The proposed Signal-to-Noise Ratio (SNR) of the transmitted signal in the wireless domain knowledge signifies the equipment onboard the UAV. The SNR-Aware RF Exploitation (SNARE) method solution improves the overall performance of conventional machine learning neural network models applied to imagery. This paper compares the performance metrics of different deep learning techniques including convolutional neural network (CNN), deep neural network (DNN), recurrent neural network (RNN), and the effect of related hyper parameters such as size of sliding window, learning rate, and SNR range. Experimental RF data collected from multiple identical UAVs hovering in different ranges from the receiver node are employed in this study. Compared to the traditional models that do not consider the received RF signal related SNR information, our proposed SNARE improves UAV classification of the CNN, DNN, and RNN models from 84% to 96%, 91% to 96%, and 80% to 86%, respectively.
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