基于深度学习的射频指纹设备认证码

J. Bassey, Xiangfang Li, Lijun Qian
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引用次数: 11

摘要

在本文中,我们提出了设备认证码(DAC),这是一种通过利用无线接口的射频(RF)签名来认证物联网设备的新方法。所提出的DAC是基于射频指纹、信息论方法、特征学习和深度学习的鉴别能力。具体来说,自动编码器用于自动从射频跟踪中提取特征,重构误差用作DAC,并且该DAC对于设备和感兴趣的特定消息是唯一的。然后使用柯尔莫戈洛夫-斯米尔诺夫(K-S)检验将自编码器产生的重构误差的分布与接收到的消息进行匹配,结果将确定感兴趣的设备是否属于授权用户。我们分别在六个ZigBee和五个通用软件定义无线电外设(USRP)设备的两个实验收集的RF走线上验证了这一概念。走线通过改变设备的位置和移动性以及通道干扰和噪声来跨越一系列信噪比,以确保模型的鲁棒性。实验结果表明,DAC能够通过提取任何感兴趣的无线设备所独有的显著特征来防止设备模拟,并可用于识别RF设备。此外,该方法在模型训练期间不需要入侵者的射频痕迹,但能够识别训练期间未见的设备,使其具有实用性。
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Device Authentication Codes based on RF Fingerprinting using Deep Learning
In this paper, we propose Device Authentication Code (DAC), a novel method for authenticating IoT devices with wireless interface by exploiting their radio frequency (RF) signatures. The proposed DAC is based on RF fingerprinting, information theoretic method, feature learning, and discriminatory power of deep learning. Specifically, an autoencoder is used to automatically extract features from the RF traces, and the reconstruction error is used as the DAC and this DAC is unique to the device and the particular message of interest. Then Kolmogorov-Smirnov (K-S) test is used to match the distribution of the reconstruction error generated by the autoencoder and the received message, and the result will determine whether the device of interest belongs to an authorized user. We validate this concept on two experimentally collected RF traces from six ZigBee and five universal software defined radio peripheral (USRP) devices, respectively. The traces span a range of Signalto- Noise Ratio by varying locations and mobility of the devices and channel interference and noise to ensure robustness of the model. Experimental results demonstrate that DAC is able to prevent device impersonation by extracting salient features that are unique to any wireless device of interest and can be used to identify RF devices. Furthermore, the proposed method does not need the RF traces of the intruder during model training yet be able to identify devices not seen during training, which makes it practical.
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