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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Deep Learning Based RF Fingerprint Identification Using Differential Constellation Trace Figure
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Deep Learning Based RF Fingerprint Identification Using Differential Constellation Trace Figure

机译:基于差分星座轨迹图的基于深度学习的RF指纹识别

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This paper proposes a novel deep learning-based radio frequency fingerprint (RFF) identification method for internet of things (IoT) terminal authentications. Differential constellation trace figure (DCTF), a two-dimensional (2D) representation of differential relationship of signal time series, is utilized to extract RFF features without requiring any synchronization. A convolutional neural network (CNN) is then designed to identify different devices using DCTF features. Compared to the existing CNN-based RFF identification methods, the proposed DCTF-CNN possesses the merits of high identification accuracy, zero prior information and low complexity. Experimental results have demonstrated that the proposed DCTF-CNN can achieve an identification accuracy as high as 99.1% and 93.8% under SNR levels of 30 dB and 15 dB, respectively, when classifying 54 target ZigBee devices, which significantly outperforms the existing RFF identification methods.
机译:本文提出了一种新颖的基于深度学习的射频指纹(RFF)识别方法,用于物联网(IoT)终端身份验证。差分星座轨迹图(DCTF)是信号时间序列的差分关系的二维(2D)表示形式,用于提取RFF特征,而无需任何同步。然后设计卷积神经网络(CNN),以使用DCTF功能识别不同的设备。与现有的基于CNN的RFF识别方法相比,提出的DCTF-CNN具有识别精度高,先验信息为零,复杂度低的优点。实验结果表明,在对54个目标ZigBee设备进行分类时,在30 dB和15 dB的SNR级别下,所提出的DCTF-CNN可以分别达到99.1%和93.8%的识别精度,大大优于现有的RFF识别方法。

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