Mobile Device Identification Based on Two-dimensional Representation of RF Fingerprint with Deep Learning

Jing Li, Shunliang Zhang, Mengyan Xing, Zhuang Qiao, Xiaohui Zhang
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Abstract

Radio frequency (RF) fingerprint representing the inherent hardware characteristics of mobile devices has been employed to classify and identify wireless devices for the security of Internet of Things (IoT). Existing works on RF fingerprinting are usually based on the amplitude or phase of RF signal envelope, which leads to relatively coarse features. Moreover, the classification performance over small sample dataset is poor. To solve the problem, a novel device identification method based on RF fingerprinting with on deep learning is proposed. In particular, the RF signal are transformed into two dimensional representations by image preprocessing. Then the gray images representing the RF fingerprints are classified by employing classical CNN. To verify the performance of the proposed approach, a testbed is constructed by using MATLAB build framework of gray image preprocessing. Extensive experiment results show that the identification accuracy can reach at least 90%. Even with the sample rate of 20Gsps. Particularly, the accuracy of iPhone can reach 100%. It is verified that the proposed method can effectively classify mobile devices even with small sample RF fingerprints represented two dimensional gray images,
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基于射频指纹二维表示和深度学习的移动设备识别
射频(RF)指纹代表移动设备固有的硬件特征,已被用于对无线设备进行分类和识别,以保障物联网(IoT)的安全。现有的射频指纹识别工作通常基于射频信号包络的幅度或相位,导致特征相对粗糙。此外,在小样本数据集上的分类性能较差。为了解决这一问题,提出了一种基于射频指纹的非深度学习设备识别方法。特别地,通过图像预处理将射频信号转换成二维表示。然后利用经典CNN对代表射频指纹的灰度图像进行分类。为了验证该方法的性能,利用MATLAB构建了灰度图像预处理框架,搭建了一个实验平台。大量实验结果表明,该方法的识别准确率可达90%以上。即使是20Gsps的采样率。特别是iPhone的准确率可以达到100%。实验结果表明,该方法可以有效地对具有二维灰度图像的小样本射频指纹的移动设备进行分类。
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