Radio Frequency Fingerprint Recognition Method Based on Generative Adversarial Net

Yixuan Yang, Tianfeng Yan
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引用次数: 4

Abstract

RF fingerprint recognition is an emerging technology for identifying specific hardware features of wireless transmitters. In order to solve the problem of illegal transmitter hazardous wireless communication security, this paper proposes a method of generating RF fingerprint recognition methods based on generative adversarial net (GAN).This article first uses I / Q data through wavelet transform data pre-processing , Since the wavelet transform can describe the features of different frequency signals, the characteristics of radio frequency fingerprint can be highlighted after wavelet transform of I / Q data. Then we have designed a generative adversarial net model, which consists of a generate model and a discriminant model. Generate model input noise to generate a pseudo data distribution, The discriminant model enters the data distribution of the real trusted transmitter and the generated dummy data distribution generated, and the determination result is fed back to the generator, allowing the generator to update to generate more real pseudo data distributions, better The network model is used for radio frequency fingerprint recognition. Based on the above, it is possible to effectively identify rogue radio frequency transmitters to some extent to solve wireless security issues. The experimental results show that the generative adversarial net (GAN) can distinguish between 98.1% accuracy of the credibility transmitter and illegal transmitter, it has higher accuracy than traditional convolutional neural networks (CNN) and full connectivity neural network (DNN).
基于生成对抗网络的射频指纹识别方法
射频指纹识别是一种用于识别无线发射机特定硬件特征的新兴技术。为了解决非法发射机危害无线通信安全的问题,本文提出了一种基于生成式对抗网络(GAN)的射频指纹识别方法生成方法。本文首先利用I / Q数据通过小波变换进行数据预处理,由于小波变换可以描述不同频率信号的特征,因此对I / Q数据进行小波变换后可以突出射频指纹的特征。然后,我们设计了一个生成式对抗网络模型,该模型由生成模型和判别模型组成。生成模型输入噪声生成伪数据分布,判别模型输入真实可信发射机的数据分布和生成的伪数据分布生成,并将判定结果反馈给生成器,允许生成器更新生成更真实的伪数据分布,更好的将网络模型用于射频指纹识别。基于以上,可以有效识别流氓射频发射机,在一定程度上解决无线安全问题。实验结果表明,生成式对抗网络(GAN)区分可信发射机和非法发射机的准确率为98.1%,其准确率高于传统卷积神经网络(CNN)和全连接神经网络(DNN)。
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