基于小波散射网络的深度射频指纹识别

Jing Ma, Pinyi Ren, Tiantian Zhang, Zhanyi Ren, Dongyang Xu
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引用次数: 0

摘要

随着5G和大规模物联网的部署,基于射频指纹的设备识别认证方案在轻量化和唯一性方面显示出独特的优势。然而,传统的基于机器学习的射频指纹识别方案存在计算复杂度高、准确率低等缺点。同时,该方案需要大规模的标记数据集来实现网络学习,由于级联的非线性,我们不能很好地理解这些网络的性质和最优配置。针对上述问题,本文提出了一种基于小波散射网络的小尺度数据集射频指纹识别方法。具体而言,在该方法中,我们首先设计了小波散射网络与深度残差网络相结合的混合网络模型(Resnet18)。然后,针对射频指纹识别的主要问题之一是不同时间尺度下信号信息的多样性,我们选择使用基于小波基的散射网络构建来完成射频指纹非线性特征的精确特征分解。这些特征对变形是稳定的,并保留高频信息用于识别。最后,我们可以利用得到的详细特征来实现射频辐射源设备的准确识别。实验结果表明,该方案能较好地抑制信号中噪声的干扰,提高特征表示能力,并能获得比其他比较方案更高的识别精度。
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Deep Radio Frequency Fingerprinting Based on Wavelet Scattering Network
With the deployment of 5G and large-scale Internet of Things (IoT), the equipment identification and authentication scheme based on RF fingerprint shows unique advantages in terms of lightweight and uniqueness. However, traditional RF fingerprint identification scheme based on machine learning has the disadvantages of high computational complexity and low accuracy. Meanwhile, this scheme requires large-scale labeled datasets to realize network learning, and due to the nonlinearity of the cascade, we can not well understand the properties and optimal configurations of these networks. To solve above problems, in this paper, we propose an RF fingerprint identification method based on wavelet scattering network in the small-scale dataset. Specifically, in this method, we first design a hybrid network model of wavelet scattering network combined with deep residual network (Resnet18). Then, since one of the main problems of RF fingerprinting is the diversity of signal information at different time scales, we choose to use the construction of scattering network based on wavelet basis to complete the accurate feature decomposition of the nonlinear features of RF fingerprint. These features are stable against deformations and retain high frequency information for identification. Finally, we can use the obtained detailed features to realize the accurate identification of RF radiation source equipments. The experimental results show that our scheme can better suppress the interference of noise in the signal, improve the feature representation ability, and it can obtain higher identification accuracy than other comparison schemes.
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