A Novel Radio Frequency Fingerprint Identification Method Using Incremental Learning

Jie Zhou, Yang Peng, Guan Gui, Yun Lin, B. Adebisi, H. Gačanin, H. Sari
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引用次数: 1

Abstract

Radio frequency fingerprint (RFF) is regarded as a key technology in physical layer security in various wireless communications systems. Deep learning (DL) has achieved great success in the field of signal identification, particularly in improving performance and eliminating manual feature extraction. However, the training cost of these DL-based methods is usually large. It is unwise to retrain the network with whole data when it comes to new data. Therefore, we propose a novel RFF identification method based on incremental learning (IL), which uses continuous data stream to update the identification model, constantly. Experimental results show that with the increase of increment times, the accuracy of the proposed IL-based method gradually approaches the performance of joint training, and finally reaches 96.79%, which is only 1.9% lower than the performance upper bound.
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一种基于增量学习的射频指纹识别方法
在各种无线通信系统中,射频指纹(RFF)被认为是物理层安全的关键技术。深度学习(DL)在信号识别领域取得了巨大的成功,特别是在提高性能和消除人工特征提取方面。然而,这些基于dl的方法的训练成本通常很大。当涉及到新数据时,用整个数据重新训练网络是不明智的。因此,我们提出了一种基于增量学习(IL)的RFF识别方法,该方法使用连续的数据流不断更新识别模型。实验结果表明,随着增量次数的增加,本文提出的基于il的方法准确率逐渐接近联合训练的性能,最终达到96.79%,仅比性能上界低1.9%。
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