Authentication by Intelligent Learning: A Novel Hybrid Deep Learning/Machine-Learning Radio Frequency Fingerprinting Scheme

IF 2.3 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Tasnim Nizar Al-Qabbani;Gabriele Oligeri;Marwa Qaraqe
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引用次数: 0

Abstract

LoRa technology, widely used in the Internet of Things (IoT) domain, faces challenges with traditional cryptographic authentication methods due to power constraints and computing overhead. Radio Frequency Fingerprinting (RFFI) emerges as a low-cost, low-power solution. In this paper, we propose a novel RFFI method for authenticating LoRa devices, which combines deep learning (DL) features and supervised machine learning (ML) for classification. We examine authentication performance across multiple LoRa Spreading Factors (SFs) and assess the hybrid DL/ML approach. Moreover, we introduce a novel IQ sample transformation method by utilizing the histogram of the IQ samples and the 3D image channels. Among the DL models explored, the SwinTransformer (ST) and Few Shots Learning (FSL) models stand out. Experimental results show that our system achieves 97.5% accuracy with reduced complexity compared to the baseline schemes.
基于智能学习的身份验证:一种新的混合深度学习/机器学习射频指纹识别方案
LoRa技术广泛应用于物联网(IoT)领域,由于功耗和计算开销的限制,传统的加密认证方法面临挑战。射频指纹(RFFI)作为一种低成本、低功耗的解决方案应运而生。在本文中,我们提出了一种新的RFFI方法来验证LoRa设备,该方法结合了深度学习(DL)特征和监督机器学习(ML)进行分类。我们检查了跨多个LoRa扩散因子(sf)的身份验证性能,并评估了混合DL/ML方法。此外,我们还利用IQ样本的直方图和三维图像通道,提出了一种新的IQ样本变换方法。在探索的深度学习模型中,swingtransformer (ST)和Few Shots Learning (FSL)模型脱颖而出。实验结果表明,与基准方案相比,该系统的准确率达到97.5%,且复杂度降低。
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CiteScore
5.70
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0.00%
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