On the extraction of RF fingerprints from LSTM hidden-state values for robust open-set detection

Luke Puppo, Weng-Keen Wong, Bechir Hamdaoui, Abdurrahman Elmaghbub, Lucy Lin
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Abstract

New capabilities in wireless network security have been enabled by deep learning that leverages and exploits signal patterns and characteristics in Radio Frequency (RF) data captured by radio receivers to identify and authenticate radio transmitters. Open-set detection is an area of deep learning that aims to identify RF data samples captured from new devices during deployment (aka inference) that were not part of the training set; i.e. devices that were unseen during training. Past work in open-set detection has mostly been applied to independent and identically distributed data such as images. In contrast, RF signal data present a unique set of challenges as the data forms a time series with non-linear time dependencies among the samples. In this paper, we introduce a novel open-set detection approach for RF data-driven device identification that extracts its neural network features from patterns of the hidden state values within a Convolutional Neural Network Long Short-Term Memory (CNN+LSTM) model. Experimental results obtained using real datasets collected from 15 IoT devices, each enabled with LoRa, wireless-Wi-Fi, and wired-Wi-Fi communication protocols, show that our new approach greatly improves the area under the precision-recall curve, and hence, can be used successfully to monitor and control unauthorized network access of wireless devices.
从 LSTM 隐藏状态值中提取射频指纹,实现稳健的开放集检测
深度学习利用和利用无线电接收器捕获的射频(RF)数据中的信号模式和特征来识别和验证无线电发射器,为无线网络安全带来了新的功能。开放集检测是深度学习的一个领域,旨在识别在部署(又称推理)过程中从新设备捕获的射频数据样本,这些样本不属于训练集的一部分,即在训练过程中未见过的设备。以往的开放集检测工作大多应用于独立且分布相同的数据,如图像。相比之下,射频信号数据则面临着一系列独特的挑战,因为这些数据形成了一个时间序列,样本之间存在非线性时间依赖关系。在本文中,我们介绍了一种用于射频数据驱动设备识别的新型开放集检测方法,该方法从卷积神经网络长短期记忆(CNN+LSTM)模型中的隐藏状态值模式中提取神经网络特征。实验结果表明,我们的新方法大大提高了精确度-召回曲线下的面积,因此可成功用于监测和控制无线设备未经授权的网络访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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