Distinguishable IQ Feature Representation for Domain-Adaptation Learning of WiFi Device Fingerprints

Abdurrahman Elmaghbub;Bechir Hamdaoui
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Abstract

Deep learning (DL)-based RF fingerprinting (RFFP) technology has emerged as a powerful physical-layer security mechanism, enabling device identification and authentication based on unique device-specific signatures that can be extracted from the received RF signals. However, DL-based RFFP methods face major challenges concerning their ability to adapt to domain (e.g., day/time, location, channel, etc.) changes and variability. This work proposes a novel IQ data representation and feature design, termed Double-Sided Envelope Power Spectrum or EPS , that is proven to significantly overcome the domain adaptation challenges associated with WiFi transmitter fingerprinting. By accurately capturing device hardware impairments while suppressing irrelevant domain information, EPS offers improved feature selection for DL models in RFFP. Our experimental evaluation demonstrates the effectiveness of the integration of EPS representation with a Convolution Neural Network (CNN) model, termed EPS-CNN , achieving over 99% testing accuracy in same-day/channel/location evaluations and 93% accuracy in cross-day evaluations, outperforming the traditional IQ representation. Additionally, EPS-CNN excels in cross-location evaluations, achieving a 95% accuracy. The proposed representation significantly enhances the robustness and generalizability of DL-based RFFP methods, thereby presenting a transformative solution to IQ data-based device fingerprinting.
用于 WiFi 设备指纹领域适应性学习的可区分 IQ 特征表示法
基于深度学习(DL)的射频指纹(RFFP)技术已成为一种强大的物理层安全机制,可根据从接收到的射频信号中提取的独特设备特定签名进行设备识别和身份验证。然而,基于 DL 的 RFFP 方法在适应领域(如日期/时间、位置、信道等)变化和可变性方面面临重大挑战。这项研究提出了一种新颖的 IQ 数据表示和特征设计(称为双面包络功率谱或 EPS),经证明可显著克服与 WiFi 发射器指纹相关的域适应性挑战。通过准确捕捉设备硬件损伤,同时抑制无关域信息,EPS 为 RFFP 中的 DL 模型提供了更好的特征选择。我们的实验评估证明了 EPS 表示法与卷积神经网络(CNN)模型(称为 EPS-CNN)集成的有效性,在同日/信道/位置评估中实现了超过 99% 的测试准确率,在跨日评估中实现了 93% 的准确率,优于传统的 IQ 表示法。此外,EPS-CNN 在跨地点评估中表现出色,准确率达到 95%。所提出的表示方法大大增强了基于 DL 的 RFFP 方法的鲁棒性和通用性,从而为基于 IQ 数据的设备指纹识别提供了一种变革性的解决方案。
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