Amani Al-Shawabka;Philip Pietraski;Sudhir B Pattar;Pedram Johari;Tommaso Melodia
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To date, the existing RFFDL-based techniques have only been able to demonstrate a desirable performance when the training and testing environment remains the same, which makes the solutions impractical. <italic>SignCRF</i> brings to the RFFDL landscape what it has been missing so far: a scalable, channel-agnostic data-driven radio authentication platform with unmatched precision in fingerprinting wireless devices based on their unique manufacturing impairments that is <italic>independent of the dynamic nature of the environment or channel irregularities caused by mobility</i>. <italic>SignCRF</i> consists of: (i) a classifier developed in a base-environment with minimum channel dynamics, and finely trained to authenticate devices with high accuracy and at scale; (ii) an environment translator that is carefully designed and trained to remove the dynamic channel impact from RF signals while maintaining the radio's specific “signature”; and (iii) a Max Rule module that selects the highest precision authentication technique between the baseline classifier and the environment translator per radio. We design, train, and validate the performance of <italic>SignCRF</i> for multiple technologies in dynamic environments and at scale (100 LoRa and 20 WiFi devices, the largest datasets available in the literature). We assess the scalability of <italic>SignCRF</i> across various testbed scales by validating our system using small, medium, and large-scale testbeds, with sizes of 5, 20, and 100 devices, respectively. We demonstrate that <italic>SignCRF</i> can significantly improve the RFFDL performance by achieving as high as 100% correct authentication for WiFi devices and 80% correctly authenticated LoRa devices, a 5x and 8x improvement when compared to the state-of-the-art respectively. Furthermore, we show that <italic>SignCRF</i> is resilient to adversarial actions by reducing the device recognition accuracy from 73% to 6%, which translates into zero mis-authentication of adversary radios that try to impersonate legitimate devices, which has not been achieved by any prior RFFDL techniques.","PeriodicalId":50389,"journal":{"name":"IEEE Transactions on Mobile Computing","volume":"24 10","pages":"9383-9394"},"PeriodicalIF":9.2000,"publicationDate":"2025-04-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"SignCRF: Scalable Channel-Agnostic Data-Driven Radio Authentication System\",\"authors\":\"Amani Al-Shawabka;Philip Pietraski;Sudhir B Pattar;Pedram Johari;Tommaso Melodia\",\"doi\":\"10.1109/TMC.2025.3564556\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Radio Frequency Fingerprinting through Deep Learning (RFFDL) is a data-driven IoT authentication technique that leverages the unique hardware-level manufacturing imperfections associated with a particular device to recognize (“fingerprint”) the device itself based on variations introduced in the transmitted waveform. Key impediments in developing robust and scalable Radio Frequency Fingerprinting through Deep Learning (RFFDL) techniques that are practical in dynamic and mobile environments are the non-stationary behavior of the wireless channel and other impairments introduced by the propagation conditions. To date, the existing RFFDL-based techniques have only been able to demonstrate a desirable performance when the training and testing environment remains the same, which makes the solutions impractical. <italic>SignCRF</i> brings to the RFFDL landscape what it has been missing so far: a scalable, channel-agnostic data-driven radio authentication platform with unmatched precision in fingerprinting wireless devices based on their unique manufacturing impairments that is <italic>independent of the dynamic nature of the environment or channel irregularities caused by mobility</i>. <italic>SignCRF</i> consists of: (i) a classifier developed in a base-environment with minimum channel dynamics, and finely trained to authenticate devices with high accuracy and at scale; (ii) an environment translator that is carefully designed and trained to remove the dynamic channel impact from RF signals while maintaining the radio's specific “signature”; and (iii) a Max Rule module that selects the highest precision authentication technique between the baseline classifier and the environment translator per radio. We design, train, and validate the performance of <italic>SignCRF</i> for multiple technologies in dynamic environments and at scale (100 LoRa and 20 WiFi devices, the largest datasets available in the literature). We assess the scalability of <italic>SignCRF</i> across various testbed scales by validating our system using small, medium, and large-scale testbeds, with sizes of 5, 20, and 100 devices, respectively. We demonstrate that <italic>SignCRF</i> can significantly improve the RFFDL performance by achieving as high as 100% correct authentication for WiFi devices and 80% correctly authenticated LoRa devices, a 5x and 8x improvement when compared to the state-of-the-art respectively. 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引用次数: 0
摘要
通过深度学习进行射频指纹识别(RFFDL)是一种数据驱动的物联网认证技术,它利用与特定设备相关的独特硬件级制造缺陷,根据传输波形中引入的变化来识别设备本身(“指纹”)。通过深度学习(RFFDL)技术开发在动态和移动环境中实用的鲁棒和可扩展射频指纹识别的主要障碍是无线信道的非平稳行为和传播条件引入的其他缺陷。到目前为止,现有的基于rffdl的技术只能在训练和测试环境保持不变的情况下展示理想的性能,这使得解决方案不切实际。SignCRF为RFFDL领域带来了迄今为止所缺少的东西:一个可扩展的、信道无关的数据驱动的无线电认证平台,在指纹无线设备中具有无与伦比的精度,基于其独特的制造缺陷,独立于环境的动态性质或由移动性引起的信道不规则性。SignCRF包括:(i)在具有最小通道动态的基础环境中开发的分类器,并经过精细训练以高精度和大规模地验证设备;(ii)经过精心设计和训练的环境转换器,以消除射频信号的动态信道影响,同时保持无线电的特定“特征”;以及(iii) Max Rule模块,该模块在每个无线电的基线分类器和环境转换器之间选择最高精度的认证技术。我们设计、训练和验证了SignCRF在动态环境和大规模(100 LoRa和20 WiFi设备,文献中最大的数据集)中多种技术的性能。我们通过分别使用5个、20个和100个设备大小的小型、中型和大型测试平台验证我们的系统,来评估SignCRF在各种测试平台规模上的可扩展性。我们证明,SignCRF可以显著提高RFFDL性能,为WiFi设备实现高达100%的正确身份验证,为LoRa设备实现高达80%的正确身份验证,与最先进的技术相比,分别提高了5倍和8倍。此外,我们表明,通过将设备识别准确率从73%降低到6%,SignCRF对对抗行为具有弹性,这意味着对试图冒充合法设备的对手无线电的零错误认证,这是任何先前的RFFDL技术都无法实现的。
SignCRF: Scalable Channel-Agnostic Data-Driven Radio Authentication System
Radio Frequency Fingerprinting through Deep Learning (RFFDL) is a data-driven IoT authentication technique that leverages the unique hardware-level manufacturing imperfections associated with a particular device to recognize (“fingerprint”) the device itself based on variations introduced in the transmitted waveform. Key impediments in developing robust and scalable Radio Frequency Fingerprinting through Deep Learning (RFFDL) techniques that are practical in dynamic and mobile environments are the non-stationary behavior of the wireless channel and other impairments introduced by the propagation conditions. To date, the existing RFFDL-based techniques have only been able to demonstrate a desirable performance when the training and testing environment remains the same, which makes the solutions impractical. SignCRF brings to the RFFDL landscape what it has been missing so far: a scalable, channel-agnostic data-driven radio authentication platform with unmatched precision in fingerprinting wireless devices based on their unique manufacturing impairments that is independent of the dynamic nature of the environment or channel irregularities caused by mobility. SignCRF consists of: (i) a classifier developed in a base-environment with minimum channel dynamics, and finely trained to authenticate devices with high accuracy and at scale; (ii) an environment translator that is carefully designed and trained to remove the dynamic channel impact from RF signals while maintaining the radio's specific “signature”; and (iii) a Max Rule module that selects the highest precision authentication technique between the baseline classifier and the environment translator per radio. We design, train, and validate the performance of SignCRF for multiple technologies in dynamic environments and at scale (100 LoRa and 20 WiFi devices, the largest datasets available in the literature). We assess the scalability of SignCRF across various testbed scales by validating our system using small, medium, and large-scale testbeds, with sizes of 5, 20, and 100 devices, respectively. We demonstrate that SignCRF can significantly improve the RFFDL performance by achieving as high as 100% correct authentication for WiFi devices and 80% correctly authenticated LoRa devices, a 5x and 8x improvement when compared to the state-of-the-art respectively. Furthermore, we show that SignCRF is resilient to adversarial actions by reducing the device recognition accuracy from 73% to 6%, which translates into zero mis-authentication of adversary radios that try to impersonate legitimate devices, which has not been achieved by any prior RFFDL techniques.
期刊介绍:
IEEE Transactions on Mobile Computing addresses key technical issues related to various aspects of mobile computing. This includes (a) architectures, (b) support services, (c) algorithm/protocol design and analysis, (d) mobile environments, (e) mobile communication systems, (f) applications, and (g) emerging technologies. Topics of interest span a wide range, covering aspects like mobile networks and hosts, mobility management, multimedia, operating system support, power management, online and mobile environments, security, scalability, reliability, and emerging technologies such as wearable computers, body area networks, and wireless sensor networks. The journal serves as a comprehensive platform for advancements in mobile computing research.