Fifth generation (5G) networks and beyond envisions massive Internet of Things (IoT) rollout to support disruptive applications such as extended reality (XR), augmented/virtual reality (AR/VR), industrial automation, autonomous driving, and smart everything which brings together massive and diverse IoT devices occupying the radio frequency (RF) spectrum. Along with spectrum crunch and throughput challenges, such a massive scale of wireless devices exposes unprecedented threat surfaces. RF fingerprinting is heralded as a candidate technology that can be combined with cryptographic and zero-trust security measures to ensure data privacy, confidentiality, and integrity in wireless networks. Motivated by the relevance of this subject in the future communication networks, in this work, we present a comprehensive survey of RF fingerprinting approaches ranging from a traditional view to the most recent deep learning (DL) based algorithms. Existing surveys have mostly focused on a constrained presentation of the wireless fingerprinting approaches, however, many aspects remain untold. In this work, however, we mitigate this by addressing every aspect - background on signal intelligence (SIGINT), applications, relevant DL algorithms, systematic literature review of RF fingerprinting techniques spanning the past two decades, discussion on datasets, and potential research avenues - necessary to elucidate this topic to the reader in an encyclopedic manner.
翻译:第五代(5G)网络和以后的第五代(5G)网络设想大规模地推出“物”互联网(IoT),以支持破坏性应用,如扩大现实(XR)、扩大/虚拟现实(AR/VR)、工业自动化、自主驾驶和智能一切,将拥有无线电频率频谱的大规模和多样化的IoT装置汇集在一起。除了频谱缩缩放和吞吐量挑战外,这种大规模的无线装置暴露了前所未有的威胁表面。RF指纹被誉为一种候选技术,可与加密和零信任安全措施相结合,以确保无线网络的数据隐私、保密和完整性。我们受这个主题在未来通信网络中的相关性的驱使,在这项工作中,我们对RF的指纹鉴定方法进行了全面调查,从传统的视角到最近的深层次学习算法。现有的调查主要侧重于对无线指纹鉴定方法的有限介绍,然而,许多方面仍然难以形容。在这项工作中,我们通过处理每个方面的背景,即信号情报(SIGINT)、应用程序、相关的DL算法、系统文献审查RF的指纹学方法,从而解释过去两个世纪的数据途径。