Fingerprinting radio frequency (RF) emitters typically involves finding unique characteristics that are featured in their received signal. These fingerprints are nuanced, but sufficiently detailed, motivating the pursuit of methods that can successfully extract them. The downstream task that requires the most meticulous RF fingerprinting (RFF) is known as specific emitter identification (SEI), which entails recognising each individual transmitter. RFF and SEI have a long history, with numerous defence and civilian applications such as signal intelligence, electronic surveillance, physical-layer authentication of wireless devices, to name a few. In recent years, data-driven RFF approaches have become popular due to their ability to automatically learn intricate fingerprints. They generally deliver superior performance when compared to traditional RFF techniques that are often labour-intensive, inflexible, and only applicable to a particular emitter type or transmission scheme. In this paper, we present a generic and versatile machine learning (ML) framework for data-driven RFF with several popular downstream tasks such as SEI, data association (EDA) and RF emitter clustering (RFEC). It is emitter-type agnostic. We then demonstrate the introduced framework for several tasks using real RF datasets for spaceborne surveillance, signal intelligence and countering drones applications.
翻译:射频发射器指纹识别通常涉及寻找其接收信号中具有的独特特征。这些指纹虽微妙但足够详细,这促使人们寻求能够成功提取这些指纹的方法。需要最精细射频指纹识别的下游任务被称为特定发射器识别,其核心在于识别每个单独的发射器。射频指纹识别与特定发射器识别拥有悠久历史,在国防和民用领域具有诸多应用,例如信号情报、电子监视、无线设备的物理层认证等。近年来,数据驱动的射频指纹识别方法因其能够自动学习复杂指纹而变得流行。与传统射频指纹技术相比,它们通常能提供更优越的性能——传统方法往往劳动密集、缺乏灵活性,且仅适用于特定发射器类型或传输方案。本文提出了一种通用且多功能的数据驱动射频指纹识别机器学习框架,适用于多种主流下游任务,如特定发射器识别、数据关联和射频发射器聚类。该框架与发射器类型无关。随后,我们利用真实的射频数据集,在星载监视、信号情报及反无人机应用等多个任务中演示了所提出的框架。