With the rapid proliferation of edge computing, Radio Frequency Fingerprint Identification (RFFI) has become increasingly important for secure device authentication. However, practical deployment of deep learning-based RFFI models is hindered by a critical challenge: their performance often degrades significantly when applied across receivers with different hardware characteristics due to distribution shifts introduced by receiver variation. To address this, we investigate the source-data-free cross-receiver RFFI (SCRFFI) problem, where a model pretrained on labeled signals from a source receiver must adapt to unlabeled signals from a target receiver, without access to any source-domain data during adaptation. We first formulate a novel constrained pseudo-labeling-based SCRFFI adaptation framework, and provide a theoretical analysis of its generalization performance. Our analysis highlights a key insight: the target-domain performance is highly sensitive to the quality of the pseudo-labels generated during adaptation. Motivated by this, we propose Momentum Soft pseudo-label Source Hypothesis Transfer (MS-SHOT), a new method for SCRFFI that incorporates momentum-center-guided soft pseudo-labeling and enforces global structural constraints to encourage confident and diverse predictions. Notably, MS-SHOT effectively addresses scenarios involving label shift or unknown, non-uniform class distributions in the target domain -- a significant limitation of prior methods. Extensive experiments on real-world datasets demonstrate that MS-SHOT consistently outperforms existing approaches in both accuracy and robustness, offering a practical and scalable solution for source-data-free cross-receiver adaptation in RFFI.
翻译:随着边缘计算的快速普及,射频指纹识别(RFFI)在设备安全认证中变得日益重要。然而,基于深度学习的RFFI模型在实际部署中面临一个关键挑战:当应用于具有不同硬件特性的接收器时,由于接收器差异引入的分布偏移,其性能往往会显著下降。为解决这一问题,我们研究了源数据缺失的跨接收器RFFI(SCRFFI)问题,即一个在源接收器带标签信号上预训练的模型必须适应目标接收器的无标签信号,且在适应过程中无法访问任何源域数据。我们首先构建了一个基于约束伪标签的新型SCRFFI适应框架,并对其泛化性能进行了理论分析。分析揭示了一个关键见解:目标域性能对适应过程中生成的伪标签质量高度敏感。受此启发,我们提出了动量软伪标签源假设迁移(MS-SHOT),这是一种用于SCRFFI的新方法,它结合了动量中心引导的软伪标签生成,并通过全局结构约束来促进置信且多样化的预测。值得注意的是,MS-SHOT有效解决了目标域中存在标签偏移或未知非均匀类别分布的场景——这是先前方法的一个显著局限。在真实数据集上的大量实验表明,MS-SHOT在准确性和鲁棒性上均持续优于现有方法,为RFFI中的源数据缺失跨接收器适应提供了实用且可扩展的解决方案。