LGAISPMar 6, 2024

Unsupervised Contrastive Learning for Robust RF Device Fingerprinting Under Time-Domain Shift

arXiv:2403.04036v19 citationsh-index: 34ICC 2024 - IEEE International Conference on Communications
Originality Incremental advance
AI Analysis

This addresses domain shift in RF device classification for wireless security, but is incremental as it adapts an existing method to a specific bottleneck.

The paper tackled the problem of domain shift degrading RF device fingerprinting accuracy by applying contrastive learning to learn domain-invariant features, resulting in accuracy improvements of 10.8% to 27.8% over baselines.

Radio Frequency (RF) device fingerprinting has been recognized as a potential technology for enabling automated wireless device identification and classification. However, it faces a key challenge due to the domain shift that could arise from variations in the channel conditions and environmental settings, potentially degrading the accuracy of RF-based device classification when testing and training data is collected in different domains. This paper introduces a novel solution that leverages contrastive learning to mitigate this domain shift problem. Contrastive learning, a state-of-the-art self-supervised learning approach from deep learning, learns a distance metric such that positive pairs are closer (i.e. more similar) in the learned metric space than negative pairs. When applied to RF fingerprinting, our model treats RF signals from the same transmission as positive pairs and those from different transmissions as negative pairs. Through experiments on wireless and wired RF datasets collected over several days, we demonstrate that our contrastive learning approach captures domain-invariant features, diminishing the effects of domain-specific variations. Our results show large and consistent improvements in accuracy (10.8\% to 27.8\%) over baseline models, thus underscoring the effectiveness of contrastive learning in improving device classification under domain shift.

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