The Tags Are Alright: Robust Large-Scale RFID Clone Detection Through Federated Data-Augmented Radio Fingerprinting
Mauro Piva, Gaia Maselli, Francesco Restuccia

TL;DR
This paper investigates RFID clone detection using radio fingerprinting under dynamic channel conditions, proposing federated learning and data augmentation techniques to significantly improve accuracy on a large-scale dataset.
Contribution
It introduces a large-scale RFID dataset and demonstrates that federated machine learning combined with data augmentation enhances clone detection accuracy under varying channel conditions.
Findings
FML improves accuracy by up to 48%
DA boosts FML performance by up to 31%
First large-scale experimental validation of FML and DA for RFID clone detection
Abstract
Millions of RFID tags are pervasively used all around the globe to inexpensively identify a wide variety of everyday-use objects. One of the key issues of RFID is that tags cannot use energy-hungry cryptography. For this reason, radio fingerprinting (RFP) is a compelling approach that leverages the unique imperfections in the tag's wireless circuitry to achieve large-scale RFID clone detection. Recent work, however, has unveiled that time-varying channel conditions can significantly decrease the accuracy of the RFP process. We propose the first large-scale investigation into RFP of RFID tags with dynamic channel conditions. Specifically, we perform a massive data collection campaign on a testbed composed by 200 off-the-shelf identical RFID tags and a software-defined radio (SDR) tag reader. We collect data with different tag-reader distances in an over-the-air configuration. To emulate…
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Taxonomy
TopicsRFID technology advancements · Wireless Signal Modulation Classification · Internet Traffic Analysis and Secure E-voting
Methods1x1 Convolution · Sigmoid Activation · Recursive Feature Pyramid
