BioTag: robust RFID-based continuous user verification using physiological features from respiration

Mobile and Ad Hoc Networking and Computing(2022)

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摘要
ABSTRACTFor decades, one-time verification has been the standard for user verification at entry points, office rooms, etc. However, such approaches request users to provide their secrets (e.g., entering passwords and collecting fingerprints) and re-verify (e.g., screen shutdown) manually. Thus, they cannot confirm whether the user is a legitimate or an imposter after verification, which raises the urgent demand for a more convenient and secure solution to perform continuous user verification. However, existing continuous verification methods heavily rely on users' active participation, which is inconvenient. Toward this end, we propose a continuous user verification system, BioTag, which utilizes the low-cost radio frequency identification (RFID) technology to capture unique physiological characteristics rooted in the users' respiration motions for continuous user verification. Specifically, we use two RFID tags attached to a user's chest and abdomen to capture the user's intrinsic respiratory patterns via RFID signals. We develop respiratory feature extraction methods based on waveform morphology analysis and fuzzy wavelet transformation (FWPT) to derive unique biometric information from the user's respiration signals. Furthermore, we develop an adaptive classifier using the gradient boosting decision tree (GBDT) to identify legitimate users and attackers accurately. Extensive experiments involving 41 participants demonstrate that BioTag can robustly authenticate users and detect various types of adversaries with low training effort. In particular, our system can achieve over 95.2% and 94.8% verification accuracy on random attack and imitation attack scenarios, respectively.
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