CRAILGSPSep 21, 2025

Lightweight MobileNetV1+GRU for ECG Biometric Authentication: Federated and Adversarial Evaluation

arXiv:2509.20382v12 citationsh-index: 2
Originality Incremental advance
AI Analysis

It addresses secure and private authentication for wearable device users, but is incremental as it combines existing methods with new evaluations.

This paper tackled ECG biometric authentication for wearable devices by proposing a lightweight MobileNetV1+GRU model, achieving high accuracies up to 99.34% on multiple datasets, but accuracy dropped to as low as 0.80% under adversarial attacks.

ECG biometrics offer a unique, secure authentication method, yet their deployment on wearable devices faces real-time processing, privacy, and spoofing vulnerability challenges. This paper proposes a lightweight deep learning model (MobileNetV1+GRU) for ECG-based authentication, injection of 20dB Gaussian noise & custom preprocessing. We simulate wearable conditions and edge deployment using the ECGID, MIT-BIH, CYBHi, and PTB datasets, achieving accuracies of 99.34%, 99.31%, 91.74%, and 98.49%, F1-scores of 0.9869, 0.9923, 0.9125, and 0.9771, Precision of 0.9866, 0.9924, 0.9180 and 0.9845, Recall of 0.9878, 0.9923, 0.9129, and 0.9756, equal error rates (EER) of 0.0009, 0.00013, 0.0091, and 0.0009, and ROC-AUC values of 0.9999, 0.9999, 0.9985, and 0.9998, while under FGSM adversarial attacks, accuracy drops from 96.82% to as low as 0.80%. This paper highlights federated learning, adversarial testing, and the need for diverse wearable physiological datasets to ensure secure and scalable biometrics.

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