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Journal ArticleOpen Access

EDITH : ECG Biometrics Aided by Deep Learning for Reliable Individual Authentication

Author Affiliations
Bangladesh University of Engineering and Technology, Qatar University
Published InIEEE Transactions on Emerging Topics in Computational Intelligence
Year2021
Citations54

Abstract

In recent years, physiological signal-based authentication has shown great promises, for its inherent robustness against forgery. Electrocardiogram (ECG) signal, being the most widely studied biosignal, has also received the highest level of attention in this regard. It has been proven with numerous studies that by analyzing ECG signals from different persons, it is possible to identify them, with acceptable accuracy. In this work, we present, EDITH, a deep learning-based framework for ECG biometrics authentication system. Moreover, we hypothesize and demonstrate that Siamese architectures can be used over typical distance metrics for improved performance. We have evaluated EDITH using 4 commonly used datasets and outperformed the prior works using a fewer number of beats. EDITH performs competitively using just a single…
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