Journal ArticleUnknown
Robust biometric system using session invariant multimodal EEG and keystroke dynamics by the ensemble of self-ONNs
Authors
Author Affiliations
University of Dhaka, Qatar University, Purdue University West Lafayette, National University of Malaysia, ...
Published InComputers in Biology and Medicine
Year2022
Citations38
Abstract
Harnessing the inherent anti-spoofing quality from electroencephalogram (EEG) signals has become a potential field of research in recent years. Although several studies have been conducted, still there are some vital challenges present in the deployment of EEG-based biometrics, which is stable and capable of handling the real-world scenario. One of the key challenges is the large signal variability of EEG when recorded on different days or sessions which impedes the performance of biometric systems significantly. To address this issue, a session invariant multimodal Self-organized Operational Neural Network (Self-ONN) based ensemble model combining EEG and keystroke dynamics is proposed in this paper. Our model is tested successfully on a large number of sessions (10 recording days) with many challenging noisy and…
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