Multimodal EEG and Keystroke Dynamics Based Biometric System Using Machine Learning Algorithms
Author | Rahman A. |
Author | Chowdhury M.E.H. |
Author | Khandakar A. |
Author | Kiranyaz, Mustafa Serkan |
Author | Zaman K.S. |
Author | Reaz M.B.I. |
Author | Islam M.T. |
Author | Ezeddin M. |
Author | Kadir M.A. |
Available date | 2022-04-26T12:31:19Z |
Publication Date | 2021 |
Publication Name | IEEE Access |
Resource | Scopus |
Identifier | http://dx.doi.org/10.1109/ACCESS.2021.3092840 |
Abstract | Electroencephalography (EEG) based biometric systems are gaining attention for their anti-spoofing capability but lack accuracy due to signal variability at different psychological and physiological conditions. On the other hand, keystroke dynamics-based systems achieve very high accuracy but have low anti-spoofing capability. To address these issues, a novel multimodal biometric system combining EEG and keystroke dynamics is proposed in this paper. A dataset was created by acquiring both keystroke dynamics and EEG signals simultaneously from 10 users. Each user participated in 500 trials at 10 different sessions (days) to replicate real-life signal variability. A machine learning classification pipeline is developed using multi-domain feature extraction (time, frequency, time-frequency), feature selection (Gini impurity), classifier design, and score level fusion. Different classifiers were trained, validated, and tested for two different classification experiments-personalized and generalized. For identification and authentication, 99.9% and 99.6% accuracies are achieved, respectively for the Random Forest classifier in 5 fold cross-validation. These results outperform the individual modalities with a significant margin (5%). We also developed a binary template matching-based algorithm, which gives 93.64% accuracy 6X faster. The proposed method can be considered secure and reliable for any kind of biometric identification and authentication. |
Language | en |
Publisher | Institute of Electrical and Electronics Engineers Inc. |
Subject | Authentication Biomedical signal processing Biometrics Decision trees Dynamics Electroencephalography Electrophysiology Feature extraction Machine learning Template matching Turing machines Binary template matching Biometric identifications Machine learning classification Multi-domain features Multimodal biometric systems Physiological condition Random forest classifier Signal variability Learning algorithms |
Type | Article |
Pagination | 94625-94643 |
Volume Number | 9 |
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Electrical Engineering [2649 items ]