When Does Your Brain Know You? Segment Length and Its Impact on EEG-based Biometric Authentication Accuracy
- URL: http://arxiv.org/abs/2403.12644v1
- Date: Tue, 19 Mar 2024 11:30:03 GMT
- Title: When Does Your Brain Know You? Segment Length and Its Impact on EEG-based Biometric Authentication Accuracy
- Authors: Nibras Abo Alzahab, Lorenzo Scalise, Marco Baldi,
- Abstract summary: The research seeks to pinpoint a threshold where EEG data provides maximum informational yield for authentication purposes.
The findings are set to advance the field of non-invasive biometric technologies.
- Score: 3.9735602856280132
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In the quest for optimal EEG-based biometric authentication, this study investigates the pivotal balance for accurate identification without sacrificing performance or adding unnecessary computational complexity. Through a methodical exploration of segment durations, and employing a variety of sophisticated machine learning models, the research seeks to pinpoint a threshold where EEG data provides maximum informational yield for authentication purposes. The findings are set to advance the field of non-invasive biometric technologies, proposing a practical approach to secure and user-friendly identity verification systems while also raising considerations for the real-world application of EEG-based biometric authentication beyond controlled environments.
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