SaS-BCI: a new strategy to predict image memorability and use mental imagery as a brain-based biometric authentication

Author:

Yousefi FaresORCID,Kolivand Hoshang,Baker Thar

Abstract

AbstractSecurity authentication is one of the most important levels of information security. Nowadays, human biometric techniques are the most secure methods for authentication purposes that cover the problems of older types of authentication like passwords and pins. There are many advantages of recent biometrics in terms of security; however, they still have some disadvantages. Progresses in technology made some specific devices, which make it possible to copy and make a fake human biometric because they are all visible and touchable. According to this matter, there is a need for a new biometric to cover the issues of other types. Brainwave is human data, which uses them as a new type of security authentication that has engaged many researchers. There are some research and experiments, which are investigating and testing EEG signals to find the uniqueness of human brainwave. Some researchers achieved high accuracy rates in this area by applying different signal acquisition techniques, feature extraction and classifications using Brain–Computer Interface (BCI). One of the important parts of any BCI processes is the way that brainwaves could be acquired and recorded. A new Signal Acquisition Strategy is presented in this paper for the process of authorization and authentication of brain signals specifically. This is to predict image memorability from the user’s brain to use mental imagery as a visualization pattern for security authentication. Therefore, users can authenticate themselves with visualizing a specific picture in their minds. In conclusion, we can see that brainwaves can be different according to the mental tasks, which it would make it harder using them for authentication process. There are many signal acquisition strategies and signal processing for brain-based authentication that by using the right methods, a higher level of accuracy rate could be achieved which is suitable for using brain signal as another biometric security authentication.

Publisher

Springer Science and Business Media LLC

Subject

Artificial Intelligence,Software

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2. EEG-based Biometric Authentication Using Machine and Deep Learning Approachs : A Review;2024 8th International Conference on Image and Signal Processing and their Applications (ISPA);2024-04-21

3. Systematic Review of Brain-Computer Interface-Based User Authentication System: Trends, Challenges, and Directions;IEEE Access;2024

4. A robust brain pattern for brain-based authentication methods using deep breath;Computers & Security;2023-12

5. Deep Learning Techniques Based Secured Biometric Authentication and Classification using ECG Signal;2023 International Conference on Integrated Intelligence and Communication Systems (ICIICS);2023-11-24

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