A Survey of Machine Learning Techniques for Behavioral-Based Biometric User Authentication

Mohamed, Prof. Madya Dr. Mohamad Afendee and Abdul Kadir, Prof. Madya Dr. Mohd Fadzil and Mamat, Prof. Dr. Mustafa and Makhtar, Prof. Ts. Dr. Mokhairi (2018) A Survey of Machine Learning Techniques for Behavioral-Based Biometric User Authentication. In: Recent Advances in Cryptography and Network Security. Intechopen, UK, pp. 43-59. ISBN 978-1-78984-345-3

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Authentication is a way to enable an individual to be uniquely identified usually based on passwords and personal identification number (PIN). The main problems of such authentication techniques are the unwillingness of the users to remember long and challenging combinations of numbers, letters, and symbols that can be lost, forged, stolen, or forgotten. In this paper, we investigate the current advances in the use of behavioral-based biometrics for user authentication. The application of behavioral-based biometric authentication basically contains three major modules, namely, data capture, feature extraction, and classifier. This application is focusing on extracting the behavioral features related to the user and using these features for authentication measure. The objective is to determine the classifier techniques that mostly are used for data analysis during authentication process. From the comparison, we anticipate to discover the gap for improving the performance of behavioral-based biometric authentication. Additionally, we highlight the set of classifier techniques that are best performing for behavioral-based biometric authentication.

Item Type: Book Section
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions: Faculty of Informatics & Computing
Depositing User: Fatin Amirah Ramlan
Date Deposited: 10 Jan 2022 04:17
Last Modified: 10 Jan 2022 04:17
URI: http://eprints.unisza.edu.my/id/eprint/3860

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