Statistical Keystroke Dynamics System on Mobile Devices for Experimental Data Collection and User Authentication (original) (raw)

2016 9th International Conference on Developments in eSystems Engineering (DeSE), 2016

Abstract

This paper presents a keystroke dynamics system for mobile devices that employs a statistical distance-to-median anomaly detector. The selected feature set combines the keystroke timing features of hold and latency and the touch screen features of pressure and finger area. The proposed system consists of two modules: training and testing. The aim of the system is to be a research tool to serve two purposes: (i) the generation of a model-independent dataset of keystroke data on mobile devices, for comparison of keystroke dynamics anomaly detectors, (ii) to be used in the evaluation of the authentication performance of the implemented distance-to-median anomaly detector. The system works in the Android environment on Nexus smartphones and tablets. The experimental work has generated a dataset of 2856 records from 56 subjects, 51 records per subject, where each record represents 71 feature elements resulting from the typing of a standard 10-character password. Statistical analysis of the collected dataset showed an equal-error-rate (EER) of 0.049 when using a different pass-mark per subject, and 0.054 when using a global pass-mark for all subjects. The EER results are much lower than previously published results using three distance-based verification models. Also, the false-acceptance-rate at 5% false-rejection-rate is 5.6%, which is much lower than previously published results, but it is still high and needs to be reduced. Evaluation of the testing (authentication) part of the system was carried out through test runs where a genuine user enters his user-id and password as a login attempt, and the resulting test vector of feature elements are matched against the stored template of the user. The login attempt is classified as genuine or impostor based on a preset pass-mark. Conclusions and suggestions for future work are presented.

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