Techniques for Continuous Touch-Based Authentication Modeling
Martin Georgiev, Simon Eberz, Ivan Martinovic

TL;DR
This paper systematically analyzes touch-based authentication techniques, introduces three novel methods, and demonstrates their superior performance over existing approaches across multiple datasets.
Contribution
It presents new feature extraction, ensemble classification, and aggregation techniques, along with a comprehensive experimental comparison in touch-based authentication.
Findings
New techniques outperform state-of-the-art methods
Novel feature set improves authentication accuracy
Results validated across multiple datasets
Abstract
The field of touch-based authentication has been rapidly developing over the last decade, creating a fragmented and difficult-to-navigate area for researchers and application developers alike due to the variety of methods investigated. In this study, we perform a systematic literature analysis of 30 studies on the techniques used for feature extraction, classification, and aggregation in touch-based authentication systems as well as the performance metrics reported by each study. Based on our findings, we design a set of experiments to compare the performance of the most frequently used techniques in the field under clearly defined conditions. In addition, we introduce three new techniques for touch-based authentication: an expanded feature set (consisting of 149 unique features), a multi-algorithm ensemble-based classifier, and a Recurrent Neural Network based stacking aggregation…
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Taxonomy
TopicsUser Authentication and Security Systems · Biometric Identification and Security · Digital Communication and Language
