BehaveFormer: A Framework with Spatio-Temporal Dual Attention Transformers for IMU enhanced Keystroke Dynamics
Dilshan Senerath, Sanuja Tharinda, Maduka Vishwajith, Sanka Rasnayaka,, Sandareka Wickramanayake, Dulani Meedeniya

TL;DR
BehaveFormer is a novel framework that combines keystroke and IMU sensor data with a dual attention transformer to improve continuous authentication accuracy using behavioral biometrics.
Contribution
It introduces STDAT, a new transformer architecture, and demonstrates enhanced authentication performance with IMU and keystroke data on multiple datasets.
Findings
Achieved an EER of 2.95% on HuMIdb dataset.
Achieved an EER of 1.80% on Aalto DB dataset.
STDAT improves feature extraction from keystroke dynamics.
Abstract
Continuous Authentication (CA) using behavioural biometrics is a type of biometric identification that recognizes individuals based on their unique behavioural characteristics, like their typing style. However, the existing systems that use keystroke or touch stroke data have limited accuracy and reliability. To improve this, smartphones' Inertial Measurement Unit (IMU) sensors, which include accelerometers, gyroscopes, and magnetometers, can be used to gather data on users' behavioural patterns, such as how they hold their phones. Combining this IMU data with keystroke data can enhance the accuracy of behavioural biometrics-based CA. This paper proposes BehaveFormer, a new framework that employs keystroke and IMU data to create a reliable and accurate behavioural biometric CA system. It includes two Spatio-Temporal Dual Attention Transformer (STDAT), a novel transformer we introduce to…
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Taxonomy
TopicsUser Authentication and Security Systems · Interactive and Immersive Displays · Hand Gesture Recognition Systems
