Gaze Authentication: Factors Influencing Authentication Performance
By: Dillon Lohr , Michael J Proulx , Mehedi Hasan Raju and more
Potential Business Impact:
Makes eye logins more secure and reliable.
This paper examines the key factors that influence the performance of state-of-the-art gaze-based authentication. Experiments were conducted on a large-scale, in-house dataset comprising 8,849 subjects collected with Meta Quest Pro equivalent hardware running a video oculography-driven gaze estimation pipeline at 72Hz. The state-of-the-art neural network architecture was employed to study the influence of the following factors on authentication performance: eye tracking signal quality, various aspects of eye tracking calibration, and simple filtering on estimated raw gaze. We found that using the same calibration target depth for eye tracking calibration, fusing calibrated and non-calibrated gaze, and improving eye tracking signal quality all enhance authentication performance. We also found that a simple three-sample moving average filter slightly reduces authentication performance in general. While these findings hold true for the most part, some exceptions were noted.
Similar Papers
Ocular Authentication: Fusion of Gaze and Periocular Modalities
CV and Pattern Recognition
Unlocks your phone by looking at it.
Evaluating Sensitivity Parameters in Smartphone-Based Gaze Estimation: A Comparative Study of Appearance-Based and Infrared Eye Trackers
CV and Pattern Recognition
Lets phones track where you look.
Evaluating the long-term viability of eye-tracking for continuous authentication in virtual reality
Cryptography and Security
Keeps VR games safe by watching how you look.