GazeBase: A Large-Scale, Multi-Stimulus, Longitudinal Eye Movement Dataset
Henry Griffith, Dillon Lohr, Evgeny Abdulin, Oleg Komogortsev

TL;DR
GazeBase is a comprehensive, longitudinal eye movement dataset with over 12,000 recordings from 322 subjects, designed to facilitate research in eye movement biometrics and machine learning applications.
Contribution
This work introduces GazeBase, a large-scale, multi-task, longitudinal eye movement dataset with high sampling rate data from a diverse subject pool.
Findings
Dataset enables exploration of eye movement biometrics.
Longitudinal data supports temporal analysis of eye movements.
High-quality data collected across multiple tasks and sessions.
Abstract
This manuscript presents GazeBase, a large-scale longitudinal dataset containing 12,334 monocular eye-movement recordings captured from 322 college-aged subjects. Subjects completed a battery of seven tasks in two contiguous sessions during each round of recording, including a - 1) fixation task, 2) horizontal saccade task, 3) random oblique saccade task, 4) reading task, 5/6) free viewing of cinematic video task, and 7) gaze-driven gaming task. A total of nine rounds of recording were conducted over a 37 month period, with subjects in each subsequent round recruited exclusively from the prior round. All data was collected using an EyeLink 1000 eye tracker at a 1,000 Hz sampling rate, with a calibration and validation protocol performed before each task to ensure data quality. Due to its large number of subjects and longitudinal nature, GazeBase is well suited for exploring research…
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