Gaze Prediction as a Function of Eye Movement Type and Individual Differences
December 31, 2024 Β· Declared Dead Β· π Eye Tracking Research & Application
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Authors
Kateryna Melnyk, Lee Friedman, Dmytro Katrychuk, Oleg Komogortsev
arXiv ID
2501.00597
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.LG
Citations
2
Venue
Eye Tracking Research & Application
Last Checked
4 months ago
Abstract
Eye movement prediction is a promising area of research with the potential to improve performance and the user experience of systems based on eye-tracking technology. In this study, we analyze individual differences in gaze prediction performance. We use three fundamentally different models within the analysis: the lightweight Long Short-Term Memory network (LSTM), the transformer-based network for multivariate time series representation learning (TST), and the Oculomotor Plant Mathematical Model wrapped in the Kalman Filter framework (OPKF). Each solution was assessed on different eye-movement types. We show important subject-to-subject variation for all models and eye-movement types. We found that fixation noise is associated with poorer gaze prediction in fixation. For saccades, higher velocities are associated with poorer gaze prediction performance. We think these individual differences are important and propose that future research should report statistics related to inter-subject variation. We also propose that future models should be designed to reduce subject-to-subject variation.
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