
TL;DR
This paper introduces a Bayesian framework for model-based eye tracking that improves generalization, robustness, and accuracy by estimating gaze uncertainty without explicit landmark detection or training.
Contribution
It proposes a cascade-Bayesian CNN and a probabilistic approach to enhance eye gaze estimation without the need for annotated training data.
Findings
Outperforms state-of-the-art methods in accuracy and robustness
Demonstrates better generalization across subjects and environments
Provides gaze uncertainty estimates for improved accuracy
Abstract
Model-based eye tracking has been a dominant approach for eye gaze tracking because of its ability to generalize to different subjects, without the need of any training data and eye gaze annotations. Model-based eye tracking, however, is susceptible to eye feature detection errors, in particular for eye tracking in the wild. To address this issue, we propose a Bayesian framework for model-based eye tracking. The proposed system consists of a cascade-Bayesian Convolutional Neural Network (c-BCNN) to capture the probabilistic relationships between eye appearance and its landmarks, and a geometric eye model to estimate eye gaze from the eye landmarks. Given a testing eye image, the Bayesian framework can generate, through Bayesian inference, the eye gaze distribution without explicit landmark detection and model training, based on which it not only estimates the most likely eye gaze but…
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Taxonomy
TopicsGaze Tracking and Assistive Technology · Glaucoma and retinal disorders · Retinal Imaging and Analysis
