AI RESEARCH
Establishing Robust Retinal Eye Tracking: A Weakly Supervised Algorithmic Framework
arXiv CS.CV
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ArXi:2605.09181v1 Announce Type: new Retinal image-based eye tracking is widely used in ophthalmic imaging and vision science, and is a promising path to deliver higher gaze accuracy than the pupil- and cornea-based approaches commonly used in modern AR/VR devices. Nevertheless, existing retinal tracking algorithms still primarily rely on classical template-matching registration, which can be insufficiently robust to retinal feature variability and real-world imaging conditions. In this work, we propose a novel weakly-supervised, learning-based framework for robust retinal eye tracking.