Robust Real-Time Multi-View Eye Tracking
Nuri Murat Arar, Jean-Philippe Thiran

TL;DR
This paper introduces a real-time multi-camera eye tracking system that enhances robustness and accuracy under challenging real-world conditions by combining multi-view gaze features with adaptive fusion.
Contribution
The paper presents a novel multi-view eye tracking framework with an adaptive fusion mechanism, improving robustness and accuracy in real-world scenarios compared to existing methods.
Findings
Achieves 1 degree accuracy under challenging conditions
Runs at 30 fps in real-time
Outperforms state-of-the-art eye trackers in robustness
Abstract
Despite significant advances in improving the gaze tracking accuracy under controlled conditions, the tracking robustness under real-world conditions, such as large head pose and movements, use of eyeglasses, illumination and eye type variations, remains a major challenge in eye tracking. In this paper, we revisit this challenge and introduce a real-time multi-camera eye tracking framework to improve the tracking robustness. First, differently from previous work, we design a multi-view tracking setup that allows for acquiring multiple eye appearances simultaneously. Leveraging multi-view appearances enables to more reliably detect gaze features under challenging conditions, particularly when they are obstructed in conventional single-view appearance due to large head movements or eyewear effects. The features extracted on various appearances are then used for estimating multiple gaze…
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Taxonomy
TopicsGaze Tracking and Assistive Technology · Glaucoma and retinal disorders · Ocular Surface and Contact Lens
