The human gaze characteristics provide informative cues on human behavior during various activities. Using traditional eye trackers, assessing gaze characteristics in the wild requires a dedicated device per participant and therefore is not feasible for large-scale experiments. In this study, we propose a commodity hardware-based multi-user eye-Tracking system. We leverage the recent advancements in Deep Neural Networks and large-scale datasets for implementing our system. Our preliminary studies provide promising results for multi-user eye-Tracking on commodity hardware, providing a cost-effective solution for large-scale studies.
CITATION STYLE
Mahanama, B. (2022). Multi-User Eye-Tracking. In Eye Tracking Research and Applications Symposium (ETRA). Association for Computing Machinery. https://doi.org/10.1145/3517031.3532197
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