Varun Padikal, Alex Plonkowski, Penelope F Lawton, Laura K Young, Jenny C A Read
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引用次数: 0
Abstract
Eye tracking technology plays a crucial role in various fields such as psychology, medical training, marketing, and human-computer interaction. However, achieving high accuracy over a larger field of view in eye tracking systems remains a significant challenge, both in free viewing and in a head-stabilized condition. In this paper, we propose a simple approach to improve the accuracy of video-based eye trackers through the implementation of linear coordinate transformations. This method involves applying stretching, shearing, translation, or their combinations to correct gaze accuracy errors. Our investigation shows that re-calibrating the eye tracker via linear transformations significantly improves the accuracy of video-based tracker over a large field of view.