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Slippage-robust Gaze Tracking for Near-eye Display

2022-10-20 23:47:56
Wei Zhang, Jiaxi Cao, Xiang Wang, Enqi Tian, Bin Li

Abstract

In recent years, head-mounted near-eye display devices have become the key hardware foundation for virtual reality and augmented reality. Thus head-mounted gaze tracking technology has received attention as an essential part of human-computer interaction. However, unavoidable slippage of head-mounted devices (HMD) often results higher gaze tracking errors and hinders the practical usage of HMD. To tackle this problem, we propose a slippage-robust gaze tracking for near-eye display method based on the aspheric eyeball model and accurately compute the eyeball optical axis and rotation center. We tested several methods on datasets with slippage and the experimental results show that the proposed method significantly outperforms the previous method (almost double the suboptimal method).

Abstract (translated)

URL

https://arxiv.org/abs/2210.11637

PDF

https://arxiv.org/pdf/2210.11637.pdf


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