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An Eye-Tracking System based on Inner Corner-Pupil Center Vector and Deep Neural Network

机译:基于内角瞳孔中心向量和深度神经网络的眼动追踪系统

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摘要

The human eye is a vital sensory organ that provides us with visual information about the world around us. It can also convey such information as our emotional state to people with whom we interact. In technology, eye tracking has become a hot research topic recently, and a growing number of eye-tracking devices have been widely applied in fields such as psychology, medicine, education, and virtual reality. However, most commercially available eye trackers are prohibitively expensive and require that the user’s head remain completely stationary in order to accurately estimate the direction of their gaze. To address these drawbacks, this paper proposes an inner corner-pupil center vector (ICPCV) eye-tracking system based on a deep neural network, which does not require that the user’s head remain stationary or expensive hardware to operate. The performance of the proposed system is compared with those of other currently available eye-tracking estimation algorithms, and the results show that it outperforms these systems.
机译:人眼是至关重要的感觉器官,可为我们提供有关周围世界的视觉信息。它还可以将诸如情绪状态之类的信息传达给与我们互动的人。在技​​术上,眼动追踪已成为近来研究的热点,并且越来越多的眼动追踪装置已广泛应用于心理学,医学,教育和虚拟现实等领域。但是,大多数市售的眼动仪价格昂贵,需要用户的头部保持完全静止才能准确估计其视线方向。为了解决这些缺点,本文提出了一种基于深度神经网络的内角瞳孔中心向量(ICPCV)眼动追踪系统,该系统不需要用户的头部保持静止或昂贵的硬件即可操作。将该系统的性能与其他当前可用的眼动估计算法进行了比较,结果表明该系统的性能优于这些系统。

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