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Eye Tracking in Augmented Spaces: A Deep Learning Approach

机译:增强空间中的眼动追踪:一种深度学习方法

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The use of deep learning for estimating eye gaze in augmented spaces is investigated in this work. There are two primary ways of interacting with augmented spaces. The first involves the use of AR/VR systems; the second involves devices that respond to the user's gaze directly. This domain can overlap with AR/VR environments but is not exclusive to them and contains its own unique set of issues. Deep learning methods for eye tracking that are capable of performing with minimal power consumption are investigated for both problems.
机译:在这项工作中,研究了深度学习在增强空间中估计眼睛凝视的用途。与增强空间进行交互的主要方式有两种。首先涉及AR / VR系统的使用;第二种是直接响应用户注视的设备。该域可以与AR / VR环境重叠,但并不局限于它们,并且包含其自身的唯一问题集。针对这两个问题,研究了能够以最小的功耗执行的用于眼睛跟踪的深度学习方法。

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