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Calibration free, user-independent gaze estimation with tensor analysis

机译:张量分析,无需用户校准,无需校准

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摘要

Human gaze directly signals visual attention, therefore, estimation of gaze has been an important research topic in fields such as human attention modeling and human-computer interaction. Accurate gaze estimation requires user, system and even session dependent parameters, which can be obtained by calibration process. However, this process has to be repeated whenever the parameter changes (head movement, camera movement, monitor movement). This study aims to eliminate the calibration process of gaze estimation by building a user-independent, appearance-based gaze estimation model. The system is ideal for multimodal interfaces, where the gaze is tracked without the cooperation from the users. The main goal is to capture the essential representation of the gaze appearance of the target user. We investigate the tensor analysis framework that decomposes the high dimension gaze data into different factors including individual differences, gaze differences, user-screen distances and session differences. The axis that is representative for a particular subject is automatically chosen in the tensor analysis framework using LASSO regression. The proposed approaches show promising results on capturing the test subject gaze changes. To address the estimation shift caused by the variations in individual heights, or relative position to the monitor, we apply domain adaptation to adjust the gaze estimation, observing further improvements. These promising results suggest that the proposed gaze estimation approach is a feasible and flexible scheme to facilitate gaze-based multimodal interfaces. (C) 2018 Elsevier B.V. All rights reserved.
机译:人的视线直接表示视觉注意,因此,视线估计已成为诸如人的注意力建模和人机交互等领域的重要研究课题。准确的注视估计需要用户,系统甚至与会话相关的参数,这些参数可以通过校准过程获得。但是,每当参数更改(头部移动,摄像机移动,监视器移动)时,都必须重复此过程。这项研究旨在通过建立用户独立的,基于外观的注视估计模型来消除注视估计的校准过程。该系统非常适合多模式界面,无需用户的配合即可跟踪视线。主要目标是捕获目标用户注视外观的基本表示。我们研究了将高维凝视数据分解为不同因素的张量分析框架,这些因素包括个体差异,凝视差异,用户屏幕距离和会话差异。使用LASSO回归在张量分析框架中自动选择代表特定主题的轴。所提出的方法在捕获测试对象注视变化方面显示出可喜的结果。为了解决由个体高度或监视器相对位置的变化引起的估计偏移,我们应用域自适应来调整凝视估计,并观察到进一步的改进。这些有希望的结果表明,所提出的凝视估计方法是一种可行且灵活的方案,可促进基于凝视的多峰界面。 (C)2018 Elsevier B.V.保留所有权利。

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