I2DNet - Design and Real-Time Evaluation of Appearance-based gaze estimation system.

IF 1.3 4区 心理学 Q3 OPHTHALMOLOGY
Journal of Eye Movement Research Pub Date : 2021-08-31 eCollection Date: 2021-01-01 DOI:10.16910/jemr.14.4.2
L R D Murthy, Siddhi Brahmbhatt, Somnath Arjun, Pradipta Biswas
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引用次数: 4

Abstract

Gaze estimation problem can be addressed using either model-based or appearance-based approaches. Model-based approaches rely on features extracted from eye images to fit a 3D eye-ball model to obtain gaze point estimate while appearance-based methods attempt to directly map captured eye images to gaze point without any handcrafted features. Recently, availability of large datasets and novel deep learning techniques made appearance-based methods achieve superior accuracy than model-based approaches. However, many appearance- based gaze estimation systems perform well in within-dataset validation but fail to provide the same degree of accuracy in cross-dataset evaluation. Hence, it is still unclear how well the current state-of-the-art approaches perform in real-time in an interactive setting on unseen users. This paper proposes I2DNet, a novel architecture aimed to improve subject- independent gaze estimation accuracy that achieved a state-of-the-art 4.3 and 8.4 degree mean angle error on the MPIIGaze and RT-Gene datasets respectively. We have evaluated the proposed system as a gaze-controlled interface in real-time for a 9-block pointing and selection task and compared it with Webgazer.js and OpenFace 2.0. We have conducted a user study with 16 participants, and our proposed system reduces selection time and the number of missed selections statistically significantly compared to other two systems.

Abstract Image

Abstract Image

Abstract Image

基于外观的注视估计系统的设计与实时评估。
凝视估计问题可以使用基于模型或基于外观的方法来解决。基于模型的方法依靠从眼睛图像中提取的特征来拟合3D眼球模型来获得凝视点估计,而基于外观的方法试图直接将捕获的眼睛图像映射到凝视点,而不需要任何手工制作的特征。最近,大数据集的可用性和新颖的深度学习技术使得基于外观的方法比基于模型的方法具有更高的准确性。然而,许多基于外观的注视估计系统在数据集内验证中表现良好,但在跨数据集评估中却不能提供相同程度的准确性。因此,目前尚不清楚当前最先进的方法在不可见用户的实时交互设置中表现如何。本文提出了一种新的架构I2DNet,旨在提高与主体无关的凝视估计精度,该架构在MPIIGaze和RT-Gene数据集上分别实现了4.3度和8.4度的平均角度误差。我们对所提出的系统进行了评估,将其作为9块指向和选择任务的实时凝视控制界面,并将其与Webgazer.js和OpenFace 2.0进行了比较。我们对16名参与者进行了用户研究,与其他两种系统相比,我们提出的系统在统计上显著减少了选择时间和错过的选择次数。
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来源期刊
CiteScore
2.90
自引率
33.30%
发文量
10
审稿时长
10 weeks
期刊介绍: The Journal of Eye Movement Research is an open-access, peer-reviewed scientific periodical devoted to all aspects of oculomotor functioning including methodology of eye recording, neurophysiological and cognitive models, attention, reading, as well as applications in neurology, ergonomy, media research and other areas,
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