首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Eye center localization and gaze gesture recognition for human-computer interaction
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Eye center localization and gaze gesture recognition for human-computer interaction

机译:人眼交互的眼中心定位和注视手势识别

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摘要

This paper introduces an unsupervised modular approach for accurate and real-time eye center localization in images and videos, thus allowing a coarse-to-fine, global-to-regional scheme. The trajectories of eye centers in consecutive frames, i.e., gaze gestures, are further analyzed, recognized, and employed to boost the human-computer interaction (HCI) experience. This modular approach makes use of isophote and gradient features to estimate the eye center locations. A selective oriented gradient filter has been specifically designed to remove strong gradients from eyebrows, eye corners, and shadows, which sabotage most eye center localization methods. A real-world implementation utilizing these algorithms has been designed in the form of an interactive advertising billboard to demonstrate the effectiveness of our method for HCI. The eye center localization algorithm has been compared with 10 other algorithms on the BioID database and six other algorithms on the GI4E database. It outperforms all the other algorithms in comparison in terms of localization accuracy. Further tests on the extended Yale Face Database b and self-collected data have proved this algorithm to be robust against moderate head poses and poor illumination conditions. The interactive advertising billboard has manifested outstanding usability and effectiveness in our tests and shows great potential for benefiting a wide range of real-world HCI applications. (C) 2016 Optical Society of America
机译:本文介绍了一种无监督的模块化方法,可以在图像和视频中进行准确,实时的眼中心定位,从而可以实现从粗到精,全局到区域的方案。连续帧中眼睛中心的轨迹(即凝视手势)会得到进一步分析,识别并用于增强人机交互(HCI)体验。这种模块化方法利用等视线和渐变特征来估计眼中心位置。选择性定向渐变滤镜经过专门设计,可消除眉毛,眼角和阴影中的强渐变,这会破坏大多数眼中心定位方法。利用交互式广告广告牌的形式设计了利用这些算法的实际实现,以证明我们的HCI方法的有效性。眼中心定位算法已与BioID数据库上的其他10种算法以及GI4E数据库上的其他6种算法进行了比较。在定位精度方面,它比其他所有算法都好。在扩展的Yale人脸数据库b上进行的进一步测试和自我收集的数据证明,该算法对于中等头部姿势和不良照明条件具有鲁棒性。交互式广告广告牌在我们的测试中已显示出出色的可用性和有效性,并显示出受益于广泛的实际HCI应用程序的巨大潜力。 (C)2016美国眼镜学会

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