Eye Blink Detection for Smart Glasses

Hoang Le, Thanh Dang, Feng Liu
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引用次数: 24

Abstract

Eye blink is a quick action of closing and opening of the eyelids. Eye blink detection has a wide range of applications in human computer interaction and human vision health care research. Existing approaches to eye blink detection often cannot suit well resource-limited eye blink detection platforms like Smart Glasses, which have limited energy supply and typically cannot afford strong imaging and computational capabilities. In this paper, we present an efficient and robust eye blink detection method for Smart Glasses. Our method first employs an eigen-eye approach to detect closing-eye in individual video frames. Our method then learns eye blink patterns based on the closing-eye detection results and detects eye blinks using a Gradient Boosting method. Our method further uses a non-maximum suppression algorithm to remove repeated detection of the same eye-blink action among consecutive video frames. Experiments with our prototyped smart glasses equipped with a low-power camera and an embedded processor show an accurate detection result (with more than 96% accuracy) on video frames of a small size of 16 × 12 at 96 fps, which enables a number of applications in health care, driving safety, and human computer interaction.
智能眼镜的眨眼检测
眨眼是眼睑快速闭合和张开的动作。眨眼检测在人机交互和人类视觉保健研究中有着广泛的应用。现有的眨眼检测方法往往不能很好地适应像智能眼镜这样资源有限的眨眼检测平台,因为智能眼镜的能量供应有限,通常无法提供强大的成像和计算能力。本文提出了一种高效、鲁棒的智能眼镜眨眼检测方法。我们的方法首先采用特征眼方法来检测单个视频帧中的闭眼现象。然后,我们的方法基于闭眼检测结果学习眨眼模式,并使用梯度增强方法检测眨眼。我们的方法进一步使用非最大抑制算法来消除连续视频帧中相同眨眼动作的重复检测。我们的原型智能眼镜配备了低功耗摄像头和嵌入式处理器,在16 × 12、96 fps的小尺寸视频帧上进行了实验,显示出准确的检测结果(准确率超过96%),这使得医疗保健、驾驶安全和人机交互等领域的许多应用成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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