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A Novel Approach for Real Time Eye State Detection in Fatigue Awareness System

机译:疲劳意识系统实时眼睛状态检测的一种新方法

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This paper proposes a novel eye state detection approach to construct an efficient real time driver fatigue awareness system with an ordinary webcam. Eye state detection has given big challenges to researchers as eye block takes only a small part of input image and can show at various appearances for its flexibility. Moreover, light illumination and viewpoint changes cause more confusions and difficulties for PC to robustly extract eye structure such as contours and iris circles. We transfer this tough problem to a classification problem by combining a discriminative feature, namely Color Correlogram, with machine learning method (Standard Adaboost in this paper). The novelty of this work is that we can efficiently and robustly detect eye states in real time with a single ordinary webcam, even in somewhat harsh conditions such as certain lighting changes, head rotation and different objects. Experimental evidence supports this method well and human fatigue conditions are simultaneously measured based on eye states.
机译:本文提出了一种具有普通网络摄像头的高效实时驱动疲劳意识系统的新型眼睛状态检测方法。眼睛状态检测对研究人员给予重大挑战,因为眼块只需要一小部分输入图像,并且可以以各种外观显示其灵活性。此外,光照照明和观点变化导致PC的更狭义和困难鲁棒地提取眼部结构,例如轮廓和虹膜圈。通过组合鉴别特征,即颜色相关图,机器学习方法(本文中的标准Adaboost),我们通过组合辨别特征来将该棘手的问题转移到分类问题。这项工作的新颖之处在于,我们可以使用单个普通的网络摄像头实时有效且强大地检测眼睛状态,即使在某些苛刻的条件下,例如某些灯光变化,头部旋转和不同的物体。实验证据支持这种方法良好,并且人类疲劳条件同时基于眼睛态测量。

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