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A hybrid approach for eye-centre localization for estimation of eye-gazes using low-cost web cam

机译:使用低成本网络摄像头的混合方法,用于眼睛中心定位,以估计视线

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Gaze estimation is one of the recent popular research topics in the domain of computer science/ engineering for vision-based human-computer-interaction. It has huge potential for application in assessment of physical condition of drivers while driving, controlling robots and prosthetics, surveillance etc. For successful gaze estimation the eyes have to be detected perfectly and this will lead to efficient eye centre localization. Several approaches have been used by researchers for eye and eye centre detection. The present work uses Haar-like cascade classifier for effective face and eye detection. This method has the advantage of lower computational load, faster processing due to the associated AdaBoost algorithm. High success rate can be easily achieved in several environments using proper training sets. However, for eye centre localization an improved version of Hough transform in two dimensional parametric space has been used as it is very simple to use and implement practically. This hybrid approach has been successfully tested using low-cost webcams in different lighting conditions with and without spectacles.
机译:凝视估计是基于视觉的人机交互的计算机科学/工程领域中最近流行的研究主题之一。它具有巨大的潜力,可用于评估驾驶员在驾驶中的身体状况,控制机器人和假肢,监视等。为了成功进行凝视估计,必须完美地检测到眼睛,这将导致有效的眼中心定位。研究人员已使用几种方法进行眼睛和眼中心的检测。本工作使用类似Haar的级联分类器进行有效的面部和眼睛检测。该方法的优点在于,由于关联了AdaBoost算法,因此计算负荷较低,处理速度更快。使用适当的培训套件,可以轻松地在多种环境中实现较高的成功率。但是,对于眼中心定位,已经使用了二维参数空间中Hough变换的改进版本,因为它非常易于使用和实际实现。这种混合方法已成功使用低成本的网络摄像头在不同的照明条件下(带眼镜和无眼镜)进行了测试。

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