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Robust Eye Features Extraction Based on Eye Angles for Efficient Gaze Classification System

机译:基于眼角的鲁棒眼特征提取用于高效注视分类系统

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Detection of eye gaze direction is a hot topic for research in the computer vision area which can be used in many applications. Although significant eye tracking techniques have been presented by the researchers for the last years, it is still the challenging task for improving the performance of the gaze detection system. This paper presents a new eye feature extraction system to build a robust eye gaze classier which uses the Viola-Jones algorithm to face detection and Constrained Local Neural Field model for eye region localization. Furthermore, geometry features of the eye are extracted from the detected eye region based on angles of a triangle of the eye. The algorithms were tested by a new dataset created from 34 participant females and males in different ages. The experimental results show that this method has better features extraction for the classification process.
机译:视线方向的检测是计算机视觉领域研究的热门话题,可以在许多应用中使用。尽管近几年研究人员提出了重要的眼动追踪技术,但对于提高凝视检测系统的性能仍然是一项艰巨的任务。本文提出了一种新的眼睛特征提取系统,用于构建鲁棒的视线分类器,该系统使用Viola-Jones算法进行人脸检测,并使用约束局部神经场模型进行眼睛区域定位。此外,基于眼睛的三角形的角度从检测到的眼睛区域提取眼睛的几何特征。该算法通过一个新的数据集进行了测试,该数据集由34位不同年龄的女性和男性组成。实验结果表明,该方法在分类过程中具有较好的特征提取能力。

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