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A Learning-based Eye Detector Coupled with Eye Candidate Filtering and PCA Features

机译:基于学习的眼睛检测器与眼睛候选过滤和PCA功能耦合

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In this work, we present a system based on a Neural Network classifier for eye detection in human face images. This classifier works on eye candidate regions extracted from a face image and represented by a reduced number of features, selected by Principal Component Analysis. The regions are determined considering that in an image window containing the eye, the grey level distribution will generally assume a pattern of adjacent light-dark-light horizontal and vertical stripes, corresponding to the eyelid, pupil and eyelid, respectively. For training, validation and testing, a database was built with a total of 4,400 images. Experimental results have shown that the proposed approach correctly detects more eyes than any of two existing systems (Rowley-Baluja-Kanade and Machine Perception Toolbox), for eye location error tolerances from 0 to 5 pixels. Considering an error tolerance of 9 pixels, the correct detection rate achieved was above 90%.
机译:在这项工作中,我们展示了一种基于神经网络分类器的系统,用于人类脸部图像中的眼睛检测。该分类器在从面部图像中提取的眼睛候选区域上工作,并由主成分分析选择的减少的特征数表示。考虑到该区域考虑到在包含眼睛的图像窗口中,灰度水平分布通常呈现相邻的光暗光水平和垂直条纹的图案,分别对应于眼睑,瞳孔和眼睑。为了培训,验证和测试,建立了一个数据库,共有4,400张图片。实验结果表明,所提出的方法可以正确地检测更多的眼睛,而不是两个现有系统(Rowley-Baluja-Kanade和机器感知工具箱),用于从0到5个像素的眼睛位置误差公差。考虑到9个像素的误差容限,所实现的正确检测率高于90%。

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