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Efficient eye detection method based on grey intensity variance and independent components analysis

机译:基于灰度强度方差和独立分量分析的高效人眼检测方法

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摘要

Detection of facial features such as eye, nose and mouth in the human face images is important for many applications like face identification or recognition systems. Independent components analysis (ICA) is an unsupervised learning method which decorrelates the higher-order statistics in addition to the second-order moments. Recently, it is used as a technique for face recognition. In this study, ICA applied on a patch image is used as a method to extract the eye which is the most salient and stable feature among all the facial features. The variance of grey intensity in the eye region and ICA are combined together to detect rough eye window. The ICA basis images are computed using the FastICA algorithm; that computes independent components by maximising non-Gaussianity of the whitened data distribution using a kurtosis maximisation process. After detecting rough eye window, intensity information is used to localise eye centre point. The proposed method is evaluated on different databases XM2VTS, BioID and FERET and experimental results demonstrate improved performance over the existing methods. In addition, a high detection rate of 93.3% can be achieved on 600 images with glasses. A comparison between the proposed method and the most recent published methods which focus on eye window detection is also reported.
机译:对于人脸识别或识别系统等许多应用而言,检测人脸图像中的脸部特征(例如眼,鼻和嘴)非常重要。独立分量分析(ICA)是一种无监督的学习方法,除了二阶矩外,它还对高阶统计量进行去相关。最近,它被用作面部识别技术。在这项研究中,将ICA应用于斑块图像作为一种提取眼睛的方法,该方法是所有面部特征中最突出和最稳定的特征。将眼睛区域和ICA的灰度强度变化结合在一起,以检测粗糙的眼睛窗口。 ICA基础图像是使用FastICA算法计算的;通过使用峰度最大化过程最大化白化数据分布的非高斯性来计算独立分量。在检测到粗糙的眼睛窗口之后,强度信息将用于定位眼睛中心点。所提出的方法在不同的数据库XM2VTS,BioID和FERET上进行了评估,实验结果表明,该方法比现有方法具有更高的性能。此外,戴眼镜的600张图像可以达到93.3%的高检测率。还报告了建议的方法与关注眼窗检测的最新方法之间的比较。

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