一种用于人脸识别的模板图像匹配算法

Maher A. El-Hallaq
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引用次数: 5

摘要

人脸自动匹配由于其在法律执行、安全需求和视频索引等不同应用中的各种用途,近年来越来越受到人们的关注。人脸图像受到各种重要影响,如光照变化、视角差异、面部表情、遮挡、对比人脸图像之间的年龄差异以及现场设置的一些个人变化。目前大多数人脸匹配算法可以分为两类;要么基于几何特征,要么基于模板图像。本研究提出了一种基于归一化互相关算法的人脸图像相似性度量方法。归一化相关被认为是基于模板匹配的方法之一,可用于在图像中查找模式或特征的存在。图形用户界面(GUI)准备执行所有的人脸匹配任务,并用于测试人脸验证。这个GUI已经通过许多案例研究进行了检验。实验结果表明,该算法具有较好的鲁棒性和较好的匹配性能
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A Proposed Template Image Matching Algorithm for Face Recognition
Automatic matching of people faces is a demanding issue which has recently received increased attention during the recent ages due to its various uses in different applications such as law implementation, security requirements and video indexing. Face images are exposed to a variety of important influences such as illumination variation, difference in looking view, facial expression, occlusion, age difference between compared face images and some individual changes in field settings. Most current face matching algorithms can be classified into two categories; either geometry feature based, or template image based. In this research, a suggested algorithm is developed based on normalized cross correlation algorithm in order to find the similarity measure between verified face images. Normalized correlation is considered one of the methods based on template matching that can be used for finding a presence of a pattern or a feature within an image. A Graphical User Interface (GUI) is prepared to perform all face matching tasks and is used to test face verification. This GUI has been examined by conducting many case studies. The concluded results indicate that the developed algorithm is so robust in face matching and shows good performance
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