利用LDA和CCA方法对FERET人脸数据库进行人脸识别

D. Jelsovka, R. Hudec, M. Breznan
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引用次数: 19

摘要

本文给出了一个使用现有LDA方法和基于CCA的方法进行二维人脸识别的实例。LDA是一种流行的人脸识别特征提取技术。同样,CCA作为一种新的方法也被应用于图像处理和生物识别。CCA是一种功能强大的多变量分析方法,因此将其应用于人脸识别。本文提出了一种基于信息论的人脸图像编码与解码方法的人脸识别方法。所开发的算法已在FERET数据库中的20个受试者上进行了测试。测试结果表明,LDA方法的识别率较好,对少量输入对象5个,识别率为100%,分别为83%。对于大量输入图像,CCA方法的识别率很差,约为40%。对于FERET人脸数据库,我们提出的CCA方法的平均识别率约为99%。
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Face recognition on FERET face database using LDA and CCA methods
This paper provides an example of the 2D face recognition using existing LDA method and our proposed method based on CCA. LDA is a popular feature extraction technique for face recognition. Likewise, the CCA as a novel method is applied to image processing and biometrics too. CCA is a powerful multivariate analysis method and for that case it was applied on faces recognition. In the paper, a proposed methodology for face recognition based on information theory approach of coding and decoding the face image is presented. Developed algorithm has been tested on 20 subjects from FERET database. Test results gave a recognition rate for LDA method quite the good recognition rate 100% respectively 83% for a small number of input subjects 5 respectively 10. For a large number of inputs images is recognition rate very poor about 40% For our proposed CCA method is average recognition rate about 99% for FERET face database.
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