基于PCA-LDA的人脸识别系统及各种分类技术的结果比较

Tomesh Verma, Raj Kumar Sahu
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引用次数: 28

摘要

人脸识别对安全措施有重大影响,这使其成为最值得探索的领域之一。为了进行人脸识别,研究人员采用数学计算来开发自动识别系统。由于人脸识别系统需要在大范围的数据库中进行操作,降维技术成为减少时间和提高准确率的主要要求。本文采用主成分分析和基于线性判别分析的降维技术进行人脸识别。本文的顺序是预处理,用PCA对训练数据库集进行降维,用LDA提取类可分性特征,最后用最接近均值分类技术进行测试。在ORL人脸数据库上进行了测试。结果表明,该方法在该数据库上的识别率为96.35%,比以往采用的人脸识别方法效率更高。
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PCA-LDA based face recognition system & results comparison by various classification techniques
Face recognition has a major impact in security measures which makes it one of the most appealing areas to explore. To perform face recognition, researchers adopt mathematical calculations to develop automatic recognition systems. As a face recognition system has to perform over wide range of database, dimension reduction techniques become a prime requirement to reduce time and increase accuracy. In this paper, face recognition is performed using Principal Component Analysis followed by Linear Discriminant Analysis based dimension reduction techniques. Sequencing of this paper is preprocessing, dimension reduction of training database set by PCA, extraction of features for class separability by LDA and finally testing by nearest mean classification techniques. The proposed method is tested over ORL face database. It is found that recognition rate on this database is 96.35% and hence showing efficiency of the proposed method than previously adopted methods of face recognition systems.
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