Author:
Zaqout Ihab,Al-Hanjori Mones
Abstract
Purpose
The face recognition problem has a long history and a significant practical perspective and one of the practical applications of the theory of pattern recognition, to automatically localize the face in the image and, if necessary, identify the person in the face. Interests in the procedures underlying the process of localization and individual’s recognition are quite significant in connection with the variety of their practical application in such areas as security systems, verification, forensic expertise, teleconferences, computer games, etc. This paper aims to recognize facial images efficiently. An averaged-feature based technique is proposed to reduce the dimensions of the multi-expression facial features. The classifier model is generated using a supervised learning algorithm called a back-propagation neural network (BPNN), implemented on a MatLab R2017. The recognition rate and accuracy of the proposed methodology is comparable with other methods such as the principle component analysis and linear discriminant analysis with the same data set. In total, 150 faces subjects are selected from the Olivetti Research Laboratory (ORL) data set, resulting 95.6 and 85 per cent recognition rate and accuracy, respectively, and 165 faces subjects from the Yale data set, resulting 95.5 and 84.4 per cent recognition rate and accuracy, respectively.
Design/methodology/approach
Averaged-feature based approach (dimension reduction) and BPNN (generate supervised classifier).
Findings
The recognition rate is 95.6 per cent and recognition accuracy is 85 per cent for the ORL data set, whereas the recognition rate is 95.5 per cent and recognition accuracy is 84.4 per cent for the Yale data set.
Originality/value
Averaged-feature based method.
Subject
Library and Information Sciences,Computer Science Applications,Education
Reference27 articles.
1. Optimizing face recognition using PCA;International Journal of Artificial Intelligence and Applications (Applications),2012
2. An improvement in face recognition for invariant faces;International Journal of Current Engineering and Technology,2016
3. Improve face recognition rate using different image pre-Processing Techniques;American Journal of Engineering Research (AJER),2016
4. Face recognition using PCA-BPNN with DCT implemented on Face94 and grimace databases;International Journal of Computer Applications,2016
5. Face recognition by linear discriminant analysis;International Journal of Communication Network Security,2013
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献