Home > CSC-OpenAccess Library > Manuscript Information
EXPLORE PUBLICATIONS BY COUNTRIES |
EUROPE | |
MIDDLE EAST | |
ASIA | |
AFRICA | |
............................. | |
United States of America | |
United Kingdom | |
Canada | |
Australia | |
Italy | |
France | |
Brazil | |
Germany | |
Malaysia | |
Turkey | |
China | |
Taiwan | |
Japan | |
Saudi Arabia | |
Jordan | |
Egypt | |
United Arab Emirates | |
India | |
Nigeria |
A Hybrid Face Recognition Method based on Face Feature Descriptors and Support Vector Machine Classifier
Rafika Harrabi Harrabi
Pages - 1 - 14 | Revised - 01-03-2022 | Published - 30-04-2022
Published in International Journal of Image Processing (IJIP)
MORE INFORMATION
KEYWORDS
Face Recognition, Feature Extraction, HOG, SVM, DCT, Gabor, Classification.
ABSTRACT
Face recognition is a technique used to identify/verify human identity based on their facial
features. A technique allows, based on facial features to authenticate / identify a person.
However, for human identification or identity authentication based on face recognition technology,
the appropriate determination of the face features plays a crucial role, since the identification of
the Human is given directly by the classification of these characteristics.
In this paper, we propose a new face recognition method based on face feature descriptors and Support Vector Machine (SVM) algorithm. The face feature descriptors are used to extract and select the statistical features, whereas, the SVM algorithm is employed to classify the different features and to obtain optimal Human face recognition.
The feature extraction step is the major phase of the recognition cycle. It is employed to extract the features for any human face located in the first step. The accomplishment of this step controls the success of subsequent steps. For that, the main objective of this work is to determine of the best method of feature extraction.
To do the indexation of person’s face, the Histogram of Oriented Gradient features (HOG), Gabor features and Discrete Cosine Transform features (DCT) are employed to extract the feature vectors for any human face.
In addition, the face recognition method, proposed in this paper, is conceptually different and explores a new strategy. In fact, instead of considering an existing face recognition procedure, the proposed technique rather explores the benefit of combining several approaches.This method is a hybrid face recognition technique, which integrates both the results of the HOG, and the SVM technique, in which the HOG method is used as the initial seed for the classification procedure.
Experimental results from the proposed method are validated and the face recognition rate for the ''ORL'' and cropped ''Yale B'' datasets is evaluated, and then a comparative study versus existing techniques is presented. The highest face recognition rate of the used dataset is obtained by the proposed method. In addition, the use of the proposed HOG_SVM method to build face recognition systems can achieve excellent results when the dataset size is large, and therefore it can be used in different security and authentication systems.
In this paper, we propose a new face recognition method based on face feature descriptors and Support Vector Machine (SVM) algorithm. The face feature descriptors are used to extract and select the statistical features, whereas, the SVM algorithm is employed to classify the different features and to obtain optimal Human face recognition.
The feature extraction step is the major phase of the recognition cycle. It is employed to extract the features for any human face located in the first step. The accomplishment of this step controls the success of subsequent steps. For that, the main objective of this work is to determine of the best method of feature extraction.
To do the indexation of person’s face, the Histogram of Oriented Gradient features (HOG), Gabor features and Discrete Cosine Transform features (DCT) are employed to extract the feature vectors for any human face.
In addition, the face recognition method, proposed in this paper, is conceptually different and explores a new strategy. In fact, instead of considering an existing face recognition procedure, the proposed technique rather explores the benefit of combining several approaches.This method is a hybrid face recognition technique, which integrates both the results of the HOG, and the SVM technique, in which the HOG method is used as the initial seed for the classification procedure.
Experimental results from the proposed method are validated and the face recognition rate for the ''ORL'' and cropped ''Yale B'' datasets is evaluated, and then a comparative study versus existing techniques is presented. The highest face recognition rate of the used dataset is obtained by the proposed method. In addition, the use of the proposed HOG_SVM method to build face recognition systems can achieve excellent results when the dataset size is large, and therefore it can be used in different security and authentication systems.
ALAMRI J., R. HARRABI, S.BEN CHAABANE. (2021). Face Recognition based on Convolution Neural Network and Scale Invariant Feature Transform. (IJACSA) International Journal of Advanced Computer Science and Applications,12(2), 644-654.http://Face Recognition based on Convolution Neural Network and Scale Invariant Feature Transform (thesai.org) | |
Anagha A. Shinde, Sachin D. Ruikar. (2013). Face Recognition using PCA and Eigen Face Approach. International Journal of Computer Applications (0975 – 8887) International Conference on Recent Trends in engineering & Technology, 7-12. http:// Face Recognition using PCA and Eigen Face Approach (ijcaonline.org). | |
Coskun, M., Ucar, A., Yildirim, O., & Demir, Y. (2017, November). Face recognition based on convolutional neural network. IEEE: International Conference on Modern Electrical and Energy Systems (MEES), 376-379. http:// Face recognition based on convolutional neural network | IEEE Conference Publication | IEEE Xplore. | |
Garg, S., Mittal, S., & Kumar, P. (2019). Performance Analysis of Face Recognition Techniques for Feature Extraction. Journal of Computational and Theoretical Nanoscience, 16(9), 3830-3834. http:// Performance Analysis of Face Recognition Techniques for Feature E...: Ingenta Connect. | |
Gupta, P. (2018). Deep Neural Network for Human Face Recognition. International Journal of Engineering and Manufacturing (IJEM), 8(1), 63-71. http:// International Journal of Engineering and Manufacturing (IJEM) (mecs-press.org). | |
Kamal A. Abdelraouf El Dahshan, Eman K. Elsayed, Ashraf Aboshosha and Ebeid Ali Ebeid. (2019). Feature selection for face authentication systems: Feature Space Reductionism and QPSO, Int. J. Biometrics, 11(4), 328--341. http:// Inderscience Publishers - linking academia, business and industry through research. | |
Kamal A. El Dahshan, Eman K. Elsayed, Ashraf Aboshoha, Ebeid A. Ebeid, (2020). Recognition of Facial Emotions relying on Deep Belief Networks and Quantum Particle Swarm Optimization. IJIES (International Journal of Intelligent Engineering and Systems), 13(4),90-101. http:// 2020083109.pdf (inass.org). | |
Kamal A. ElDahshan, Eman K. Elsayed, Ashraf Aboshoha, Ebeid A.Ebeid. AP.(2017). APLYING QUANTUM ALGORITHMS FOR ENHANCING FACE AUTHENTICAION. Al Azhar Bulletin of Science, 9, 83-93. http:// (PDF) APPLYING QUANTUM ALGORITHMS FOR ENHANCING FACE AUTHENTICAION (researchgate.net). | |
Kortli Y., Jridi M. Falou A.A. and M Atri. 2020. Face Recognition Systems: A Survey. Sensors MDPI, 20(2), 342–362. http:// (PDF) Face Recognition Systems: A Survey (researchgate.net). | |
Lahaw, Z. B., Essaidani, D., &Seddik, H. (2018, July). Robust Face Recognition Approaches Using PCA, ICA, LDA Based on DWT, and SVM Algorithms. IEEE: 2018 41st International Conference on Telecommunications and Signal Processing (TSP), 1-5. http:// Robust Face Recognition Approaches Using PCA, ICA, LDA Based on DWT, and SVM Algorithms | IEEE Conference Publication | IEEE Xplore. | |
Lenc, L. and P. Král (2015). Automatic face recognition system based on the SIFT features. Computers & Electrical Engineering , 46, 256-272. http:// Automatic face recognition system based on the SIFT features - ScienceDirect. | |
Li, Xiang-Yu and Zhen-Xian Lin (2018). Face recognition based on HOG and fast PCA algorithm. Springer International Publishing, pp. 10–21. http:// Face Recognition Based on HOG and Fast PCA Algorithm | springerprofessional.de. | |
M.A., Bhat F.A., Afzal S., Khan A.I. Advances in Deep Learning [PDF] - Sciarium. | |
MANOJ, V., K SWATHI. (2015). Enhanced Face Recognition based on PCA and SVM. International Journal of Computer Applications (0975 – 8887), 117(2), 40-42. http:// (PDF) Enhanced Face Recognition based on PCA and SVM (researchgate.net). | |
Md. Abdur R., Md. Shafiul Azam, Nazmul Hossain & Md. Rashedul Islam.(2013). Face Recognition using Local Binary Patterns (LBP). Global Journal of Computer Science and Technology Graphics & Vision, 13 (4), ISSN: 0975-4172. http:// Face Recognition using Local Binary Patterns (LBP) (core.ac.uk). | |
Md. Al-Amin Bhuiyan. (2016). Towards Face Recognition Using Eigenface. (IJACSA) International Journal of Advanced Computer Science and Applications, 7(5), 25-31. http:// Towards Face Recognition Using Eigenface (thesai.org). | |
Nazari, S., &Moin, M. S. (2013, May). Face recognition using global and local Gabor features. In 2013 21st Iranian Conference on Electrical Engineering (ICEE), 1-4. IEEE. http:// Face recognition using global and local Gabor features | IEEE Conference Publication | IEEE Xplore. | |
Pooja Rani. (2015). Face Recognition using Feed Forward Neural Network. IOSR Journal of Computer Engineering (IOSR-JCE), 17(5), 61-65. http:// J017526165.pdf (iosrjournals.org). | |
Pradip Panchal, Hiren Mewada. (2018). Robust Illumination and Pose Invariant Face Recognition System using Support Vector Machines. International Journal of Applied Engineering Research, ISSN 0973-4562, 13(16), 12689–12701. http:// 61393-IJAER (ripublication.com). | |
Shaukat, A., Aziz, M., &Akram, U. (2015, August). Facial expression recognition using multiple feature sets. IEEE: 5th International Conference on IT Convergence and Security (ICITCS), 1-5. http:// Facial Expression Recognition Using Multiple Feature Sets | IEEE Conference Publication | IEEE Xplore. | |
Slim Ben Chaabane, Mohammad Hijji, Rafika Harrabi, HasseneSeddik. (2022). Face recognition based on statistical features and SVM classifier. Multimedia Tools and Applications,81(6), 8767- 8784.http://Face recognition based on statistical features and SVM classifier | SpringerLink. | |
Srivastava A., Mane S. Shah A. Shrivastava N. and B. Thakare (2017). A survey of face detection algorithms. International Conference on Inventive Systems and Control 2, pp. 1– 4. http:// A survey of face detection algorithms | IEEE Conference Publication | IEEE Xplore. | |
V. Jalaja, G.S.G.N. Anjaneyulu. (2022). Face Recognition by Using Eigen Face Method. INTERNATIONAL JOURNAL OF SCIENTIFIC & TECHNOLOGY RESEARCH, 9(3), 961-966. http:// Face-Recognition-By-Using-Eigen-Face-Method.pdf (ijstr.org). | |
Wani, M. A., Bhat, F. A., Afzal, S., & Khan, A. I. (2020). Supervised deep learning in face recognition. Springer, Singapore, Advances in Deep Learning, 95-110. http:// Download Wani | |
Wanxin Cui; Wei Zhan; Jingjing Yu; Chenfan Sun; Yangyang Zhang . (2019). Face Recognition via Convolutional Neural Networks and Siamese Neural Networks. International Conference on Intelligent Computing, Automation and Systems (ICICAS), 746 – 750. http:// Face Recognition via Convolutional Neural Networks and Siamese Neural Networks | IEEE Conference Publication | IEEE Xplore. | |
Yi Sun, Ding Liang, Xiaogang Wang, Xiaoou Tang. (2015). DeepID3: Face Recognition with Very Deep Neural Networks. http:// Computer Science: Computer Vision and Pattern Recognition, 1. 1502.00873.pdf (arxiv.org). | |
Dr. Rafika Harrabi Harrabi
Industrial Innovation and Robotics Center, University of Tabuk, Tabuk, Kingdom Saudi Arabia
University of Tunis, Department of Electrical Engineering, CEREP, ENSIT 5 Av, Taha Hussein, 1008, Tunis, Tunsia - Saudi Arabia
University of Tunis, Department of Electrical Engineering, CEREP, ENSIT 5 Av, Taha Hussein, 1008, Tunis, Tunsia - Saudi Arabia
rharrabi@ut.edu.sa
|
|
|
|
View all special issues >> | |
|
|