Face Recognition System Based on Kernel Discriminant Analysis, K-Nearest Neighbor and Support Vector Machine
Journal: International Journal of Research and Engineering (Vol.5, No. 3)Publication Date: 2018-04-06
Authors : Mustafa Zuhaer Nayef Al-Dabagh Mustafa H. Mohammed Alhabib Firas H. AL-Mukhtar;
Page : 335-338
Keywords : Face recognition; kernel discriminate analysis; support vector machine; K-nearest neighbor;
Abstract
Although many methods have been implemented in the past, face recognition is still an active field of research especially after the current increased interest in security. In this paper, a face recognition system using Kernel Discriminant Analysis (KDA) and Support Vector Machine (SVM) with K-nearest neighbor (KNN) methods is presented. The kernel discriminates analysis is applied for extracting features from input images. Furthermore, SVM and KNN are employed to classify the face image based on the extracted features. This procedure is applied on each of Yale and ORL databases to evaluate the performance of the suggested system. The experimental results show that the system has a high recognition rate with accuracy up to 95.25% on the Yale database and 96% on the ORL, which are considered very good results comparing with other reported face recognition systems.
Other Latest Articles
- Hybrid Power Systems for Commercial Application in Kenya
- CONCEPTUAL STUDY OF ROLE OF AYURVEDA IN PREVENTION OF LIFESTYLE DISEASES
- KINETIC PROPERTY OF A PRESSURE VESSEL MADE FROM CFRP FABRICATED A FILAMENT WINDING METHOD
- A SHORT REVIEW: PRODUCTION AND CHARACTERIZATION OF WINE FROM FIG FRUIT (FICUS CARICA)
- PROPORTIONS IN ARCHITECTURE
Last modified: 2018-04-06 17:47:29