Research Journal of Applied Sciences

Year: 2016
Volume: 11
Issue: 10
Page No. 948 - 952

An Efficient SVD’s Principle Components for Face Recognition

Authors : W. Al-Hameed

Abstract: By using the direct relationship between the Principle Component Analysis (PCA) and Singular Value Decomposition (SVD), it can draw the important landmarks that represent the basic components of the data, tried to create preference in terms of rates of discrimination within the SVD decomposition matrices themselves. Experimentally, it have been found out that high percentage of similarity between SVD and PCA when applied on the same dataset of images in terms of results. As result, the advantage of the direct relationship between PCA and SVD has been exploited and using SVD’s principle components as features for recognition stage. Least Square Support Vector Machine( LSSVM) has been applied to recognize faces.

How to cite this article:

W. Al-Hameed , 2016. An Efficient SVD’s Principle Components for Face Recognition. Research Journal of Applied Sciences, 11: 948-952.

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved