سیویلیکا را در شبکه های اجتماعی دنبال نمایید.

2D Dimensionality Reduction Methods without Loss

Publish Year: 1398
Type: Journal paper
Language: English
View: 476

This Paper With 10 Page And PDF Format Ready To Download

Export:

Link to this Paper:

Document National Code:

JR_JADM-7-1_018

Index date: 10 July 2019

2D Dimensionality Reduction Methods without Loss abstract

In this paper, several two-dimensional extensions of principal component analysis (PCA) and linear discriminant analysis (LDA) techniques has been applied in a lossless dimensionality reduction framework, for face recognition application. In this framework, the benefits of dimensionality reduction were used to improve the performance of its predictive model, which was a support vector machine (SVM) classifier. At the same time, the loss of the useful information was minimized using the projection penalty idea. The well-known face databases were used to train and evaluate the proposed methods. The experimental results indicated that the proposed methods had a higher average classification accuracy in general compared to the classification based on Euclidean distance, and also compared to the methods which first extracted features based on dimensionality reduction technics, and then used SVM classifier as the predictive model.

2D Dimensionality Reduction Methods without Loss Keywords:

2D Dimensionality Reduction Methods without Loss authors

S. Ahmadkhani

Young Researchers & Elite Club, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran

P. Adibi

Department of Artificial Intelligence, Computer Engineering Faculty, University of Isfahan, Isfahan, Iran.

A. ahmadkhani

Department of Mechanical Engineering, Engineering Faculty,Razi University of Kermanshah, Kermanshah, Iran.