Anatomization of the systems of dimension relaxation for facial recognition

Author:

Raha Mayamin Hamid1,Deb Tonmoay1,Rahmun Mahieyin1,Chen Tim2

Affiliation:

1. Department of Electrical and Computer Engineering, North South University, Bangladesh

2. Department of Medical Engineering, California Institute of Technology, Pasadena, CA, USA

Abstract

Face recognition is the most efficient image analysis application, and the reduction of dimensionality is an essential requirement. The curse of dimensionality occurs with the increase in dimensionality, the sample density decreases exponentially. Dimensionality Reduction is the process of taking into account the dimensionality of the feature space by obtaining a set of principal features. The purpose of this manuscript is to demonstrate a comparative study of Principal Component Analysis and Linear Discriminant Analysis methods which are two of the highly popular appearance-based face recognition projection methods. PCA creates a flat dimensional data representation that describes as much data variance as possible, while LDA finds the vectors that best discriminate between classes in the underlying space. The main idea of PCA is to transform high dimensional input space into the function space that displays the maximum variance. Traditional LDA feature selection is obtained by maximizing class differences and minimizing class distance.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Human-Computer Interaction,Software

Reference27 articles.

1. A literature survey on face recognition techniques;Patel;International Journal of Computer Trends and Technology (IJCTT),2013

2. Duan, H., Yan, R., & Lin, K. (2008, November). Research on face recognition based on PCA. In 2008 International Seminar on Future Information Technology and Management Engineering, IEEE, pp. 29–32.

3. Review of PCA, LDA and LBP algorithms used for 3D face recognition;Dhere;Int J Eng Sci Innovative Technol (IJESIT),2015

4. Face recognition using principal component analysis and neural networks;Navaz;March-2013, International Journal of Computer Networking, Wireless and Mobile Communications,2013

5. Support vector machines, PCA and LDA in face recognition;Melišek;J. Electr. Eng,2008

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