A face recognition algorithm based on NMPKPCA algorithm presented in this paper. The proposed algorithm when compared with conventional Principal component analysis (PCA) algorithms has an improved recognition Rate for face images with large variations in illumination, facial expressions. In this technique, first phase congruency features are extracted from the face image so that effects due to illumination variations are avoided by considering phase component of image. Then, face images are divided into small sub images and the kernel PCA approach is applied to each of these sub images. but, dividing into small or large modules creates some problems in recognition. So a special modulation called neighborhood defined modularization approach...
Face recognition attracts many researchers and has made significant progress in recent years. Face r...
A face recognition algorithm based on Principal Component Analysis (PCA) has been developed and test...
Phase congruency is an edge detector and measurement of the significant feature in the image. It is ...
A kernel principal component analysis (PCA) was previously proposed as a nonlinear extension of a PC...
A novel feature selection strategy for improved face recognition in images with variations due to il...
Abstract—One of the most successful process to accomplish human face recognition are the methods bas...
Abstract: Problem statement: A face identification algorithm based on modular localized variation by...
In this paper, we conduct a comprehensive study on dimensionality reduction (DR) techniques and disc...
A novel feature selection strategy to improve the recognition accuracy on the faces that are affecte...
This paper mainly addresses the building of not only pose but also size independent face recognition...
Copyright © 2014 Kanokmon Rujirakul et al. This is an open access article distributed under the Crea...
A complex multidimensional structure like face needs good computing techniques for recognition. In ...
In these days, appearance based approaches gain popularity in many computer vision problems, more in...
Face recognition is a very complex task in the area of image processing and computer vision. This be...
This is a report for the Final Year Project held in the final year of study of the 4-year Electrical...
Face recognition attracts many researchers and has made significant progress in recent years. Face r...
A face recognition algorithm based on Principal Component Analysis (PCA) has been developed and test...
Phase congruency is an edge detector and measurement of the significant feature in the image. It is ...
A kernel principal component analysis (PCA) was previously proposed as a nonlinear extension of a PC...
A novel feature selection strategy for improved face recognition in images with variations due to il...
Abstract—One of the most successful process to accomplish human face recognition are the methods bas...
Abstract: Problem statement: A face identification algorithm based on modular localized variation by...
In this paper, we conduct a comprehensive study on dimensionality reduction (DR) techniques and disc...
A novel feature selection strategy to improve the recognition accuracy on the faces that are affecte...
This paper mainly addresses the building of not only pose but also size independent face recognition...
Copyright © 2014 Kanokmon Rujirakul et al. This is an open access article distributed under the Crea...
A complex multidimensional structure like face needs good computing techniques for recognition. In ...
In these days, appearance based approaches gain popularity in many computer vision problems, more in...
Face recognition is a very complex task in the area of image processing and computer vision. This be...
This is a report for the Final Year Project held in the final year of study of the 4-year Electrical...
Face recognition attracts many researchers and has made significant progress in recent years. Face r...
A face recognition algorithm based on Principal Component Analysis (PCA) has been developed and test...
Phase congruency is an edge detector and measurement of the significant feature in the image. It is ...