The FERET evaluation compared recognition rates for different semi-automated and automated face recognition algorithms. We extend FERET by considering when differences in recognition rates are statistically distinguishable subject to changes in test imagery. Nearest Neighbor classifiers using principal component and linear discriminant subspaces are compared using different choices of distance metric. Probability distributions for algoriithm recognition rates and pairwise differences in recognition rates are determined using a permutation methodology. The principal component subspace with Mahalanobis distance is the best combination; using L2 is second best. Choice of distance measure for the linear discriminant subspace matters little, and...
In this paper, we develop a new framework for face recognition based on nonparametric discriminant a...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract: In this paper two Face Recognition techniques, Principal Component Analysis (PCA) and Line...
Abstract. This study examines the role of Eigenvector selection and Eigenspace distance measures on ...
Face recognition is used in wide range of application. In recent years, face recognition has become ...
Face recognition algorithms has in the past few years become a very active area of research in the f...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
This paper presents study of face recognition system which is based on Principal Component Analysis ...
Abstract: Face recognition has become a major field of interest these days. Face recognition algorit...
This paper presents a study of how factors associated with subjects affect recognition difficulty us...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract—In this paper we present a comparative study of two well-known face recognition algorithms....
In this paper we present a comparative study of two well-known face recognition algorithms. The cont...
In this paper, we develop a new framework for face recognition based on nonparametric discriminant a...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract: In this paper two Face Recognition techniques, Principal Component Analysis (PCA) and Line...
Abstract. This study examines the role of Eigenvector selection and Eigenspace distance measures on ...
Face recognition is used in wide range of application. In recent years, face recognition has become ...
Face recognition algorithms has in the past few years become a very active area of research in the f...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
This paper presents study of face recognition system which is based on Principal Component Analysis ...
Abstract: Face recognition has become a major field of interest these days. Face recognition algorit...
This paper presents a study of how factors associated with subjects affect recognition difficulty us...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract—In this paper we present a comparative study of two well-known face recognition algorithms....
In this paper we present a comparative study of two well-known face recognition algorithms. The cont...
In this paper, we develop a new framework for face recognition based on nonparametric discriminant a...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Face recognition has recently received significant attention as one of the challenging and promising...