In this paper, we propose a new supervised linear feature extraction technique for multiclass classification problems that is specially suited to the nearest neighbor classifier (NN). The problem of finding the optimal linear projection matrix is defined as a classification problem and the Adaboost algorithm is used to compute it in an iterative way. This strategy allows the introduction of a multitask learning (MTL) criterion in the method and results in a solution that makes no assumptions about the data distribution and that is specially appropriated to solve the small sample size problem. The performance of the method is illustrated by an application to the face recognition problem. The experiments show that the representation obtained ...
This paper presents a simple but effective method for face recognition, named nearest orthogonal mat...
Feature extraction is a crucial step for pattern recognition. In this paper, a nonlinear feature ext...
Usually face classification applications suffer from two important problems: the number of training ...
Nearest subspace (NS) classification based on linear regression technique is a very straightforward ...
In this paper, we introduce a Regression Nearest Neighbor framework for general classification tasks...
Nearest subspace (NS) classification based on linear regression technique is a very straightforward ...
In this paper we address the problem of structured feature selection in a multi-class classification...
We propose a complete scheme for face detection and recognition. We have used a Bayesian classifier...
Nearest neighbor search is commonly employed in face recognition but it does not scale well to large...
We propose a new collaborative neighbor representation algorithm for face recognition based on a rev...
Nearest neighbor search is commonly employed in face recognition but it does not scale well to large...
In this paper, we introduce the new method of Extraction and Analysis of Non-linear Features (EANF) ...
This paper presents a new joint feature learning (JFL) approach to automatically learn feature repre...
This paper addresses the problem of real time face recognition in unconstrained environments from th...
Bayes Rule and Nearest Neighbour Rule are two basic classifiers for face recognition. This article d...
This paper presents a simple but effective method for face recognition, named nearest orthogonal mat...
Feature extraction is a crucial step for pattern recognition. In this paper, a nonlinear feature ext...
Usually face classification applications suffer from two important problems: the number of training ...
Nearest subspace (NS) classification based on linear regression technique is a very straightforward ...
In this paper, we introduce a Regression Nearest Neighbor framework for general classification tasks...
Nearest subspace (NS) classification based on linear regression technique is a very straightforward ...
In this paper we address the problem of structured feature selection in a multi-class classification...
We propose a complete scheme for face detection and recognition. We have used a Bayesian classifier...
Nearest neighbor search is commonly employed in face recognition but it does not scale well to large...
We propose a new collaborative neighbor representation algorithm for face recognition based on a rev...
Nearest neighbor search is commonly employed in face recognition but it does not scale well to large...
In this paper, we introduce the new method of Extraction and Analysis of Non-linear Features (EANF) ...
This paper presents a new joint feature learning (JFL) approach to automatically learn feature repre...
This paper addresses the problem of real time face recognition in unconstrained environments from th...
Bayes Rule and Nearest Neighbour Rule are two basic classifiers for face recognition. This article d...
This paper presents a simple but effective method for face recognition, named nearest orthogonal mat...
Feature extraction is a crucial step for pattern recognition. In this paper, a nonlinear feature ext...
Usually face classification applications suffer from two important problems: the number of training ...