In this paper, a novel pattern recognition scheme, global harmonic subspace analysis (GHSA), is developed for face recognition. In the proposed scheme, global harmonic features are extracted at the semantic scale to capture the 2-D semantic spatial structures of a face image. Laplacian Eigenmap is applied to discriminate faces in their global harmonic subspace. Experimental results on the Yale and PIE face databases show that the proposed GHSA scheme achieves an improvement in face recognition accuracy when compared with conventional subspace approaches, and a further investigation shows that the proposed GHSA scheme has impressive robustness to noise
In this paper we present a new approach for face recognition based on multi-level Principal Componen...
Manifold learning aims to map the original data from a high-dimensional space into a low-dimensional...
This research book provides a comprehensive overview of the state-of-the-art subspace learning metho...
In this paper, a novel pattern recognition scheme, global harmonic subspace analysis (GHSA), is deve...
Abstract—We propose an appearance-based face recognition method called the Laplacianface approach. B...
The performances of face recognition systems are heavily subject to the variations in lighting. We p...
Previous works have demonstrated that the face recognition performance can be improved significantly...
Abstract—We propose an appearance-based face recognition technique called the laplacian face method....
Face recognition is a challenging task in computer vision and pattern recognition. It is well-known ...
Different eigenspace-based approaches have been pro-posed for the recognition of faces, i.e. eigenfa...
In the literature of psychophysics and neurophysiology, many studies have shown that both global and...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
181 p.This thesis presents a research project on face recognition via subspace analysis algorithms. ...
Abstract: A feature selection technique along with an information fusion procedure for improving the...
Abstract. In this paper we propose a novel non-linear discriminative analysis technique for manifold...
In this paper we present a new approach for face recognition based on multi-level Principal Componen...
Manifold learning aims to map the original data from a high-dimensional space into a low-dimensional...
This research book provides a comprehensive overview of the state-of-the-art subspace learning metho...
In this paper, a novel pattern recognition scheme, global harmonic subspace analysis (GHSA), is deve...
Abstract—We propose an appearance-based face recognition method called the Laplacianface approach. B...
The performances of face recognition systems are heavily subject to the variations in lighting. We p...
Previous works have demonstrated that the face recognition performance can be improved significantly...
Abstract—We propose an appearance-based face recognition technique called the laplacian face method....
Face recognition is a challenging task in computer vision and pattern recognition. It is well-known ...
Different eigenspace-based approaches have been pro-posed for the recognition of faces, i.e. eigenfa...
In the literature of psychophysics and neurophysiology, many studies have shown that both global and...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
181 p.This thesis presents a research project on face recognition via subspace analysis algorithms. ...
Abstract: A feature selection technique along with an information fusion procedure for improving the...
Abstract. In this paper we propose a novel non-linear discriminative analysis technique for manifold...
In this paper we present a new approach for face recognition based on multi-level Principal Componen...
Manifold learning aims to map the original data from a high-dimensional space into a low-dimensional...
This research book provides a comprehensive overview of the state-of-the-art subspace learning metho...