This paper presents a methodology that tackles the face recognition problem by accommodating multiple clustering steps. At each clustering step, the test and training faces are projected to a discriminant space and the projected training data are partitioned into clusters using the k-means algorithm. Then a subset of the training data clusters is selected, based on how similar the faces in these clusters are to the test face. In the clustering step that follows a new discriminant space is defined by processing this subset and both the test and training data are projected to this space. This process is repeated until one final cluster is selected and the most similar, to the test face, face class contained is set as the identity match. The U...
In this paper we introduce a new face recognition approach based on the representation of each indiv...
In this paper, we present a novel maximum correlation sample subspace method and apply it to human f...
This thesis will introduce Face Recognition as an important and crucially needed type of biometrics....
This paper presents a methodology that tackles the face recognition problem by accommodating multipl...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
International audienceWe propose in this paper a search approach which aim to improve identification...
Face recognition from Single Sample per Person (SSPP) is extremely challenging because only one samp...
Abstract- Traditional methods for face recognition do not scale well with the number of training sam...
Notwithstanding the enhancement obtained in the last decade researches, the recognition of facial at...
In this thesis, we study two problems based on clustering algorithms. In the first problem, we study...
In an era of big data, face images captured in social media and forensic investigations, etc., gener...
Different from the existing approaches that usually utilize single view information of image sets to...
Face recognition is one of the most unobtrusive biometric techniques that can be used for access con...
Face recognition using FLD for extracting high dimensional images is introduced in this paper. The m...
In this paper we introduce a new face recognition approach based on the representation of each indiv...
In this paper, we present a novel maximum correlation sample subspace method and apply it to human f...
This thesis will introduce Face Recognition as an important and crucially needed type of biometrics....
This paper presents a methodology that tackles the face recognition problem by accommodating multipl...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
International audienceWe propose in this paper a search approach which aim to improve identification...
Face recognition from Single Sample per Person (SSPP) is extremely challenging because only one samp...
Abstract- Traditional methods for face recognition do not scale well with the number of training sam...
Notwithstanding the enhancement obtained in the last decade researches, the recognition of facial at...
In this thesis, we study two problems based on clustering algorithms. In the first problem, we study...
In an era of big data, face images captured in social media and forensic investigations, etc., gener...
Different from the existing approaches that usually utilize single view information of image sets to...
Face recognition is one of the most unobtrusive biometric techniques that can be used for access con...
Face recognition using FLD for extracting high dimensional images is introduced in this paper. The m...
In this paper we introduce a new face recognition approach based on the representation of each indiv...
In this paper, we present a novel maximum correlation sample subspace method and apply it to human f...
This thesis will introduce Face Recognition as an important and crucially needed type of biometrics....