AbstractIn this paper, we propose a robust automatic unsupervised face recognition system using SIFT characteristics. A SIFT- based feature extraction is performed on the analyzed face images. Then, we introduce a novel metric for the obtained feature vectors. Next, we develop an automatic facial feature vector classification technique based on a hierarchical agglomerative clustering algorithm and some validation indexes. The recognition system described here works for large sets of faces and can be successfully applied in the face database indexing domain
The aim of this project is to develop a face recognition system based on Scale-Invariant Feature Tra...
Part 6: Classification Pattern RecognitionInternational audienceThe object of interest of this paper...
Abstract- Traditional methods for face recognition do not scale well with the number of training sam...
In this paper, face recognition using the most representative SIFT images is presented. It is based ...
SIFT (scale invariant feature transform) being a feature extraction algorithm was initially used for...
Two of the most important state-of-the-art challenges in face recognition are: dealing with image ac...
Two of the most important state-of-the-art challenges in face recognition are: dealing with image ac...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
Scale Invariant Feature Transform (SIFT) proposed by Lowe has been widely and successfully applied t...
The aim of this project is to develop a face recognition system based on Scale-Invariant Feature Tra...
Part 6: Classification Pattern RecognitionInternational audienceThe object of interest of this paper...
Abstract- Traditional methods for face recognition do not scale well with the number of training sam...
In this paper, face recognition using the most representative SIFT images is presented. It is based ...
SIFT (scale invariant feature transform) being a feature extraction algorithm was initially used for...
Two of the most important state-of-the-art challenges in face recognition are: dealing with image ac...
Two of the most important state-of-the-art challenges in face recognition are: dealing with image ac...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
This paper presents a face recognition algorithm based on the matching of local features extracted f...
International audienceBearing information by a fully interconnected subgraphs is recently improved i...
Scale Invariant Feature Transform (SIFT) proposed by Lowe has been widely and successfully applied t...
The aim of this project is to develop a face recognition system based on Scale-Invariant Feature Tra...
Part 6: Classification Pattern RecognitionInternational audienceThe object of interest of this paper...
Abstract- Traditional methods for face recognition do not scale well with the number of training sam...