The work presented in this PhD thesis takes place in the general context of face matching. More precisely, our goal is to design and develop novel algorithms to learn compact, discriminative, domain invariant or de-identifying representations of faces. Searching and indexing faces open the door to many interesting applications. However, this is made day after day more challenging due to the rapid growth of the volume of faces to analyse. Representing faces by compact and discriminative features is consequently essential to deal with such very large datasets. Moreover, this volume is increasing without any apparent limits; this is why it is also relevant to propose solutions to organise faces in meaningful ways, in order to reduce the search...
International audienceFace identification is the problem of determining whether two face images depi...
International audienceThis paper presents a novel method for hierarchically organizing large face da...
The key components of a machine perception algorithm are feature extraction followed by classificati...
The work presented in this PhD thesis takes place in the general context of face matching. More prec...
The research objectives of this thesis concern the development of new concepts for image segmentatio...
Data-driven models of the 3D face are a promising direction for capturing the subtle complexities of...
Historically and socially, the human face is one of the most natural modalities for determining the ...
In this report, we present methods for face recognition using a collection of images with captions. ...
Due to the natural, non-intrusive, easily collectible, widespread applicability, machine-based face ...
In this dissertation, we propose methods and data driven machine learning solutions which address an...
Face analysis fields are widely spread out over a large quantity of domains : Human Computer Interac...
Facial recognition is one of the most studied challenges in computer vision, proving to be a complex...
Facial expression analysis is an important problem in many biometric tasks, such as face recognition...
International audienceFace identification is the problem of determining whether two face images depi...
International audienceThis paper presents a novel method for hierarchically organizing large face da...
The key components of a machine perception algorithm are feature extraction followed by classificati...
The work presented in this PhD thesis takes place in the general context of face matching. More prec...
The research objectives of this thesis concern the development of new concepts for image segmentatio...
Data-driven models of the 3D face are a promising direction for capturing the subtle complexities of...
Historically and socially, the human face is one of the most natural modalities for determining the ...
In this report, we present methods for face recognition using a collection of images with captions. ...
Due to the natural, non-intrusive, easily collectible, widespread applicability, machine-based face ...
In this dissertation, we propose methods and data driven machine learning solutions which address an...
Face analysis fields are widely spread out over a large quantity of domains : Human Computer Interac...
Facial recognition is one of the most studied challenges in computer vision, proving to be a complex...
Facial expression analysis is an important problem in many biometric tasks, such as face recognition...
International audienceFace identification is the problem of determining whether two face images depi...
International audienceThis paper presents a novel method for hierarchically organizing large face da...
The key components of a machine perception algorithm are feature extraction followed by classificati...