Usually face classification applications suffer from two important problems: the number of training samples from each class is reduced, and the final system usually must be extended to incorporate new people to recognize. In this paper we introduce a face recognition method that extends a previous boosting-based classifier adding new classes and avoiding the need of retraining the system each time a new person joins the system.The classifier is trained using the multitask learning principle and multiple verification tasks are trained together sharing the same feature space. The new classes are added taking advantage of the previous learned structure, being the addition of new classes not computationally demanding. Our experiments with two...
Abstract — An automatic color face identification technique with improved identification accuracy ha...
In this paper, we propose a method to apply the popular cascade classifier into face recognition to ...
Video-based face recognition of individuals involves matching facial regions captured in video seque...
In face recognition, where high-dimensional representation spaces are generally used, it is very im...
In this paper, a new approach to face recognition is presented in which not only a classifier but al...
In this paper, we propose a new supervised linear feature extraction technique for multiclass classi...
In this paper we propose an integrated system for face detection and face recognition based on impro...
© 2015 Elsevier B.V. Regarded as two independent tasks, both face identification and facial expressi...
Multi-task learning aims at improving the generalization performance of a learning task with the hel...
Recognizing faces corresponding to target individuals remains a challenging problem in video surveil...
International audienceIn object recognition in general and in face detection in particular, data ali...
Asymmetric boosting, while acknowledged to be important to imbalanced classification problems like f...
In the actual face recognition applications, the sample sets are updated constantly. However, most o...
[[abstract]]This paper proposes a novel multi-class hybrid-boost learning algorithm for multi-pose f...
International audienceBenefiting from the joint learning of the multiple tasks in the deep multi-tas...
Abstract — An automatic color face identification technique with improved identification accuracy ha...
In this paper, we propose a method to apply the popular cascade classifier into face recognition to ...
Video-based face recognition of individuals involves matching facial regions captured in video seque...
In face recognition, where high-dimensional representation spaces are generally used, it is very im...
In this paper, a new approach to face recognition is presented in which not only a classifier but al...
In this paper, we propose a new supervised linear feature extraction technique for multiclass classi...
In this paper we propose an integrated system for face detection and face recognition based on impro...
© 2015 Elsevier B.V. Regarded as two independent tasks, both face identification and facial expressi...
Multi-task learning aims at improving the generalization performance of a learning task with the hel...
Recognizing faces corresponding to target individuals remains a challenging problem in video surveil...
International audienceIn object recognition in general and in face detection in particular, data ali...
Asymmetric boosting, while acknowledged to be important to imbalanced classification problems like f...
In the actual face recognition applications, the sample sets are updated constantly. However, most o...
[[abstract]]This paper proposes a novel multi-class hybrid-boost learning algorithm for multi-pose f...
International audienceBenefiting from the joint learning of the multiple tasks in the deep multi-tas...
Abstract — An automatic color face identification technique with improved identification accuracy ha...
In this paper, we propose a method to apply the popular cascade classifier into face recognition to ...
Video-based face recognition of individuals involves matching facial regions captured in video seque...