We present a method to learn models of human heads for the purpose of detection from different viewing angles. We focus on a model where objects are represented as constellations of rigid features (parts). Variability is represented by a joint probability density function (PDF) on the shape of the constellation. In the first stage, the method automatically identifies distinctive features in the training set using an interest operator followed by vector quantization. The set of model parameters, including the shape PDF, is then learned using expectation maximization. Experiments show good generalization performance to novel viewpoints and unseen faces. Performance is above 90% correct with less than 1 s computation time per image
A method for human head pose estimation in multicamera environments is proposed. The method computes...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
In this paper, we investigate detection and localization of general 3D object classes by relating lo...
We present an algorithm for estimation of head orientation, given cropped images of a subject’s head...
International audienceThis paper tackles the problem of head pose estimation which has been consider...
We present a method for learning appearance models that can be used to recognise and track both 3D ...
International audienceIn this paper we present a face model based on learning a relation between loc...
A new technique is described for recognizing faces from new viewpoints. From a single 2D image of a ...
We propose a two-step method for detecting human heads with their orientations. In the first step, t...
A new technique is described for synthesizing images of faces from new viewpoints, when only a singl...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
We describe a computational model of face recognition that makes use of the overlapping texture and ...
The importance of different perspective views for the recognition of model heads was studied. In exp...
International audienceHead pose estimation from digital images consists of locating a person's head ...
Abstract. We propose a two-step method for detecting human heads and estimating face orientations un...
A method for human head pose estimation in multicamera environments is proposed. The method computes...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
In this paper, we investigate detection and localization of general 3D object classes by relating lo...
We present an algorithm for estimation of head orientation, given cropped images of a subject’s head...
International audienceThis paper tackles the problem of head pose estimation which has been consider...
We present a method for learning appearance models that can be used to recognise and track both 3D ...
International audienceIn this paper we present a face model based on learning a relation between loc...
A new technique is described for recognizing faces from new viewpoints. From a single 2D image of a ...
We propose a two-step method for detecting human heads with their orientations. In the first step, t...
A new technique is described for synthesizing images of faces from new viewpoints, when only a singl...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
We describe a computational model of face recognition that makes use of the overlapping texture and ...
The importance of different perspective views for the recognition of model heads was studied. In exp...
International audienceHead pose estimation from digital images consists of locating a person's head ...
Abstract. We propose a two-step method for detecting human heads and estimating face orientations un...
A method for human head pose estimation in multicamera environments is proposed. The method computes...
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
In this paper, we investigate detection and localization of general 3D object classes by relating lo...