We propose a view-invariant representation of human appearance in multi-view scenarios consisting in a new set of views that overcome the view-dependency and moderate occlusion problems of fixed cameras. First, a 3D reconstruction of the scene is generated, from which we can track multiple persons in the scenario. For each tracked subject, we define a set of virtual views by projecting its associated 3D volume. The synthetic views can be generated in convenient directions to detect and classify a number of gestures useful in assistive and smart environments. Experimental results of the representation and event detection in a multi-camera environment prove the effectiveness of the proposed method
Capturing multi-view images by a group of spatially distributed cameras is one of the most useful an...
The proposed approach is motivated by applications which allow user navigation and individual viewpo...
Two-view methods have been well developed to identify human actions. However, in a case where the co...
We propose a view-invariant representation of human appearance in multi-view scenarios consisting i...
This paper presents a novel view-independent approach to the recognition of human gestures of severa...
This paper proposes a clustered exemplar-based model for performing viewpoint invariant tracking of ...
In the last decade, computer vision has drawn more and more attention because of its potential appli...
In this paper, we present an "appearance-based" virtual view generation method for tempora...
This paper addresses the synthesis of virtual views of people from multiple view image sequences. We...
This paper presents a review and comparative study of recent multi-view approaches for human 3D pose...
Automatic, non-intrusive vision-based capture of the human body motion opens new possibilities in ap...
Abstract In many scenarios a dynamic scene is filmed by multiple video cameras located at different ...
Estimating human pose and recognizing human activities are important steps in many applications, suc...
This paper presents a method for multi-view 3D modeling of human bodies using virtual stereopsis. T...
There is a growing interest in the problem of vision-based human activity recognition, motivated by ...
Capturing multi-view images by a group of spatially distributed cameras is one of the most useful an...
The proposed approach is motivated by applications which allow user navigation and individual viewpo...
Two-view methods have been well developed to identify human actions. However, in a case where the co...
We propose a view-invariant representation of human appearance in multi-view scenarios consisting i...
This paper presents a novel view-independent approach to the recognition of human gestures of severa...
This paper proposes a clustered exemplar-based model for performing viewpoint invariant tracking of ...
In the last decade, computer vision has drawn more and more attention because of its potential appli...
In this paper, we present an "appearance-based" virtual view generation method for tempora...
This paper addresses the synthesis of virtual views of people from multiple view image sequences. We...
This paper presents a review and comparative study of recent multi-view approaches for human 3D pose...
Automatic, non-intrusive vision-based capture of the human body motion opens new possibilities in ap...
Abstract In many scenarios a dynamic scene is filmed by multiple video cameras located at different ...
Estimating human pose and recognizing human activities are important steps in many applications, suc...
This paper presents a method for multi-view 3D modeling of human bodies using virtual stereopsis. T...
There is a growing interest in the problem of vision-based human activity recognition, motivated by ...
Capturing multi-view images by a group of spatially distributed cameras is one of the most useful an...
The proposed approach is motivated by applications which allow user navigation and individual viewpo...
Two-view methods have been well developed to identify human actions. However, in a case where the co...