International audienceThis paper exploits the context of natural dynamic scenes for human action recognition in video. Human actions are frequently constrained by the purpose and the physical properties of scenes and demonstrate high correlation with particular scene classes. For example, eating often happens in a kitchen while running is more common outdoors. The contribution of this paper is three-fold: (a) we automatically discover relevant scene classes and their correlation with human actions, (b) we show how to learn selected scene classes from video without manual supervision and (c) we develop a joint framework for action and scene recognition and demonstrate improved recognition of both in natural video. We use movie scripts as a m...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this report we will investigate the problem of contextual priming in realistic human actions. We ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...
International audienceThis paper exploits the context of natural dynamic scenes for human action rec...
International audienceThe aim of this paper is to address recognition of natural human actions in di...
The aim of this paper is to address recognition of natural human actions in diverse and realistic vi...
This work addresses the problem of recognizing actions and interactions in realistic video settings ...
With the availability of cheap video recording devices, fast internet access and huge storage spaces...
We address recognition and localization of human actions in realistic scenarios. In contrast to the ...
Human behavior understanding is a fundamental problem of computer vision. It is an important compone...
This paper contributes to automatic classification and localization of human actions in video. Where...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
Abstract: Human action recognition is an active research field in computer vision and image processi...
This paper presents a novel approach for analyzing human actions in non-scripted, unconstrained vide...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this report we will investigate the problem of contextual priming in realistic human actions. We ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...
International audienceThis paper exploits the context of natural dynamic scenes for human action rec...
International audienceThe aim of this paper is to address recognition of natural human actions in di...
The aim of this paper is to address recognition of natural human actions in diverse and realistic vi...
This work addresses the problem of recognizing actions and interactions in realistic video settings ...
With the availability of cheap video recording devices, fast internet access and huge storage spaces...
We address recognition and localization of human actions in realistic scenarios. In contrast to the ...
Human behavior understanding is a fundamental problem of computer vision. It is an important compone...
This paper contributes to automatic classification and localization of human actions in video. Where...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
Abstract: Human action recognition is an active research field in computer vision and image processi...
This paper presents a novel approach for analyzing human actions in non-scripted, unconstrained vide...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this report we will investigate the problem of contextual priming in realistic human actions. We ...
This thesis addresses the problem of human action recognition in realistic video data, such as movie...