We introduce an approach for learning human actions as interactions between persons and objects in realistic videos. Previous works typically represent actions with low-level features such as image gradients or optical flow. In contrast, we explicitly localize in space and track over time both the object and the person, and represent an action as the trajectory of the object wrt to the person position. Our approach relies on state-of-the-art approaches for human [32] and object detection [10] as well as tracking [39]. We show that this results in human and object tracks of sufficient quality to model and localize human-object interactions in realistic videos. Our human-object interaction features capture relative trajectory of the object wr...
National audienceThis master thesis describes a supervised approach to recognize human actions in vi...
Abstract — Human action recognition in unconstrained videos is a challenging problem with many appli...
In recent times, the field of computer vision has made great progress with recognizing and tracking ...
International audienceWe introduce an approach for learning human actions as interactions between pe...
This work addresses the problem of recognizing actions and interactions in realistic video settings ...
Modern Computer Vision systems learn visual concepts through examples (i.e. images) which have been ...
We introduce a new method for representing the dynam-ics of human-object interactions in videos. Pre...
International audienceWe propose a novel human-centric approach to detect and localize human actions...
In this dissertation, we address the problem of understanding human activities in videos by developi...
Understanding the activities taking place in a video is a challenging problem in Artificial Intellig...
We introduce a weakly supervised approach for learning human actions modeled as interactions between...
We address recognition and localization of human actions in realistic scenarios. In contrast to the ...
In this paper, we address the problem of recognizing human interaction of two persons from videos. W...
Current pedestrian tracking approaches ignore impor-tant aspects of human behavior. Humans are not m...
Analysis of videos of human-object interactions involves understanding human movements, locating and...
National audienceThis master thesis describes a supervised approach to recognize human actions in vi...
Abstract — Human action recognition in unconstrained videos is a challenging problem with many appli...
In recent times, the field of computer vision has made great progress with recognizing and tracking ...
International audienceWe introduce an approach for learning human actions as interactions between pe...
This work addresses the problem of recognizing actions and interactions in realistic video settings ...
Modern Computer Vision systems learn visual concepts through examples (i.e. images) which have been ...
We introduce a new method for representing the dynam-ics of human-object interactions in videos. Pre...
International audienceWe propose a novel human-centric approach to detect and localize human actions...
In this dissertation, we address the problem of understanding human activities in videos by developi...
Understanding the activities taking place in a video is a challenging problem in Artificial Intellig...
We introduce a weakly supervised approach for learning human actions modeled as interactions between...
We address recognition and localization of human actions in realistic scenarios. In contrast to the ...
In this paper, we address the problem of recognizing human interaction of two persons from videos. W...
Current pedestrian tracking approaches ignore impor-tant aspects of human behavior. Humans are not m...
Analysis of videos of human-object interactions involves understanding human movements, locating and...
National audienceThis master thesis describes a supervised approach to recognize human actions in vi...
Abstract — Human action recognition in unconstrained videos is a challenging problem with many appli...
In recent times, the field of computer vision has made great progress with recognizing and tracking ...