International audienceWhile most existing approaches for detection in videos focus on objects or human actions separately, we aim at jointly detecting objects performing actions, such as cat eating or dog jumping. We introduce an end-to-end multitask objective that jointly learns object-action relationships. We compare it with different training objectives, validate its effectiveness for detecting objects-actions in videos, and show that both tasks of object and action detection benefit from this joint learning. Moreover, the proposed architecture can be used for zero-shot learning of actions: our multitask objective leverages the commonalities of an action performed by different objects, e.g. dog and cat jumping , enabling to detect action...
In many cases, human actions can be identified not only by the singular observation of the human bod...
We address the recognition problem of video activities in-volving two interacting moving objects und...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
International audienceWhile most existing approaches for detection in videos focus on objects or hum...
The rise of deep learning has facilitated remarkable progress in video understanding. This thesis ad...
Modern Computer Vision systems learn visual concepts through examples (i.e. images) which have been ...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Sharing knowledge for multiple related machine learn-ing tasks is an effective strategy to improve t...
Sharing knowledge for multiple related machine learn-ing tasks is an effective strategy to improve t...
The amount of video data has grown exponentially over the last years. It is not feasible anymore to ...
International audienceWe introduce an approach for learning human actions as interactions between pe...
One of the most exciting and useful computer vision research topics is automated human activity iden...
The world that we live in is a complex network of agents and their interactions which are termed as ...
This paper presents an approach to view-invariant ac-tion recognition, where human poses and motions...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
In many cases, human actions can be identified not only by the singular observation of the human bod...
We address the recognition problem of video activities in-volving two interacting moving objects und...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
International audienceWhile most existing approaches for detection in videos focus on objects or hum...
The rise of deep learning has facilitated remarkable progress in video understanding. This thesis ad...
Modern Computer Vision systems learn visual concepts through examples (i.e. images) which have been ...
This thesis addresses the problem of understanding human behaviour in videos in multiple problem set...
Sharing knowledge for multiple related machine learn-ing tasks is an effective strategy to improve t...
Sharing knowledge for multiple related machine learn-ing tasks is an effective strategy to improve t...
The amount of video data has grown exponentially over the last years. It is not feasible anymore to ...
International audienceWe introduce an approach for learning human actions as interactions between pe...
One of the most exciting and useful computer vision research topics is automated human activity iden...
The world that we live in is a complex network of agents and their interactions which are termed as ...
This paper presents an approach to view-invariant ac-tion recognition, where human poses and motions...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
In many cases, human actions can be identified not only by the singular observation of the human bod...
We address the recognition problem of video activities in-volving two interacting moving objects und...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...