n this paper, we propose a novel mid-level feature representation for the recognition of actions in videos. This descriptor proves to posses relevant discriminative power when used in a generic action recognition pipeline. It is well known that mid-level feature descriptors learnt using class-oriented information are potentially more distinctive than the low-level features extracted in a bottom-up unsupervised fashion. In this regard, we introduce the notion of concepts, a mid-level feature representation capable of tracking the dynamics of motion salient regions over consecutive frames in a video sequence. Our feature representation is based on the idea of region correspondence over consecutive frames and we make use of an unsupervised ite...
The recognition of actions and activities has a long history in the computer vision community. State...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
We describe a mid-level approach for action recognition. From an input video, we extract salient spa...
Detecting actions in videos is still a demanding task due to large intra-class variation caused by v...
Effective extraction of human body parts and operated objects participating in action is the key iss...
International audienceActivity recognition in video sequences is a difficult problem due to the comp...
Human action categories exhibit significant intra-class variation. Changes in viewpoint, human appea...
International audienceActivity recognition in video sequences is a difficult problem due to the comp...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
LNCS v. 9007 entitled: Computer Vision -- ACCV 2014: 12th Asian Conference on Computer ..., Part 5Th...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Abstract—We propose a novel method to model human actions by explicitly coding motion and structure ...
We study the question of activity classification in videos and present a novel approach for recogniz...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
The recognition of actions and activities has a long history in the computer vision community. State...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...
We describe a mid-level approach for action recognition. From an input video, we extract salient spa...
Detecting actions in videos is still a demanding task due to large intra-class variation caused by v...
Effective extraction of human body parts and operated objects participating in action is the key iss...
International audienceActivity recognition in video sequences is a difficult problem due to the comp...
Human action categories exhibit significant intra-class variation. Changes in viewpoint, human appea...
International audienceActivity recognition in video sequences is a difficult problem due to the comp...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
LNCS v. 9007 entitled: Computer Vision -- ACCV 2014: 12th Asian Conference on Computer ..., Part 5Th...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Abstract—We propose a novel method to model human actions by explicitly coding motion and structure ...
We study the question of activity classification in videos and present a novel approach for recogniz...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
The recognition of actions and activities has a long history in the computer vision community. State...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
In this paper, we propose a novel feature type to recognize human actions from video data. By combin...