The problem of human action recognition has received increasing attention in recent years for its importance in many applications. Local representations and in particular STIP descriptors have gained increasing popularity for action recognition. Yet, the main limitation of those approaches is that they do not capture the spatial relationships in the subject performing the action. This paper proposes a novel method based on the fusion of global spatial relationships provided by graph embedding and the local spatio-temporal information of STIP descriptors. Experiments on an action recognition dataset reported in the paper show that recognition accuracy can be significantly improved by combining the structural information with the spatio-tempo...
There are numerous instances in which, in addition to the direct observation of a human body in moti...
A new spatio temporal descriptor is proposed for action recognition. The action is modelled from a b...
The problem of human action recognition has received increasing attention in recent years for its im...
The problem of human action recognition has received increasing attention in recent years for its im...
We propose a video graph based human action recognition framework. Given an input video sequence, w...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Action recognition requires modelling the interactions between either human & human or human & objec...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
This paper presents and investigates a set of local space-time descriptors for representing and reco...
www.inria.fr Abstract. The bag-of-words approach with local spatio-temporal fea-tures have become a ...
Abstract—This paper provides a unified framework for the interrelated topics of action spotting, the...
The bag-of-words approach with local spatio-temporal features have become a popular video representa...
There are numerous instances in which, in addition to the direct observation of a human body in moti...
A new spatio temporal descriptor is proposed for action recognition. The action is modelled from a b...
The problem of human action recognition has received increasing attention in recent years for its im...
The problem of human action recognition has received increasing attention in recent years for its im...
We propose a video graph based human action recognition framework. Given an input video sequence, w...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
Human action recognition has drawn much attention in the field of video analysis. In this paper, we ...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Action recognition requires modelling the interactions between either human & human or human & objec...
In this paper we propose a novel framework for action recognition based on multiple features for imp...
This paper presents and investigates a set of local space-time descriptors for representing and reco...
www.inria.fr Abstract. The bag-of-words approach with local spatio-temporal fea-tures have become a ...
Abstract—This paper provides a unified framework for the interrelated topics of action spotting, the...
The bag-of-words approach with local spatio-temporal features have become a popular video representa...
There are numerous instances in which, in addition to the direct observation of a human body in moti...
A new spatio temporal descriptor is proposed for action recognition. The action is modelled from a b...
The problem of human action recognition has received increasing attention in recent years for its im...