We present a method for unsupervised learning of event classes from videos in which multiple actions might occur simultaneously. It is assumed that all such activities are produced from an underlying set of event class generators. The learning task is then to recover this generative process from visual data. A set of event classes is derived from the most likely decomposition of the tracks into a set of labelled events involving subsets of interacting tracks. Interactions between subsets of tracks are modelled as a relational graph structure that captures qualitative spatio-temporal relationships between these tracks. The posterior probability of candidate solutions favours decompositions in which events of the same class have a similar rel...
In recent years, the spread of video sensor networks both in public and private areas has grown cons...
We address the problem of group-level event recognition from videos. The events of interest are defi...
This paper presents a classifier-based approach to recognize dynamic events in video surveillance se...
We present a method for unsupervised learning of event classes from videos in which multiple actions...
We present a method for unsupervised learning of event classes from videos in which multiple actions...
We present a method for unsupervised learning of event classes from videos in which multiple activit...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
We present a novel approach for automatically inferring models of multiobject events. Objects are fi...
Learning event models from videos has applications ranging from abnormal event detection to content ...
Institut de Robòtica i Informàtica IndustrialRecent research has shown that, in particular domains, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
In recent years, the spread of video sensor networks both in public and private areas has grown cons...
We address the problem of group-level event recognition from videos. The events of interest are defi...
This paper presents a classifier-based approach to recognize dynamic events in video surveillance se...
We present a method for unsupervised learning of event classes from videos in which multiple actions...
We present a method for unsupervised learning of event classes from videos in which multiple actions...
We present a method for unsupervised learning of event classes from videos in which multiple activit...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
We present a novel approach for automatically inferring models of multiobject events. Objects are fi...
Learning event models from videos has applications ranging from abnormal event detection to content ...
Institut de Robòtica i Informàtica IndustrialRecent research has shown that, in particular domains, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
Abstract. Human action categories exhibit significant intra-class vari-ation. Changes in viewpoint, ...
The world that we live in is a complex network of agents and their interactions which are termed as ...
In recent years, the spread of video sensor networks both in public and private areas has grown cons...
We address the problem of group-level event recognition from videos. The events of interest are defi...
This paper presents a classifier-based approach to recognize dynamic events in video surveillance se...