In this work we present a method for video skimming based on hidden Markov Models (HMMs) and motion activity. Specifically, a set of HMMs is used to model subsequent log- ical story units, where the HMM states represent different visual-concepts, the transitions model the temporal dependencies in each story unit, and stochastic observations are given by single shots. The video skim is generated as an observation sequence, where, in order to privilege more informa- tive segments for entering the skim, dynamic shots are assigned higher probability of observation. The effectiveness of the method is demonstrated on a video set from different kinds of programmes, and results are evaluated in terms of metrics that measure the content representati...
We describe our studies on summarising surveillance videos using optical flow information. The propo...
Building on the current understanding of neural architecture of the visual cortex, we present a grap...
In this paper, we present an unsupervised method for mining activities in videos. From unlabeled vid...
Depending on the specific information they are seeking, users desire flexible and intuitive methods ...
Surveillance systems require advanced algorithms able to make decisions without a human operator or ...
We present a framework for identifying events in video and their roles the larger "story" ...
Motion is an important cue for video understanding and is widely used in many semantic video analyse...
The exploitation of video data requires to extract information at a rather semantic level, and then,...
Hidden Markov Models have been employed in many vision applications to model and identi...
In this paper we propose a method to retrieve video stories from a database. Given a sample story un...
We address the problem of dynamic event recognition in videos. This is motivated by increasing needs...
In this paper we introduce a probabilistic framework to exploit hierarchy, structure sharing and dur...
International audienceWe propose an original approach for the characterization of video dynamic cont...
This paper presents an algorithm for learning the underlying models which generate streams of observ...
This thesis presents a complete computational framework for discovering human actions and modeling h...
We describe our studies on summarising surveillance videos using optical flow information. The propo...
Building on the current understanding of neural architecture of the visual cortex, we present a grap...
In this paper, we present an unsupervised method for mining activities in videos. From unlabeled vid...
Depending on the specific information they are seeking, users desire flexible and intuitive methods ...
Surveillance systems require advanced algorithms able to make decisions without a human operator or ...
We present a framework for identifying events in video and their roles the larger "story" ...
Motion is an important cue for video understanding and is widely used in many semantic video analyse...
The exploitation of video data requires to extract information at a rather semantic level, and then,...
Hidden Markov Models have been employed in many vision applications to model and identi...
In this paper we propose a method to retrieve video stories from a database. Given a sample story un...
We address the problem of dynamic event recognition in videos. This is motivated by increasing needs...
In this paper we introduce a probabilistic framework to exploit hierarchy, structure sharing and dur...
International audienceWe propose an original approach for the characterization of video dynamic cont...
This paper presents an algorithm for learning the underlying models which generate streams of observ...
This thesis presents a complete computational framework for discovering human actions and modeling h...
We describe our studies on summarising surveillance videos using optical flow information. The propo...
Building on the current understanding of neural architecture of the visual cortex, we present a grap...
In this paper, we present an unsupervised method for mining activities in videos. From unlabeled vid...