In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated Video (UGV). Since UGV is rarely structured in shots and usually user's interest are revealed through camera movements, a UGV temporal segmentation system has been proposed that generates a video partition based on a camera motion classification. Motion-related mid-level features have been suggested to feed a Hierarchical Hidden Markov Model (HHMM) that produces a user-meaningful UGV temporal segmentation. Moreover, a keyframe selection method has been proposed that picks a keyframe for fixed-content camera motion patterns such as zoom, still, or shake and a set of keyframes for varying-content translation patterns. The proposed video segment...
Video segmentation research is currently limited by the lack of a benchmark dataset that covers the ...
This paper presents a complete system for shot and scene detection in broadcast videos, as well as a...
In this paper, we propose a new method to model the temporal context for boosting video annotation a...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
This paper presents an algorithm for the temporal segmentation of user-generated videos into visuall...
This paper presents an algorithm for the temporal segmentation of user-generated videos into visuall...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
In this report, the analysis and design of a system that extracts keyframes from videos is detailed....
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
Video segmentation research is currently limited by the lack of a benchmark dataset that covers the ...
This paper presents a complete system for shot and scene detection in broadcast videos, as well as a...
In this paper, we propose a new method to model the temporal context for boosting video annotation a...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
In this paper we propose a temporal segmentation and a keyframe selection method for User-Generated ...
This paper presents an algorithm for the temporal segmentation of user-generated videos into visuall...
This paper presents an algorithm for the temporal segmentation of user-generated videos into visuall...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
In this report, the analysis and design of a system that extracts keyframes from videos is detailed....
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
The extensive amount of media coverage today, generates difficulties in identifying and selecting de...
Video segmentation research is currently limited by the lack of a benchmark dataset that covers the ...
This paper presents a complete system for shot and scene detection in broadcast videos, as well as a...
In this paper, we propose a new method to model the temporal context for boosting video annotation a...