User-generated video content has grown tremendously fast to the point of outpacing professional content creation. In this work we develop methods that analyze contextual information of multiple user-generated videos in order to obtain semantic information about public happenings (e.g., sport and live music events) being recorded in these videos. One of the key contributions of this work is a joint utilization of different data modalities, including such captured by auxiliary sensors during the video recording performed by each user. In particular, we analyze GPS data, magnetometer data, accelerometer data, video- and audio-content data. We use these data modalities to infer information about the event being recorded, in terms of layout (e.g...
Detecting semantic events in sports video is crucial for video indexing and retrieval. Most existing...
There has been a huge increase in the utilization of video as one of the most preferred type of medi...
This paper presents intermodal collaboration: a strategy for semantic content analysis for broadcast...
Nowadays most camera-enabled electronic devices contain various auxiliary sensors such as accelerome...
Summary. As digital video data becomes more and more pervasive, the issue of mining information from...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
Research Doctorate - Doctor of Philosophy (PhD)This thesis investigates the problem of seeking multi...
In this paper, we present a novel multi-modal framework for se-mantic event extraction from basketba...
This thesis proposes solutions for content-based sports video analysis, including multi-modal featur...
Content characterization of sport videos is a subject of great interest to researchers working on th...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
Detecting semantic events in sports video is crucial for video indexing and retrieval. Most existing...
There has been a huge increase in the utilization of video as one of the most preferred type of medi...
This paper presents intermodal collaboration: a strategy for semantic content analysis for broadcast...
Nowadays most camera-enabled electronic devices contain various auxiliary sensors such as accelerome...
Summary. As digital video data becomes more and more pervasive, the issue of mining information from...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
Research Doctorate - Doctor of Philosophy (PhD)This thesis investigates the problem of seeking multi...
In this paper, we present a novel multi-modal framework for se-mantic event extraction from basketba...
This thesis proposes solutions for content-based sports video analysis, including multi-modal featur...
Content characterization of sport videos is a subject of great interest to researchers working on th...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
This chapter is a case study showing how important events (highlights) can be automatically detected...
Due to the availability of online repositories, such as YouTube and social networking sites, there h...
Detecting semantic events in sports video is crucial for video indexing and retrieval. Most existing...
There has been a huge increase in the utilization of video as one of the most preferred type of medi...
This paper presents intermodal collaboration: a strategy for semantic content analysis for broadcast...