Identifying players in broadcast sports videos using conditional random fields

Computer Vision and Pattern Recognition(2011)

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摘要
We are interested in the problem of automatic tracking and identification of players in broadcast sport videos shot with a moving camera from a medium distance. While there are many good tracking systems, there are fewer methods that can identify the tracked players. Player identification is challenging in such videos due to blurry facial features (due to fast camera motion and low-resolution) and rarely visible jersey numbers (which, when visible, are deformed due to player movements). We introduce a new system consisting of three components: a robust tracking system, a robust person identification system, and a conditional random field (CRF) model that can perform joint probabilistic inference about the player identities. The resulting system is able to achieve a player recognition accuracy up to 85% on unlabeled NBA basketball clips.
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关键词
player movement,video signal processing,moving camera,player identity,face recognition,random processes,player identification,automatic tracking,image resolution,player recognition accuracy,blurry facial features,identifying player,unlabeled nba basketball clips,robust tracking system,resulting system,conditional random field model,sport,sport video broadcasting,feature extraction,low resolution images,conditional random field,tracking,new system,tracked player,broadcast sports video,joint probabilistic inference,good tracking system,robust person identification system,player recognition,fast camera motion,low resolution,visualization,detectors,tracking system
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