Joint shot boundary detection and key frame extraction

ICPR(2012)

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摘要
Representing a video by a set of key frames is useful for efficient video browsing and retrieving. But key frame extraction keeps a challenge in the computer vision field. In this paper, we propose a joint framework to integrate both shot boundary detection and key frame extraction, wherein three probabilistic components are taken into account, i.e. the prior of the key frames, the conditional probability of shot boundaries and the conditional probability of each video frame. Thus the key frame extraction is treated as a Maximum A Posteriori which can be solved by adopting alternate strategy. Experimental results show that the proposed method preserves the scene level structure and extracts key frames that are representative and discriminative.
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关键词
video browsing,probabilistic components,computer vision field,key frame extraction,conditional probability,joint shot boundary detection,natural scenes,computer vision,scene level structure,video retrieval,maximum a posteriori,video frame,probability
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