Authors
Shiyang Lu, Zhiyong Wang, Tao Mei, Genliang Guan, David Dagan Feng
Publication date
2014/4/23
Journal
IEEE Transactions on Multimedia
Volume
16
Issue
6
Pages
1497-1509
Publisher
IEEE
Description
Video summarization helps users obtain quick comprehension of video content. Recently, some studies have utilized local features to represent each video frame and formulate video summarization as a coverage problem of local features. However, the importance of individual local features has not been exploited. In this paper, we propose a novel Bag-of-Importance (BoI) model for static video summarization by identifying the frames with important local features as keyframes, which is one of the first studies formulating video summarization at local feature level, instead of at global feature level. That is, by representing each frame with local features, a video is characterized with a bag of local features weighted with individual importance scores and the frames with more important local features are more representative, where the representativeness of each frame is the aggregation of the weighted importance of the …
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