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Key Frame Extraction Using Unsupervised Clustering Based on a Statistical Model 被引量:5

Key Frame Extraction Using Unsupervised Clustering Based on a Statistical Model
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摘要 This paper proposes a novel algorithm for extracting key frames to represent video shots. Re- garding whether, or how well, a key frame represents a shot, different interpretations have been suggested. We develop our algorithm on the assumption that more important content may demand more attention and may last relatively more frames. Unsupervised clustering is used to divide the frames into clusters within a shot, and then a key frame is selected from each candidate cluster. To make the algorithm independent of video sequences, we employ a statistical model to calculate the clustering threshold. The proposed algo- rithm can capture the important yet salient content as the key frame. Its robustness and adaptability are validated by experiments with various kinds of video sequences. This paper proposes a novel algorithm for extracting key frames to represent video shots. Re- garding whether, or how well, a key frame represents a shot, different interpretations have been suggested. We develop our algorithm on the assumption that more important content may demand more attention and may last relatively more frames. Unsupervised clustering is used to divide the frames into clusters within a shot, and then a key frame is selected from each candidate cluster. To make the algorithm independent of video sequences, we employ a statistical model to calculate the clustering threshold. The proposed algo- rithm can capture the important yet salient content as the key frame. Its robustness and adaptability are validated by experiments with various kinds of video sequences.
出处 《Tsinghua Science and Technology》 SCIE EI CAS 2005年第2期169-173,共5页 清华大学学报(自然科学版(英文版)
基金 Supported by the National Natural Science Foundation of China(No. 60072009)
关键词 key frame video retrieval motion compensation key frame video retrieval motion compensation
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  • 1Philippe Aigrain,Hongjiang Zhang,Dragutin Petkovic.Content-based representation and retrieval of visual media: A state-of-the-art review[J].Multimedia Tools and Applications.1996(3)

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