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Automatic video scene extraction by shot grouping

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2 Author(s)
Tong Lin ; Nat. Lab. of Machine Perception, Beijing Univ., China ; Hong-Jiang Zhang

For more efficient organizing, browsing, and retrieving digital video content, it is important to extract video structure information at both scene and shot levels. The paper presents an effective approach to video scene segmentation based on a pseudo-object-based shot correlation analysis. A measure of the semantic correlation of consecutive shots based on dominant color grouping and tracking is proposed. A shot grouping method called expanding window is designed to cluster correlated consecutive shots into one scene. Evaluations based on real-world sports video programs validate the efficiency and effectiveness of our shot correlation measure and scene structure construction

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Pattern Recognition, 2000. Proceedings. 15th International Conference on  (Volume:4 )

Date of Conference: