Shot Clustering Using Background Information
نویسندگان
چکیده
Reflecting the increasing importance of handling multimedia data, many studies are made on indexing to TV broadcast video. Following this trend, we recognize the importance of cooking programs and trying to analyze and index them. In this paper, we propose the shot clustering method using background information, which is one of the most important elemental techniques for indexing to cooking videos. In this method, first, the background region of videos are extracted which is common to many cooking programs. And next, shots are clustered based on color information of “the common background region”. In this paper, results of evaluation experiments are introduced and the effectiveness of our method is shown.
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