Video Understanding and Content-Based Retrieval

This year, the joint team of UCF and the University of Mod-ena has participated in the following tasks: (1) shot bound-ary detection, (2) low-level feature extraction, (3) high-levelfeature extraction, (4) topic search and (5) BBC rushes man-agement. The shot boundary detection was contributed bythe Image Lab at the University of Modena. The other taskswere performed by the Computer Vision Team at UCF.

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