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Title P-VCD: A Pivot-Based Approach for Content-Based Video Copy Detection
Authors Juan Manuel Barrios, Benjamin Bustos
Publication date 2011
Abstract Content-Based Video Copy Detection (CBVCD) consists of detecting and
retrieving videos that are copies of known original videos. CBVCD systems
rely on two different tasks: Feature Extraction task, that calculates many
representative descriptors for a video sequence, and Similarity Search
task, that is the algorithm for finding videos in an indexed collection
that match a query video. This paper describes P-VCD, which is a novel
approach for CBVCD based on global descriptors, weighted combinations of
distances, a pivot-based index structure, an approximate similarity
search, and a voting algorithm for copy localization. P-VCD was tested at
the TRECVID 2010 evaluation, where it was the best positioned CBVCD system
for Balanced and No False Alarms profiles considering visual-only runs
(and above the median considering all runs). P-VCD shows that by using
approximate similarity searches one can obtain good effectiveness, and
that global descriptors can achieve competitive results with TRECVID
transformations.
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Conference name IEEE International Conference on Multimedia and Expo
Publisher IEEE Press (Piscataway, NJ, USA)
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