A novel approach to video copy detection using audio fingerprints and PCA
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Date
2011
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier B.V.
Abstract
In Content-Based Copy detection (CBCD) literature, numerous state-of-the-art techniques are primarily focusing on visual content of video. Exploiting audio fingerprints for CBCD problem is necessary, because of following rea-sons: audio content constitutes an indispensable information source; transformations on audio content is limited compared to visual content. In this paper, a novel CBCD approach using audio features and PCA is proposed, which includes two stages: first, multiple feature vectors are computed by utilizing MFCC and four spectral descriptors; second, features are further processed using PCA, to provide compact feature description. The results of experiments tested on TRECVID-2007 dataset, demonstrate the efficiency of proposed method against various transformations. © 2011 Published by Elsevier Ltd.
Description
Keywords
Audio fingerprints, Content-based video copy detection, MFCC, PCA, Spectral Descriptors
Citation
Procedia Computer Science, 2011, Vol.5, , p. 149-156
