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IEEEMSP
2002
IEEE

Summarizing video using non-negative similarity matrix factorization

13 years 9 months ago
Summarizing video using non-negative similarity matrix factorization
Abstract— We present a novel approach to automatically extracting summary excerpts from audio and video. Our approach is to maximize the average similarity between the excerpt and the source. We first calculate a similarity matrix by comparing each pair of time samples using a quantitative similarity measure. To determine the segment with highest average similarity, we maximize the summation of the self-similarity matrix over the support of the segment. To select multiple excerpts while avoiding redundancy, we compute the non-negative matrix factorization (NMF) of the similarity matrix into its essential structural components. We then build a summary comprised of excerpts from the main components, selecting the excerpts for maximum average similarity within each component. Variations integrating segmentation and other information are also discussed, and experimental results are presented.
Matthew L. Cooper, Jonathan Foote
Added 15 Jul 2010
Updated 15 Jul 2010
Type Conference
Year 2002
Where IEEEMSP
Authors Matthew L. Cooper, Jonathan Foote
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