A similarity measure between videos using alignment, graphical and speech features
Expert Systems with Applications, 2012•Elsevier
A novel video similarity measure is proposed by using visual features, alignment distances
and speech transcripts. First, video files are represented by a sequence of segments each of
which contains colour histograms, starting time, and a set of phonemes. After, textual,
alignment and visual features are extracted of these segments. The following step, bipartite
matching and statistical features are applied to find correspondences between segments.
Finally, a similarity is calculated between videos. Experiments have been carried out and …
and speech transcripts. First, video files are represented by a sequence of segments each of
which contains colour histograms, starting time, and a set of phonemes. After, textual,
alignment and visual features are extracted of these segments. The following step, bipartite
matching and statistical features are applied to find correspondences between segments.
Finally, a similarity is calculated between videos. Experiments have been carried out and …
A novel video similarity measure is proposed by using visual features, alignment distances and speech transcripts. First, video files are represented by a sequence of segments each of which contains colour histograms, starting time, and a set of phonemes. After, textual, alignment and visual features are extracted of these segments. The following step, bipartite matching and statistical features are applied to find correspondences between segments. Finally, a similarity is calculated between videos. Experiments have been carried out and promising results have been obtained.
Elsevier
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