Sciweavers

MMM
2012
Springer

Content-Based Video Description for Automatic Video Genre Categorization

12 years 7 months ago
Content-Based Video Description for Automatic Video Genre Categorization
In this paper, we propose an audio-visual approach to video genre categorization. Audio information is extracted at block-level, which has the advantage of capturing local temporal information. At temporal structural level, we asses action contents with respect to human perception. Further, color perception is quantified with statistics of color distribution, elementary hues, color properties and relationship of color. The last category of descriptors determines statistics of contour geometry. An extensive evaluation of this multi-modal approach based on on more than 91 hours of video footage is presented. We obtain average precision and recall ratios within [87% − 100%] and [77% − 100%], respectively, while average correct classification is up to 97%. Additionally, movies displayed according to feature-based coordinates in a virtual 3D browsing environment tend to regroup with respect to genre, which has potential application with real content-based browsing systems.
Bogdan Ionescu, Klaus Seyerlehner, Christoph Rasch
Added 25 Apr 2012
Updated 25 Apr 2012
Type Journal
Year 2012
Where MMM
Authors Bogdan Ionescu, Klaus Seyerlehner, Christoph Rasche, Constantin Vertan, Patrick Lambert
Comments (0)