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Neural Networks, Semantic Web Technologies and Multimedia Analysis (Special Session)

Classified Ranking of Semantic Content Filtered Output Using Self-organizing Neural Networks

Marios AngelidesContact Information, Anastasis SofokleousContact Information and Minaz ParmarContact Information

(1)  Brunel University, Uxbridge, London, UK
Abstract
Cosmos-7 is an application that can create and filter MPEG-7 semantic content models with regards to objects and events, both spatially and temporally. The results are presented as numerous video segments that are all relevant to the user’s consumption criteria. These results are not ranked to the user’s ranking of relevancy, which means the user must now laboriously sift through them. Using self organizing networks we rank the segments to the user’s preferences by applying the knowledge gained from similar users’ experience and use content similarity for new segments to derive a relative ranking.

Contact Information Marios Angelides
Email: marios.angelides@brunel.ac.uk

Contact Information Anastasis Sofokleous
Email: anastasis.sofokleous@brunel.ac.uk

Contact Information Minaz Parmar
Email: minaz.parmar@brunel.ac.uk
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