Mining Relationship Between Video Concepts using Probabilistic Graphical Models

  title={Mining Relationship Between Video Concepts using Probabilistic Graphical Models},
  author={Rong Yan and Ming-yu Chen and Alexander G. Hauptmann},
  journal={2006 IEEE International Conference on Multimedia and Expo},
For large scale automatic semantic video characterization, it is necessary to learn and model a large number of semantic concepts. These semantic concepts do not exist in isolation to each other and exploiting this relationship between multiple video concepts could be a useful source to improve the concept detection accuracy. In this paper, we describe various multi-concept relational learning approaches via a unified probabilistic graphical model representation and propose using numerous… CONTINUE READING
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