Video Scene Segmentation with a Semantic Similarity

نویسندگان

  • Niraj Kumar
  • Piyush Rai
  • Chandrika Pulla
  • C. V. Jawahar
چکیده

Video Scene Segmentation is an important problem in computer vision as it helps in efficient storage, indexing and retrieval of videos. Significant amount of work has been done in this area in the form of shot segmentation techniques and they often give reasonably good results. However, shots are not of much importance for the semantic analysis of the videos. For semantic and meaningful analysis of the videos (e.g. movies), scene is more important since it captures one complete unit of action. People have tried different approaches in scene segmentation but almost all of them use color, texture etc. to compute scene boundaries. In this paper, we propose a new algorithm based on a Bag of Words(BoW) representation which computes semantic similarity between shots using a Bipartite Graph Model (BGM). Based on semantic similarity, we detect the scene boundaries in the movie. We have tested our algorithm on a multiple Hollywood movies, and the proposed method is found to give good results.

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تاریخ انتشار 2011