4.6 Article

Summarizing video sequence using a graph-based hierarchical approach

期刊

NEUROCOMPUTING
卷 173, 期 -, 页码 1001-1016

出版社

ELSEVIER
DOI: 10.1016/j.neucom.2015.08.057

关键词

Graph-based hierarchical video summarization; Covering; Global descriptors; Observation scales

资金

  1. PUC Minas (Pontificia Universidade Catolica de Minas Gerais)
  2. MIC BH (Microsoft Innovation Center Belo Horizonte)
  3. CNPq
  4. Capes
  5. FAPEMIG

向作者/读者索取更多资源

Video summarization is a simplification of video content for compacting the video information. The video summarization problem can be transformed into a clustering problem, in which some frames are selected to saliently represent the video content. In this work, we use a graph-based hierarchical clustering method for computing a video summary. In fact, the proposed approach, called HSUMM, adopts a hierarchical clustering method to generate a weight map from the frame similarity graph in which the clusters (or connected components of the graph) can easily be inferred. Moreover, the use of this strategy allows the application of a similarity measure between clusters during graph partition, instead of considering only the similarity between isolated frames. We also provide a unified framework for video summarization based on minimum spanning tree and weight maps in which HSUMM could be seen as an instance that uses a minimum spanning tree of frames and a weight map based on hierarchical observation scales computed over that tree. Furthermore, a new evaluation measure that assesses the diversity of opinions among users when they produce a summary for the same video, called Covering, is also proposed. During tests, different strategies for the identification of summary size and for the selection of keyframes were analyzed. Experimental results provide quantitative and qualitative comparison between the new approach and other popular algorithms from the literature, showing that the new algorithm is robust. Concerning quality measures, HSUMM outperforms the compared methods regardless of the visual feature used in terms of F-measure. (C) 2015 Elsevier B.V. All rights reserved.

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