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Video Summarization Based on Multimodal Features

Author

Listed:
  • Yu Zhang

    (Shandong University, China)

  • Ju Liu

    (Shandong University, China)

  • Xiaoxi Liu

    (Shandong University, China)

  • Xuesong Gao

    (Hisense Group, China)

Abstract

In this manuscript, the authors present a keyshots-based supervised video summarization method, where feature fusion and LSTM networks are used for summarization. The framework can be divided into three folds: 1) The authors formulate video summarization as a sequence to sequence problem, which should predict the importance score of video content based on video feature sequence. 2) By simultaneously considering visual features and textual features, the authors present the deep fusion multimodal features and summarize videos based on recurrent encoder-decoder architecture with bi-directional LSTM. 3) Most importantly, in order to train the supervised video summarization framework, the authors adopt the number of users who decided to select current video clip in their final video summary as the importance scores and ground truth. Comparisons are performed with the state-of-the-art methods and different variants of FLSum and T-FLSum. The results of F-score and rank correlation coefficients on TVSum and SumMe shows the outstanding performance of the method proposed in this manuscript.

Suggested Citation

  • Yu Zhang & Ju Liu & Xiaoxi Liu & Xuesong Gao, 2020. "Video Summarization Based on Multimodal Features," International Journal of Multimedia Data Engineering and Management (IJMDEM), IGI Global, vol. 11(4), pages 60-76, October.
  • Handle: RePEc:igg:jmdem0:v:11:y:2020:i:4:p:60-76
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