An effective approach for video condensation by ribbon carving

 
 
 
  • Abstract
  • Keywords
  • References
  • PDF
  • Abstract


    The proposed system aims in developing a method to stream video based on time intervals. Regular or irregular sub-sampling is not sufficient for scaling of video in time. Seam carving has been used where an Image can be resized either by inserting or removing pixels. Ribbon carving is an extension of seam carving which resizes the video in temporal direction. The non-parametric kernel model used for background subtraction has been replaced with temporal median filter. It enhances the processing speed and memory allocation has been more efficient, thus reducing the time of video without loss of data.

     

     


  • Keywords


    Video digest, ribbon carving, seam carving, video summarization.

  • References


      [1] Konrad J, “Videopsy: Dissecting visual data in space-time”, IEEE Comm. Mag., Vol.45, No.1, (2007), pp.34–42.

      [2] Hampapur A, “Smart video surveillance for proactive security”, IEEE Signal Process. Mag., Vol.25, No.4, (2008), pp.136–134.

      [3] Tuzel O, Porikli F & Meer P, “Pedestrian detection via classification on Riemannian manifolds”, IEEE Trans. Pattern Anal. Machine Intell., Vol.30, No.10, (2008), pp.1713–1727.

      [4] Oh J, Wen Q, Lee J & Hwang S, Video abstraction. In Video Data Management and Information Retrieval, S. Deb, Ed. Hershey, PA: Idea Group Inc./IRM Press, (2004), pp.321–346.

      [5] Yeung M. & Yeo BL, “Video visualization for compact presentation and fast browsing of pictorial content”, IEEE Trans. Circuits Syst. Video Technol., Vol.7, No.5, (1997), pp.771–785.

      [6] Nam J & Tewfik A, “Video abstract of video”, IEEE Workshop on Multimedia Signal Proc., (1999), pp.117–122.

      [7] Petrovic N, Jojic N & Huang T, “Adaptive video fast forward”, Multimedia Tools Appl., Vol.26, No.3, (2005), pp.327–344.

      [8] Irani M, Anandan P, Bergen J, Kumar R & Hsu S, “Efficient representations of video sequences and their applications”, Signal Process., Image Commun., Vol.8, No.4, (1996), pp.327–351.

      [9] Rav-Acha A, Pritch Y & Peleg S, “Making a long video short: Dynamic video synopsis”, IEEE Conf. Computer Vision Pattern Recognition, (2006), pp.435–441.

      [10] Kang HW, Matsuhita Y, Tang X & Chen XQ, “Space-time video montage”, IEEE Conf. Computer Vision Pattern Recognition, (2006), pp.1331–1338.

      [11] Rav-Acha A, Pritch Y, Lischinski D & Peleg S, “Dynamos icing: Mosaicing of dynamic scenes”, IEEE Trans. Pattern Anal. Machine Intell., Vol.29, No.10, (2007), pp.1789–1801.

      [12] Pritch Y, Rav-Acha A & Peleg S, “Non-chronological video synopsis and indexing”, IEEE Trans. Pattern Anal. Machine Intell., Vol.30, No.11, (2008).

      [13] Avidan S & Shamir A, “Seam carving for content-aware image resizing”, ACM Trans. Graph., Vol.26, No.3, (2007).

      [14] Padmavathi M, Yong R & Yelena Y, “Key frame-based video summarization using Delaunay clustering”, International Journal on Digital Libraries, Vol.6, No.2, (2006), pp.219–232.


 

View

Download

Article ID: 12459
 
DOI: 10.14419/ijet.v7i2.21.12459




Copyright © 2012-2015 Science Publishing Corporation Inc. All rights reserved.