IJTEEE

International Journal of Technology Enhancements and Emerging Engineering Research

Home Contact Us
PUBLICATIONS



IJTEEE >> Volume 3 - Issue 5, May 2015 Edition



International Journal of Technology Enhancements and Emerging Engineering Research  
International Journal of Technology Enhancements and Emerging Engineering Research

Website: http://www.ijteee.org

ISSN 2347-4289



Review Of Video Synopsis Approaches

[Full Text]

 

AUTHOR(S)

Jeeshna P. V., Kuttimalu V. K.

 

KEYWORDS

Keywords: Video synopsis; Frame; Object; Action synopsis; Object Movement Synopsis

 

ABSTRACT

ABSTRACT: Video synopsis is the process of preserving key activities and eliminates the less important parts to create a short video summary of long original videos. These techniques are used for fast browsing, ectracting big data, effective storing and indexing. The video synopsis techniques are broadly classified into two types: object based approaches and frame based approaches. But these approaches cannot handle the complexity of the dynamic videos. In object movement method focus on the movements of a single video object, and remove the redundancies present in the object movement, it helps to generate the more compact and efficient video synopsis. Video synopsis is the most popular research in computer graphics and computer vision area and several researches started on this area. Naturally this is not a complete review of the entire video synopsis techniques. In this review focuses some of the video synopsis techniques.

 

REFERENCES

[1] J. L. J. Ouyang and Y. Zhang, “Replay boundary detection in mpeg compressed video,” Proc. Int’l Conf. Machine Learning and Cybernetics, vol. 5, pp. 2800-2804, 2003.

[2] J. F. T. Liu, X. Zhang and K. Lo, “Shot reconstruction degree: A novel criterion for key frame selection,” Pattern Recognition Let-ters, vol. 25, no. 12, pp. 1451-1457, 2004.

[3] A. R.-A. Y. Pritch and S. Peleg, “Nonchronological video synop-sis and indexing,” IEEE Trans. Pattern Analysis and Machine In-telligence, vol. 30, no. 11, pp. 1971-1984, Nov. 2008.

[4] H. S. Y. Nie, C. Xiao and P. Li, “Compact video synopsis via global spatiotemporal optimization,” IEEE Trans. Visualization and Computer Graphics, vol. 19, no. 10, pp. 1664-1676, Oct. 2013.

[5] Y. C. J. Assa and D. Cohen-Or, “Action synopsis: Pose selection and illustration,” ACM Trans. Graphics, vol. 24, no. 3, pp. 667- 676, 2005.

[6] P. L.-C. X. Yongwei Nie, Hanqiu Sun and K.-L. Ma, “Object movements synopsis via part assembling and stitching,” IEEE Trans. Visualization and Computer Graphics, vol. 20, no. 9, Sept 2014.

[7] D. S. A. Agarwala, A. Hertzmann and S. Seitz, “Keyframe- based tracking for rotoscoping and animation,” ACM Trans. Graphics, vol. 23, no. 3, pp. 584-591, 2004.

[8] C. R. X. T. K. He, C. Rhemann and J. Sun, “A global sampling method for alpha matting,” Proc. IEEE Conf. Computer Vision and Pattern Recognition (CVPR ’11), pp. 2049-2056, 2011.

[9] J. J. J. Sun, L. Yuan and H.-Y. Shum, “Image completion with structure propagation,” in ACM Trans. Graphics, vol. 24, no. 3, pp. 861-868, 2005.

[10] K. C. C. Shen, H. Fu and S. Hu, “Structure recovery by part as-sembly,” ACM Trans. Graphics, vol. 31, no. 6, p. 180, 2012..

[11] T. M. S. Schaefer and J. Warren, “Image deformation using moving least squares,” ACM Trans. Graphics, vol. 25, no. 3 pp. 533-540, 2006.

[12] C. Q. R.W. Zhou and G. Ng, “A novel single-pass thinning algo-rithm and an effective set of performance criteria,” Pattern Rec-ognition Letters, vol. 16, no. 12, pp. 1267-1275, 1995.

[13] S. R. D. Sun and M. Black, “Secrets of optical flow estimation and their principles,” Proc. IEEE Conf. Computer Vision and Pat-tern Recognition (CVPR ’10), pp. 2432-2439, 2010.

[14] T. M. S. Schaefer and J. Warren, “Image deformation using moving least squares,” ACM Trans. Graphics, vol. 25, no. 3 pp. 533-540, 2006.

[15] Y. P. A. Rav-Acha and S. Peleg, “Making a long video short: Dynamic video synopsis,” Proc. IEEE CS Conf. Computer Vision and Pattern Recognition, vol. 1, pp. 435-441, 2006.

[16] B. Truong and S. Venkatesh, “Video abstraction: A systematic review and classification,” ACM Trans. Multimedia Computing, Comm., and Applications, vol. 3, no. 1, p. 3, 2007.

[17] J. Wang and M. Cohen, “Image and video matting: A survey,” Now Pub, vol. 3, no. 2, 2008.

[18] R. W. Y. Nie, Q. Zhang and C. Xiao, “Video retargeting combining warping and summarizing optimization,” The Visual Computer, vol. 29, pp. 785-794, 2013.