Video Mining for Creative Rendering
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 33093
Video Mining for Creative Rendering

Authors: Mei Chen

Abstract:

More and more home videos are being generated with the ever growing popularity of digital cameras and camcorders. For many home videos, a photo rendering, whether capturing a moment or a scene within the video, provides a complementary representation to the video. In this paper, a video motion mining framework for creative rendering is presented. The user-s capture intent is derived by analyzing video motions, and respective metadata is generated for each capture type. The metadata can be used in a number of applications, such as creating video thumbnail, generating panorama posters, and producing slideshows of video.

Keywords: Motion mining, semantic abstraction, video mining, video representation.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1328466

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1648

References:


[1] J. Bergen, P. Anandan, and K. Hanna, "Hierarchical model-based motion estimation", ECCV, 1992.J. Park, N. Yagi, K. Enami, K. Aizawa, and M. Hatori, "Estimatino of camera parameters from image sequence for model based video coding", IEEE Trans. On Circuit and System for Video Technology. Vol. 4, No. 3, June 1994.
[2] R. L. Rardin, Optimization in Operations Research, Prentice Hall, 1998, ISBN: 0023984155.
[3] M. Chen, "Dynamic Content adaptive super-resolution", Int. Conf. Image Analysis and Recognition, Sept. 2003.
[4] (Polana92) Ramprasad Polana and Randal C. Nelson, Recognition of Motion from Temporal Texture, Proc. IEEE Conference on Computer Vision and Pattern Recognition, Champaign, Illinois, June 1992, 129- 134.
[5] (Kim97) Eung Tae Kim, Jong Ki Han, Hyung-Myung Kim, "A Kalmanfiltering method for 3D camera motion estimation from image sequences," Proceedings of ICIP 97, vol. 3, pp. 630-633, Oct. 1997.