ABSTRACT
Video shot boundary detection has been an area of active research in recent years. It plays major role in digital video analysis domain: video compression, video indexing, video content based retrieval, video scene detection and video object tracking. This paper approaches the video cut transition detection based on the block wise histogram differences of the dominant color features in the HSV color space. Most of the cut identification techniques uses a thresholding operation to discriminate between the inter frame difference metrics values and thus identify the video breakpoints. An automatic threshold calculation algorithm is used for cut identification process. Experimental results show that the proposed method gives better results than the existing methods.
- Tudor Barbu., 2009. A novel automatic video cut detection techniques using Gabor filtering. Computer and Electrical Engineering, 712--721. Google ScholarDigital Library
- Hun-Woo Yoo, Han-Jin Ryoo, and Dong-Sik Jang. 2006. Gradual shot boundary detection using localized edge blocks. Multimedia Tools and Applications, 283--300. Google ScholarDigital Library
- Boreczky, J. S., and Rowe, L. A., 1996. Comparison of video shot boundary detection techniques, Storage and retrieval for still image and video databases IV. In Proceedings of the SPIE 2670,(San Jose, CA, USA), 170--179.Google Scholar
- Gargi, U., Kasturi, and Strayer, S. H., 2000. Performance characterization of video shot change detection methods, IEEE Trans. on Circuits and Systems for Video Technology, CSVT-10(1), 1--13. Google ScholarDigital Library
- Rainer Lienhart, 1999. Comparison of automatic shot boundary detection algorithm, Image and video processing VII, In Proceedings of SPIE, 3656--3629.Google Scholar
- Zabih, R., Miller, J., and Mai, K., 1995. A feature based algorithm for detecting and classifying scene breaks. ACM Multimedia 95, San Fransisco, CA, 189--200. Google ScholarDigital Library
- Weigang Zhang, et. al., 2006. Video Shot Detection Using Hidden Markov Models with Complementary Features. In Proceedings of the First International Conference on Innovative Computing, Information and Control. Vol.3, http://doi.ieeecomputersociety.org/10.1109/ICICIC.2006.549 Google ScholarDigital Library
- Yoshihiko Kawai, Hideki Sumiyoshi and Nobuyuki Yagi, 2007. Shot Boundary Detection at TRECVID 2007.Google Scholar
- Linda G. Shapiro, George C. Stockman, 2001. Computer Vision, Prentice-Hall, ISBN: 0-13-0307-963. Google ScholarDigital Library
- Vadivel, A., Mohan. M., Shamik Sural, and Majumdar, A. K. 2005. Object level frame comparison for video shot boundary detection. In Proceedings of the IEEE workshop on motion and video computing, 235--240. Google ScholarDigital Library
- Dengsheng Zhang abd Guojun Lu., (2003), Evaluation of similarity measurement for image retrieval IEEE Int. Conf. Neural Networks & Signal Processing, pp.14--17.Google Scholar
- Lu, H., and Tan, Y., 2005. An effective post-refinement method for shot boundary detection, IEEE Trans. Circuits Syst. Video Technol. 15(11), 1407--1421. Google ScholarDigital Library
- G. G. Lakshmi Priya, S. Domnic, 2010. Video cut detection using block based histogram differences in RGB color space. (Accepted in ICSIP2010).Google Scholar
- TRECVID Dataset website: http://trecvid.nist.gov/ and public Video Dataset: www.open-video.org.Google Scholar
Index Terms
- Video cut detection using dominant color features
Recommendations
Skin color enhancement based on favorite skin color in HSV color space
Skin color enhancement based on favorite skin color is proposed to make skin color displayed on large screen flat panel TVs agree with human favorite skin color. A robust skin detection method in different intensity is obtained after analyzing the ...
Advanced Color Images Enhancement Using Wavelet and K-means Clustering
IIH-MSP '09: Proceedings of the 2009 Fifth International Conference on Intelligent Information Hiding and Multimedia Signal ProcessingIn this paper, we are proposing a new method of enhancing contrast of color images based on human visual system. In this method we convert the RGB (Red, Green, and Blue) values of each pixel of any segment of the original image to HSV (Hue, Saturation, ...
An Efficient Innovative Approach Towards Color Image Enhancement
Image Enhancement works as a first mandatory criteria for an efficient image analysis task. Removing noises and managing the contrast are the two major tasks that need to be accomplished in an image enhancement process. In this article, an innovative ...
Comments