A fast clustering algorithm for video abstraction

This paper introduces a useful property of the singular value decomposition (SVD) and uses it to quickly summarize a video sequence based on the visual similarities of its frames. In our method, a video is expressed as the representative frames extracted by a simple key-frame extraction algorithm applied in a sequential manner. Then those key-frames are put together with little redundancy using a clustering algorithm for video abstraction. In order to evaluate the proposed scheme, the speed of the commonly used k-means algorithm for clustering is compared with that of the proposed method that combines both the SVD and the k-means algorithm. Experimental results show that our algorithm is fast and effectively summarizes the content of a video with little redundancy.

[1]  SangKeun Lee,et al.  Real-time camera motion classification for content-based indexing and retrieval using templates , 2002, 2002 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[2]  Young-Min Kim,et al.  Fast Scene Change Detection using Direct Feature Extraction from MPEG Compressed Videos , 2000, IEEE Trans. Multim..

[3]  Stanley C. Ahalt,et al.  A hybrid DCT-SVD image-coding algorithm , 2002, IEEE Trans. Circuits Syst. Video Technol..

[4]  SangKeun Lee,et al.  Efficient scene segmentation for content-based indexing in the compressed domain , 2001, 2001 IEEE Fourth Workshop on Multimedia Signal Processing (Cat. No.01TH8564).

[5]  Minerva M. Yeung,et al.  Efficient matching and clustering of video shots , 1995, Proceedings., International Conference on Image Processing.

[6]  T. Landauer,et al.  Indexing by Latent Semantic Analysis , 1990 .

[7]  Yoshinobu Tonomura,et al.  Video browsing using brightness data , 1991, Other Conferences.

[8]  Boon-Lock Yeo,et al.  Rapid scene analysis on compressed video , 1995, IEEE Trans. Circuits Syst. Video Technol..

[9]  Gene H. Golub,et al.  Matrix computations , 1983 .