DocumentCode
799388
Title
Hierarchical Modeling and Adaptive Clustering for Real-Time Summarization of Rush Videos
Author
Ren, Jinchang ; Jiang, Jianmin
Author_Institution
Digital Media & Syst. Inst., Univ. of Bradford, Bradford, UK
Volume
11
Issue
5
fYear
2009
Firstpage
906
Lastpage
917
Abstract
In this paper, we provide detailed descriptions of a proposed new algorithm for video summarization, which are also included in our submission to TRECVID´08 on BBC rush summarization. Firstly, rush videos are hierarchically modeled using the formal language technique. Secondly, shot detections are applied to introduce a new concept of V-unit for structuring videos in line with the hierarchical model, and thus junk frames within the model are effectively removed. Thirdly, adaptive clustering is employed to group shots into clusters to determine retakes for redundancy removal. Finally, each most representative shot selected from every cluster is ranked according to its length and sum of activity level for summarization. Competitive results have been achieved to prove the effectiveness and efficiency of our techniques, which are fully implemented in the compressed domain. Our work does not require high-level semantics such as object detection and speech/audio analysis which provides a more flexible and general solution for this topic.
Keywords
formal languages; image representation; object detection; pattern clustering; adaptive clustering; formal language technique; hierarchical modeling; object detection; rush video real-time summarization; shot detection; speech-audio analysis; still-image representation; Activity level; TRECVID; adaptive clustering; hierarchical modelling; video rushes summarization;
fLanguage
English
Journal_Title
Multimedia, IEEE Transactions on
Publisher
ieee
ISSN
1520-9210
Type
jour
DOI
10.1109/TMM.2009.2021782
Filename
4907069
Link To Document