DocumentCode
1269381
Title
Adaptive Subspace Symbolization for Content-Based Video Detection
Author
Zhou, Xiangmin ; Zhou, Xiaofang ; Chen, Lei ; Shu, Yanfeng ; Bouguettaya, Athman ; Taylor, John A.
Author_Institution
CSIRO ICT Centre, Canberra, ACT, Australia
Volume
22
Issue
10
fYear
2010
Firstpage
1372
Lastpage
1387
Abstract
Efficiently and effectively identifying similar videos is an important and nontrivial problem in content-based video retrieval. This paper proposes a subspace symbolization approach, namely SUDS, for content-based retrieval on very large video databases. The novelty of SUDS is that it explores the data distribution in subspaces to build a visual dictionary with which the videos are processed by deriving the string matching techniques with two-step data simplification. Specifically, we first propose an adaptive approach, called VLP, to extract a series of dominant subspaces of variable lengths from the whole visual feature space without the constraint of dimension consecutiveness. A stable visual dictionary is built by clustering the video keyframes over each dominant subspace. A compact video representation model is developed by transforming each keyframe into a word that is a series of symbols in the dominant subspaces, and further each video into a series of words. Then, we present an innovative similarity measure called CVE, which adopts a complementary information compensation scheme based on the visual features and sequence context of videos. Finally, an efficient two-layered index strategy with a number of query optimizations is proposed to facilitate video retrieval. The experimental results demonstrate the high effectiveness and efficiency of SUDS.
Keywords
content-based retrieval; query processing; set theory; string matching; video databases; video retrieval; CVE; SUDS; VLP; adaptive subspace symbolization; compact video representation model; complementary information compensation scheme; content based video detection; data distribution; nontrivial problem; query optimization; string matching technique; two step data simplification; video database; video processing; visual feature space; Australia; Content based retrieval; Data mining; Dictionaries; Information retrieval; Query processing; Search engines; Spatial databases; Video compression; Visual databases; Video detection; query optimization.; subspace symbolization; variable length partition;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2009.171
Filename
5184840
Link To Document