In this paper, a method for detecting infringements or modifications of a video in real-time is proposed. The method first segments a video stream into shots, after which it extracts some reference frames as keyframes. This process is performed employing a Singular Value Decomposition (SVD) technique developed in this work. Next, for each input video (represented by its keyframes), ordinal-based signature and SIFT (Scale Invariant Feature Transform) descriptors are generated. The ordinal-based method employs a two-level bitmap indexing scheme to construct the index for each video signature. The first level clusters all input keyframes into k clusters while the second level converts the ordinal-based signatures into bitmap vectors. On the other hand, the SIFT-based method directly uses the descriptors as the index. Given a suspect video (being streamed or transferred on the Internet), we generate the signature (ordinal and SIFT descriptors) then we compute similarity between its signature and those signatures in the database based on ordinal signature and SIFT descriptors separately. For similarity measure, besides the Euclidean distance, Boolean operators are also utilized during the matching process. We have tested our system by performing several experiments on 50 videos (each about 1/2 hour in duration) obtained from the TRECVID 2006 data set. For experiments set up, we refer to the conditions provided by TRECVID 2009 on "Content-based copy detection" task. In addition, we also refer to the requirements issued in the call for proposals by MPEG standard on the similar task. Initial result shows that our framework is effective and robust. As compared to our previous work, on top of the achievement we obtained by reducing the storage space and time taken in the ordinal based method, by introducing the SIFT features, we could achieve an overall accuracy in F1 measure of about 96% (improved about 8%).
[1]
J. A. Hartigan,et al.
A k-means clustering algorithm
,
1979
.
[2]
Ruud M. Bolle,et al.
Comparison of sequence matching techniques for video copy detection
,
2001,
IS&T/SPIE Electronic Imaging.
[3]
Chong-Wah Ngo,et al.
Columbia University/VIREO-CityU/IRIT TRECVID2008 High-Level Feature Extraction and Interactive Video Search
,
2008,
TRECVID.
[4]
Milind R. Naphade,et al.
Novel scheme for fast and efficent video sequence matching using compact signatures
,
1999,
Electronic Imaging.
[5]
Lekha Chaisorn,et al.
A simplified ordinal-based method for video signature
,
2009,
2009 7th International Conference on Information, Communications and Signal Processing (ICICS).
[6]
Xian-Sheng Hua,et al.
Robust video signature based on ordinal measure
,
2004,
2004 International Conference on Image Processing, 2004. ICIP '04..
[7]
Matthijs C. Dorst.
Distinctive Image Features from Scale-Invariant Keypoints
,
2011
.
[8]
Olivier Buisson,et al.
Content-Based Copy Retrieval Using Distortion-Based Probabilistic Similarity Search
,
2007,
IEEE Transactions on Multimedia.
[9]
Cordelia Schmid,et al.
INRIA-LEAR'S Video Copy Detection System
,
2008,
TRECVID.
[10]
Sheng Tang,et al.
TRECVID 2007 Search Tasks by NUS-ICT
,
2007,
TRECVID.
[11]
Li Chen,et al.
Video copy detection: a comparative study
,
2007,
CIVR '07.
[12]
Fred Stentiford,et al.
Video sequence matching based on temporal ordinal measurement
,
2008,
Pattern Recognit. Lett..
[13]
Rakesh Mohan,et al.
Video sequence matching
,
1998,
Proceedings of the 1998 IEEE International Conference on Acoustics, Speech and Signal Processing, ICASSP '98 (Cat. No.98CH36181).