Title :
Real-Time Motion Trajectory-Based Indexing and Retrieval of Video Sequences
Author :
Bashir, Faisal I. ; Khokhar, Ashfaq A. ; Schonfeld, Dan
Author_Institution :
Mitsubishi Electr. Res. Labs, Cambridge, MA
Abstract :
This paper presents a novel motion trajectory-based compact indexing and efficient retrieval mechanism for video sequences. Assuming trajectory information is already available, we represent trajectories as temporal ordering of subtrajectories. This approach solves the problem of trajectory representation when only partial trajectory information is available due to occlusion. It is achieved by a hypothesis testing-based method applied to curvature data computed from trajectories. The subtrajectories are then represented by their principal component analysis (PCA) coefficients for optimally compact representation. Different techniques are integrated to index and retrieve subtrajectories, including PCA, spectral clustering, and string matching. We assume a query by example mechanism where an example trajectory is presented to the system and the search system returns a ranked list of most similar items in the dataset. Experiments based on datasets obtained from University of California at Irvine´s KDD archives and Columbia University´s DVMM group demonstrate the superiority of our proposed PCA-based approaches in terms of indexing and retrieval times and precision recall ratios, when compared to other techniques in the literature
Keywords :
database indexing; image sequences; motion estimation; pattern clustering; principal component analysis; string matching; video databases; video retrieval; PCA coefficients; curvature data; hypothesis testing-based method; principal component analysis; real-time motion trajectory-based indexing; real-time motion trajectory-based retrieval; spectral clustering; string matching; subtrajectory temporal ordering; video sequences; Handicapped aids; Humans; Indexing; Motion analysis; Principal component analysis; Robustness; Testing; Trajectory; Video sequences; Video surveillance; Principal component analysis; spectral clustering; string Matching; trajectory retrieval;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2006.886346