Title :
Joint Sparsity-Based Representation and Analysis of Unconstrained Activities
Author :
Gopalan, Raghavan
Author_Institution :
Video & Multimedia Technol. Res. Dept., AT&T Labs.-Res., Middletown, NJ, USA
Abstract :
While the notion of joint sparsity in understanding common and innovative components of a multi-receiver signal ensemble has been well studied, we investigate the utility of such joint sparse models in representing information contained in a single video signal. By decomposing the content of a video sequence into that observed by multiple spatially and/or temporally distributed receivers, we first recover a collection of common and innovative components pertaining to individual videos. We then present modeling strategies based on subspace-driven manifold metrics to characterize patterns among these components, across other videos in the system, to perform subsequent video analysis. We demonstrate the efficacy of our approach for activity classification and clustering by reporting competitive results on standard datasets such as, HMDB, UCF-50, Olympic Sports and KTH.
Keywords :
image classification; image representation; image sequences; video signal processing; HMDB; KTH; UCF-50; activity classification; activity clustering; common components; distributed receivers; innovative components; joint sparse models; joint sparsity-based representation; modeling strategy; multireceiver signal ensemble; olympic sports; single video signal; standard datasets; subspace-driven manifold metrics; unconstrained activity; video analysis; video sequence; Analytical models; Feature extraction; Joints; Manifolds; Technological innovation; Training; YouTube;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.353