Title :
Motion Patterns: High-Level Representation of Natural Video Sequences
Author :
Putthividhya, Duangmanee ; Lee, Te-Won
Author_Institution :
University of California, San Diego
Abstract :
This work investigates the use of nonlinear dependencies in natural image sequence statistics to learn higher-order structures in natural videos. We propose a two-layer model that learns variance correlation between linear ICA coefficients and present a novel nonlinear representation of natural videos. The first layer performs a linear mapping from pixel values to ICA coefficients. In doing so, the spatiotemporal dynamics in natural videos are decomposed into a set of bases each encoding "independent motion." By assuming that the nonlinear dependency of ICA coefficients takes the form of variance correlation, the second layer learns the joint distribution of ICA sources that captures how these independent bases co-activate. Experimental results show that the abstract representation correspond to various activation patterns of bases with similar motion, hence the term "motion patterns." Our model offers a novel description of higher-order structures in natural videos. We illustrate the usefulness of the proposed representation in video segmentation and denoising tasks.
Keywords :
Bars; Bayesian methods; Brain modeling; Encoding; Higher order statistics; Image sequences; Independent component analysis; Layout; Spatiotemporal phenomena; Video sequences;
Conference_Titel :
Computer Vision and Pattern Recognition, 2006 IEEE Computer Society Conference on
Print_ISBN :
0-7695-2597-0
DOI :
10.1109/CVPR.2006.191