CONDENSATION - conditional density propagation for visual tracking (1998)
| Venue: | International Journal of Computer Vision |
| Citations: | 911 - 12 self |
BibTeX
@ARTICLE{Isard98condensation-,
author = {Michael Isard and Andrew Blake},
title = {CONDENSATION - conditional density propagation for visual tracking},
journal = {International Journal of Computer Vision},
year = {1998},
volume = {29},
pages = {5--28}
}
Years of Citing Articles
OpenURL
Abstract
The problem of tracking curves in dense visual clutter is challenging. Kalman filtering is inadequate because it is based on Gaussian densities which, being unimodal, cannot represent simultaneous alternative hypotheses. The Condensation algorithm uses "factored sampling", previously applied to the interpretation of static images, in which the probability distribution of possible interpretations is represented by a randomly generated set. Condensation uses learned dynamical models, together with visual observations, to propagate the random set over time. The result is highly robust tracking of agile motion. Notwithstanding the use of stochastic methods, the algorithm runs in near real-time. Contents 1 Tracking curves in clutter 2 2 Discrete-time propagation of state density 3 3 Factored sampling 6 4 The Condensation algorithm 8 5 Stochastic dynamical models for curve motion 10 6 Observation model 13 7 Applying the Condensation algorithm to video-streams 17 8 Conclusions 26 A Non-line...







