Sixth International Conference on Computer Vision (ICCV'98)
A Mixed-State Condensation Tracker with Automatic Model-Switching
Bombay, India
January 04-January 07
ISBN: 81-7319-221-9
There is considerable interest in the computer vision community in representing and modelling motion. Motion models are use d as predictors to increase the robustness and accuracy of visual trackers, and as classifiers for gesture recognition. This paper presents a significant development of random sampling methods to allow automatic switching between multiple motion models as a natural extension of the tracking process. The Bayesian mixed-state framework is described in its generality, and the example of a bouncing ball is used to demonstrate that a mixed-state model can significantly improve tracking performance in heavy clutter. The relevance of the approach to the problem of gesture recognition is then investigated using a tracker which is able to follow the natural drawing action of a hand holding a pen, and switches state according to the hand's motion.
Citation:
Michael Isard, Andrew Blake, "A Mixed-State Condensation Tracker with Automatic Model-Switching," iccv, pp.107, Sixth International Conference on Computer Vision (ICCV'98), 1998
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