A system and method for object tracking using probabilistic mode-based multi-hypothesis
tracking (MHT) provides for robust and computationally efficient tracking of moving
objects such as heads and faces in complex environments. A mode-based multi-hypothesis
tracker uses modes that are local maximums which are refined from initial samples
in a parametric state space. Because the modes are highly representative, the mode-based
multi-hypothesis tracker effectively models non-linear probabilistic distributions
using a small number of hypotheses. Real-time tracking performance is achieved
by using a parametric causal contour model to refine initial contours to nearby
modes. In addition, one common drawback of conventional MHT schemes, i.e., producing
only maximum likelihood estimates instead of a desired posterior probability distribution,
is addressed by introducing an importance sampling framework into MHT, and estimating
the posterior probability distribution from the importance function.