A novel particle filter, the Memory-based Particle Filter
(M-PF), is proposed that can visually track moving objects
that have complex dynamics. We aim to realize robustness
against abrupt object movements and quick recovery
from tracking failure caused by factors such as occlusions.
To that end, we eliminate the Markov assumption from the
previous particle filtering framework and predict the prior
distribution of the target state from the long-term dynamics.
More concretely, M-PF stores the past history of the
estimated target states, and employs a random sampling
from the history to generate prior distribution; it represents
a novel PF formulation.Our method can handle nonlinear,
time-variant, and non-Markov dynamics, which is not possible
within existing PF frameworks. Accurate prior prediction
based on proper dynamics model is especially effective
for recovering lost tracks, because it can provide
possible target states, which can drastically change since
the track...