posted on 2006-01-01, 00:00authored byPatrick Pakyan Choi, Martial Hebert
This paper presents an approach to predict future motion of a moving object based
on its past movement. This approach is capable of learning object movement in an
open environment, which is one of the limitions in some prior works. The proposed
approach exploits the similarities of short-term movement behaviors by modeling a
trajectory as concatenation of short segments. These short segments are assumed to
be noisy realizations of latent segments. The transitions between the underlying latent
segments are assumed to follow a Markov model. This predictive model was applied
to two real-world applications and yielded favorable performance on both tasks.