posted on 2003-01-01, 00:00authored bySanjiv Kumar, Martial Hebert
In this work we present Discriminative Random Fields
(DRFs), a discriminative framework for the classification of
image regions by incorporating neighborhood interactions
in the labels as well as the observed data. The discriminative
random fields offer several advantages over the conventional
Markov Random Field (MRF) framework. First,
the DRFs allow to relax the strong assumption of conditional
independence of the observed data generally used in
the MRF framework for tractability. This assumption is too
restrictive for a large number of applications in vision. Second,
the DRFs derive their classification power by exploiting
the probabilistic discriminative models instead of the
generative models used in the MRF framework. Finally, all
the parameters in the DRF model are estimated simultaneously
from the training data unlike the MRF framework
where likelihood parameters are usually learned separately
from the field parameters. We illustrate the advantages of
the DRFs over the MRF framework in an application of
man-made structure detection in natural images taken from the Corel database.