posted on 2006-01-01, 00:00authored bySanjiv Kumar, Martial Hebert
In this research we address the problem of classification and labeling of regions given a
single static natural image. Natural images exhibit strong spatial dependencies, and modeling
these dependencies in a principled manner is crucial to achieve good classification accuracy.
In this work, we present Discriminative Random Fields (DRFs) to model spatial interactions
in images in a discriminative framework based on the concept of Conditional Random Fields
proposed by Lafferty et al (Lafferty et al., 2001). The DRFs classify image regions by incor-
porating neighborhood spatial interactions in the labels as well as the observed data. The
DRF framework offers 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 computer vision. Second, the DRFs
derive their classification power by exploiting the probabilistic discriminative models instead
of the generative models used for modeling observations in the MRF framework. Third, the
interaction in labels in DRFs is based on the idea of pairwise discrimination of the observed
data making it data-adaptive instead of being fixed a priori as in MRFs. Finally, all the
parameters in the DRF model are estimated simultaneously from the training data unlike
the MRF framework where the likelihood parameters are usually learned separately from the
field parameters. We present preliminary experiments with man-made structure detection and
binary image restoration tasks, and compare the DRF results with the MRF results.
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The original publication is available at www.springerlink.com