Title of article :
Multiresolution Gauss-Markov random field models for texture segmentation
Author/Authors :
Krishnamachari، نويسنده , , S.، نويسنده , , Chellappa، نويسنده , , R.
، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1997
Abstract :
This paper presents multiresolution models for
Gauss–Markov random fields (GMRF’s) with applications
to texture segmentation. Coarser resolution sample fields are
obtained by subsampling the sample field at fine resolution.
Although the Markov property is lost under such resolution
transformation, coarse resolution non-Markov random fields
can be effectively approximated by Markov fields. We present
two techniques to estimate the GMRF parameters at coarser
resolutions from the fine resolution parameters, one by
minimizing the Kullback–Leibler distance and another based on
local conditional distribution invariance. We also allude to the
fact that different GMRF parameters at the fine resolution can
result in the same probability measure after subsampling and
present the results for first- and second-order cases.
We apply this multiresolution model to texture segmentation.
Different texture regions in an image are modeled by GMRF’s
and the associated parameters are assumed to be known.
Parameters at lower resolutions are estimated from the fine
resolution parameters. The coarsest resolution data is first
segmented and the segmentation results are propagated upward
to the finer resolution. We use the iterated conditional mode
(ICM) minimization at all resolutions. Our experiments with
synthetic, Brodatz texture, and real satellite images show that the
multiresolution technique results in a better segmentation and
requires lesser computation than the single resolution algorithm.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING