Title of article :
Segmentation of textured images using a multiresolution Gaussian autoregressive model
Author/Authors :
Comer، نويسنده , , M.L.، نويسنده , , Delp، نويسنده , , E.J.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1999
Abstract :
We present a new algorithm for segmentation of
textured images using a multiresolution Bayesian approach. The
new algorithm uses a multiresolution Gaussian autoregressive
(MGAR) model for the pyramid representation of the observed
image, and assumes a multiscale Markov random field model
for the class label pyramid. Unlike previously proposed Bayesian
multiresolution segmentation approaches, which have either used
a single-resolution representation of the observed image or implicitly
assumed independence between different levels of a multiresolution
representation of the observed image, the models used
in this paper incorporate correlations between different levels of
both the observed image pyramid and the class label pyramid.
The criterion used for segmentation is the minimization of
the expected value of the number of misclassified nodes in the
multiresolution lattice. The estimate which satisfies this criterion
is referred to as the “multiresolution maximization of the posterior
marginals” (MMPM) estimate, and is a natural extension of
the single-resolution “maximization of the posterior marginals”
(MPM) estimate. Previous multiresolution segmentation techniques
have been based on the maximum a posteriori (MAP)
estimation criterion, which has been shown to be less appropriate
for segmentation than the MPM criterion.
It is assumed that the number of distinct textures in the observed
image is known. The parameters of the MGAR model—the
means, prediction coefficients, and prediction error variances
of the different textures—are unknown. A modified version of
the expectation-maximization (EM) algorithm is used to estimate
these parameters. The parameters of the Gibbs distribution for
the label pyramid are assumed to be known. Experimental results
demonstrating the performance of the algorithm are presented.
Keywords :
multiscale image analysis , texture segmentation. , image segmentation
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING