Title of article :
ML parameter estimation for Markov random fields with applications to Bayesian tomography
Author/Authors :
Saquib، نويسنده , , S.S.، نويسنده , , Bouman، نويسنده , , C.A.، نويسنده , , Sauer، نويسنده , , K.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1998
Abstract :
Markov random fields (MRF’s) have been widely
used to model images in Bayesian frameworks for image reconstruction
and restoration. Typically, these MRF models have
parameters that allow the prior model to be adjusted for best
performance. However, optimal estimation of these parameters
(sometimes referred to as hyperparameters) is difficult in practice
for two reasons: i) direct parameter estimation for MRF’s is
known to be mathematically and numerically challenging; ii)
parameters can not be directly estimated because the true image
cross section is unavailable.
In this paper, we propose a computationally efficient scheme to
address both these difficulties for a general class of MRF models,
and we derive specific methods of parameter estimation for the
MRF model known as generalized Gaussian MRF (GGMRF).
The first section of the paper derives methods of direct estimation
of scale and shape parameters for a general continuously
valued MRF. For the GGMRF case, we show that the ML
estimate of the scale parameter, , has a simple closed-form
solution, and we present an efficient scheme for computing the
ML estimate of the shape parameter, p, by an off-line numerical
computation of the dependence of the partition function on p.
The second section of the paper presents a fast algorithm
for computing ML parameter estimates when the true image
is unavailable. To do this, we use the expectation maximization
(EM) algorithm. We develop a fast simulation method to replace
the E-step, and a method to improve parameter estimates when
the simulations are terminated prior to convergence.
Experimental results indicate that our fast algorithms substantially
reduce computation and result in good scale estimates for
real tomographic data sets.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING