Title of article :
A General Framework for Nonlinear Multigrid Inversion
Author/Authors :
S. Oh، نويسنده , , A. B. Milstein، نويسنده , , C. A. Bouman، نويسنده , , and K. J. Webb، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
A variety of new imaging modalities, such as optical
diffusion tomography, require the inversion of a forward problem
that is modeled by the solution to a three-dimensional partial
differential equation. For these applications, image reconstruction
is particularly difficult because the forward problem is both
nonlinear and computationally expensive to evaluate. In this
paper, we propose a general framework for nonlinear multigrid
inversion that is applicable to a wide variety of inverse problems.
The multigrid inversion algorithm results from the application
of recursive multigrid techniques to the solution of optimization
problems arising from inverse problems. The method works by
dynamically adjusting the cost functionals at different scales so
that they are consistent with, and ultimately reduce, the finest scale
cost functional. In this way, the multigrid inversion algorithm
efficiently computes the solution to the desired fine-scale inversion
problem. Importantly, the new algorithm can greatly reduce
computation because both the forward and inverse problems are
more coarsely discretized at lower resolutions. An application of
our method to Bayesian optical diffusion tomography with a generalized
Gaussian Markov random-field image prior model shows
the potential for very large computational savings. Numerical data
also indicates robust convergence with a range of initialization
conditions for this nonconvex optimization problem.
Keywords :
inverse problems , Multiresolution , multigrid algorithms , optical diffusion tomography (ODT).
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING