Title :
Kullback proximal algorithms for maximum-likelihood estimation
Author :
Chrétien, Stéphane ; Hero, Alfred O., III
Author_Institution :
Univ. Libre de Bruxelles, Belgium
fDate :
8/1/2000 12:00:00 AM
Abstract :
Accelerated algorithms for maximum-likelihood image reconstruction are essential for emerging applications such as three-dimensional (3-D) tomography, dynamic tomographic imaging, and other high-dimensional inverse problems. In this paper, we introduce and analyze a class of fast and stable sequential optimization methods for computing maximum-likelihood estimates and study its convergence properties. These methods are based on a proximal point algorithm implemented with the Kullback-Liebler (KL) divergence between posterior densities of the complete data as a proximal penalty function. When the proximal relaxation parameter is set to unity, one obtains the classical expectation-maximization (EM) algorithm. For a decreasing sequence of relaxation parameters, relaxed versions of EM are obtained which can have much faster asymptotic convergence without sacrifice of monotonicity. We present an implementation of the algorithm using More´s (1983) trust region update strategy. For illustration, the method is applied to a nonquadratic inverse problem with Poisson distributed data
Keywords :
Poisson distribution; computerised tomography; convergence of numerical methods; image reconstruction; inverse problems; maximum likelihood estimation; optimisation; 3D tomography; EM algorithm; Kullback proximal algorithms; Kullback-Liebler divergence; More´s trust region update strategy; Poisson distributed data; accelerated algorithms; asymptotic convergence; convergence properties; dynamic tomographic imaging; expectation-maximization algorithm; fast sequential optimization methods; high-dimensional inverse problems; maximum-likelihood estimates; maximum-likelihood estimation; maximum-likelihood image reconstruction; nonquadratic inverse problem; posterior densities; proximal penalty function; proximal relaxation parameter; stable sequential optimization methods; Acceleration; Convergence; Image reconstruction; Image restoration; Inverse problems; Iterative algorithms; Maximum likelihood estimation; Optimization methods; Statistical distributions; Tomography;
Journal_Title :
Information Theory, IEEE Transactions on