Title :
Unifying probabilistic and variational estimation
Author :
Hamza, A. Ben ; Krim, Hamid ; Unal, Gozde B.
fDate :
9/1/2002 12:00:00 AM
Abstract :
A maximum a posteriori (MAP) estimator using a Markov or a maximum entropy random field model for a prior distribution may be viewed as a minimizer of a variational problem.Using notions from robust statistics, a variational filter referred to as a Huber gradient descent flow is proposed. It is a result of optimizing a Huber functional subject to some noise constraints and takes a hybrid form of a total variation diffusion for large gradient magnitudes and of a linear diffusion for small gradient magnitudes. Using the gained insight, and as a further extension, we propose an information-theoretic gradient descent flow which is a result of minimizing a functional that is a hybrid between a negentropy variational integral and a total variation. Illustrating examples demonstrate a much improved performance of the approach in the presence of Gaussian and heavy tailed noise. In this article, we present a variational approach to MAP estimation with a more qualitative and tutorial emphasis. The key idea behind this approach is to use geometric insight in helping construct regularizing functionals and avoiding a subjective choice of a prior in MAP estimation. Using tools from robust statistics and information theory, we show that we can extend this strategy and develop two gradient descent flows for image denoising with a demonstrated performance.
Keywords :
Gaussian noise; digital filters; entropy; functional analysis; gradient methods; image enhancement; maximum likelihood estimation; variational techniques; Gaussian noise; Huber functional; Huber gradient descent flow; MAP estimation; gradient descent flows; heavy tailed noise; image denoising; information theory; information-theoretic gradient descent flow; large gradient magnitudes; linear diffusion; negentropy variational integral; noise constraints; regularizing functionals; robust statistics; variational approach; variational estimation; variational filter; Additive noise; Bayesian methods; Degradation; Entropy; Gaussian noise; Image denoising; Image restoration; Laplace equations; Power system reliability; Signal processing;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2002.1028351