A Wavelet-Based Statistical Model for Image Restoration

Date
2001-10-20
Journal Title
Journal ISSN
Volume Title
Publisher
Description
Conference Paper
Abstract

In this paper we develop a wavelet-based statistical method for solving the image restoration problem. In this approach, a signal prior is set up by modeling the image wavelet coefficients as independent Gaussian mixture random variables. We first specify a uniform (non-informative) distribution on the mixing parameters, which leads to a simple and efficient iterative algorithm for MAP estimation. This algorithm is similar to the EM algorithm in that it alternates between a state estimation step and a maximization step. Moreover, we show that our algroithm converges monotonically to a local maximum of the posterior distribution. We next generalize the result to non-uniform priors and develop an efficient integer programming algorithm that enables a similar alternating optimization procedure.

Description
Conference Paper
Advisor
Degree
Type
Conference paper
Keywords
wavelet, image restoration, MAP, Gaussian mixture, EM algorithm
Citation

Y. Wan and R. D. Nowak, "A Wavelet-Based Statistical Model for Image Restoration," 2001.

Has part(s)
Forms part of
Rights
Link to license
Citable link to this page