Automatically assigned DDC number:
Manually assigned DDC number: 00637
Number of references: 0
Title: Bayesian Image Restoration And Segmentation By Constrained Optimization
Author:
Author:
Author:
Subject: S. Z. Li,K. L. Chan,H. Wang Bayesian Image Restoration And Segmentation By Constrained Optimization
Description: A constrained optimization method, called the Lagrange-Hopfield (LH) method, is presented for solving Markov random field (MRF) based Bayesian image estimation problems for restoration and segmentation. The method combines the augmented Lagrangian multiplier technique with the Hopfield network to solve a constrained optimization problem into which the original Bayesian estimation problem is reformulated. The LH method effectively overcomes instabilities that are inherent in the penalty method (e.g. Hopfield network) or the Lagrange multiplier method in constrained optimization. An additional advantage of the LH method is its suitability for neural-like analog implementation. Experimental results are presented which show that LH yields good quality solutions at reasonable computational costs. 1. INTRODUCTION Image restoration is to recover a degraded image and segmentation is to partition an image into regions of similar image properties. Both can be posed generally as image estimation...
Contributor: The Pennsylvania State University CiteSeer Archives
Publisher: unknown
Date: 1999-03-21
Pubyear: 1996
Format: ps
Identifier: http://citeseer.ist.psu.edu/140509.html
Source: http://markov.eee.ntu.edu.sg:8000/~szli/papers/CVPR-96.ps.gz
Language: en
Rights: unrestricted
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