A generalized Gaussian image model for edge-preserving MAP estimation (1993)
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| Venue: | IEEE Trans. on Image Processing |
| Citations: | 190 - 32 self |
BibTeX
@ARTICLE{Bouman93ageneralized,
author = {Charles Bouman and Ken Sauer},
title = {A generalized Gaussian image model for edge-preserving MAP estimation},
journal = {IEEE Trans. on Image Processing},
year = {1993},
volume = {2},
pages = {296--310}
}
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Abstract
Absfrucf- We present a Markov random field model which allows realistic edge modeling while providing stable maximum a posteriori MAP solutions. The proposed model, which we refer to as a generalized Gaussian Markov random field (GGMRF), is named for its similarity to the generalized Gaussian distribution used in robust detection and estimation. The model satisifies several desirable analytical and computational properties for MAP estimation, including continuous dependence of the estimate on the data, invariance of the character of solutions to scaling of data, and a solution which lies at the unique global mini-mum of the U posteriori log-likeihood function. The GGMRF is demonstrated to be useful for image reconstruction in low-dosage transmission tomography. I.







