An adaptive augmented regularization method and its applications
Regularization method and Bayesian inverse method are two dominating ways for solving inverse problems generated from various fields, e.g., seismic exploration and medical imaging. The two methods are related with each other by the MAP estimates of posterior probability distributions. Considering th...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
17.07.2018
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Subjects | |
Online Access | Get full text |
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Summary: | Regularization method and Bayesian inverse method are two dominating ways for
solving inverse problems generated from various fields, e.g., seismic
exploration and medical imaging. The two methods are related with each other by
the MAP estimates of posterior probability distributions. Considering this
connection, we construct a prior probability distribution with several
hyper-parameters and provide the relevant Bayes' formula, then we propose a
corresponding adaptive augmented regularization model (AARM). According to the
measured data, the proposed AARM can adjust its form to various regularization
models at each discrete point of the estimated function, which makes the
characterization of local smooth properties of the estimated function possible.
By proposing a modified Bregman iterative algorithm, we construct an alternate
iterative algorithm to solve the AARM efficiently. In the end, we provide some
numerical examples which clearly indicate that the proposed AARM can generates
a favorable result for some examples compared with several Tikhonov and
Total-Variation regularization models. |
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DOI: | 10.48550/arxiv.1807.06280 |