DocumentCode
1543909
Title
Solving inverse problems by Bayesian neural network iterative inversion with ground truth incorporation
Author
Davis, Daniel T. ; Hwang, Jenq-Neng
Author_Institution
Inf. Process. Lab., Washington Univ., Seattle, WA, USA
Volume
45
Issue
11
fYear
1997
fDate
11/1/1997 12:00:00 AM
Firstpage
2749
Lastpage
2757
Abstract
Neural networks have long been applied to inverse parameter retrieval problems. The literature documents a development from the use of neural networks as explicit inverses to neural network iterative inversion (NNII) and, finally, to Bayesian neural network iterative inversion (BNNII), which adds a Bayesian superstructure to NNII. Inverse problems have been often considered ill posed, i.e. the statement of the problem does not thoroughly constrain the solution space. BNNII takes advantage of this lack of information by adding additional informative constraints to the problem solution using Bayesian methodology. This paper extends BNNII, showing how ground truth information, information regarding the particular parameter contour under reconstruction, and information regarding the underlying physical process, can be seamlessly added to the problem solution. Remote sensing problems afford opportunities for inclusion of ground truth information, prior probabilities, noise distributions, and other informative constraints within a Bayesian probabilistic framework. We apply these Bayesian methods to a synthetic remote sensing problem, showing that the addition of ground truth information, which is naturally included through Bayesian modeling, provides a significant performance improvement
Keywords
Bayes methods; geophysical signal processing; inverse problems; iterative methods; parameter estimation; remote sensing; Bayesian neural network iterative inversion; Bayesian superstructure; ground truth incorporation; ground truth information; inverse parameter retrieval problems; noise distributions; parameter contour; prior probabilities; reconstruction; remote sensing; solution space; Bayesian methods; Context modeling; Image reconstruction; Information processing; Inverse problems; NASA; Neural networks; Noise measurement; Probability distribution; Remote sensing;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/78.650101
Filename
650101
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