NANAMEDec 14, 2014

Bayesian Hierarchical Model of Total Variation Regularisation for Image Deblurring

arXiv:1412.4384
Originality Synthesis-oriented
AI Analysis

For researchers in image deblurring, this provides an automatic method for parameter estimation, but the approach is incremental and has unresolved issues.

The paper presents a Bayesian hierarchical model for total variation regularisation that automatically estimates the regularisation parameter from data, enabling edge-preserving image deblurring. Results demonstrate automatic inversion, though some difficulties remain for future work.

A Bayesian hierarchical model for total variation regularisation is presented in this paper. All the parameters of an inverse problem, including the "regularisation parameter", are estimated simultaneously from the data in the model. The model is based on the characterisation of the Laplace density prior as a scale mixture of Gaussians. With different priors on the mixture variable, other total variation like regularisations e.g. a prior that is related to t-distribution, are also obtained. An approximation of the resulting posterior mean is found using a variational Bayes method. In addition, an iterative alternating sequential algorithm for computing the maximum a posteriori estimate is presented. The methods are illustrated with examples of image deblurring. Results show that the proposed model can be used for automatic edge-preserving inversion in the case of image deblurring. Despite promising results, some difficulties with the model were encountered and are subject to future work.

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