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Bayesian Image Modeling by Generalized Sparse Markov Random Fields and Loopy Belief Propagation . Kazuyuki Tanaka GSIS, Tohoku University, Sendai, Japan http://www.smapip.is.tohoku.ac.jp/~kazu/. Collaborators Muneki Yasuda (GSIS, Tohoku University, Japan )
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Bayesian Image Modeling by Generalized Sparse Markov Random Fields and Loopy Belief Propagation Kazuyuki Tanaka GSIS, Tohoku University, Sendai, Japan http://www.smapip.is.tohoku.ac.jp/~kazu/ Collaborators Muneki Yasuda (GSIS, Tohoku University, Japan) Sun Kataoka (GSIS, Tohoku University, Japan) D. M. Titterington(Department of Statistics, University of Glasgow, UK) SPDSA2013, Sendai, Japan
Outline • Supervised Learning of Pairwise Markov Random Fields by Loopy Belief Propagation • Bayesian Image Modeling by Generalized Sparse Prior • Noise Reductions by Generalized Sparse Prior • Concluding Remarks SPDSA2013, Sendai, Japan
Bayesian Networks Markov Random Fields Probabilistic Model and Belief Propagation Bayes Formulas Probabilistic Models Probabilistic Information Processing Belief Propagation =Bethe Approximation i j Message =Effective Field V: Set of all the nodes (vertices) in graph G E: Set of all the links (edges) in graph G SPDSA2013, Sendai, Japan
Supervised Learning of Pairwise Markov Random Fields by Loopy Belief Propagation Prior Probability of natural images is assumed to be the following pairwise Markov random fields: 4 SPDSA2013, Sendai, Japan
Supervised Learning of Pairwise Markov Random Fields by Loopy Belief Propagation Supervised Learning Scheme by Loopy Belief Propagation in Pairwise Markov random fields: Histogram from Supervised Data M. Yasuda, S. Kataoka and K.Tanaka, J. Phys. Soc. Jpn, Vol.81, No.4, Article No.044801, 2012. 5 SPDSA2013, Sendai, Japan
Supervised Learning of Pairwise Markov Random Fields by Loopy Belief Propagation Supervised Learning Scheme by Loopy Belief Propagation in Pairwise Markov random fields: 6 SPDSA2013, Sendai, Japan
Bayesian Image Modeling by Generalized Sparse Prior Assumption: Prior Probability is given as the following Gibbs distribution with the interaction a between every nearest neighbour pair of pixels: p=0: q-state Potts model p=2: Discrete Gaussian Graphical Model 7 SPDSA2013, Sendai, Japan
Prior in Bayesian Image Modeling Loopy Belief Propagation q=16 In the region of 0<p<0.3504…, the first order phase transition appears and the solution a * does not exist. 8 SPDSA2013, Sendai, Japan
Bayesian Image Modeling by Generalized Sparse Prior: Conditional Maximization of Entropy Lagrange Multiplier • K. Tanaka, M. Yasuda and D. M. Titterington: J. Phys. Soc. Jpn, 81, 114802, 2012. Loopy Belief Propagation 9 SPDSA2013, Sendai, Japan
Prior Analysis by LBP and Conditional Maximization of Entropy in Bayesian Image Modeling Prior Probability Repeat until A converges LBP q=16 p=0.2 q=16 p=0.5 10 SPDSA2013, Sendai, Japan
Prior Analysis by LBP and Conditional Maximization of Entropy in Generalized Sparse Prior Free Energy of Prior Log-Likelihood for p when the original image f*is given LBP q=16 • K. Tanaka, M. Yasuda and D. M. Titterington: J. Phys. Soc. Jpn, 81, 114802, 2012. 11 SPDSA2013, Sendai, Japan
Degradation Process in Bayesian Image Modeling Assumption: Degraded image is generated from the original image by Additive White Gaussian Noise. SPDSA2013, Sendai, Japan 12
Noise Reductions by Generalized Sparse Prior Posterior Probability Lagrange Multipliers • K. Tanaka, M. Yasuda and D. M. Titterington: J. Phys. Soc. Jpn, 81, 114802, 2012. 13 SPDSA2013, Sendai, Japan
Noise Reduction Procedures Based on LBP and Conditional Maximization of Entropy Input p and data g Repeat until C and M converge Repeat until C converge Repeat until u, B and L converge Marginals and Free Energy in LBP SPDSA2013, Sendai, Japan 14
Noise Reductions by Generalized Sparse Priors and Loopy Belief Propagation Original Image Degraded Image Restored Image • K. Tanaka, M. Yasuda and • D. M. Titterington: • J. Phys. Soc. Jpn, 81, 114802, 2012. p=0.2 p=0.5 p=1 SPDSA2013, Sendai, Japan
Noise Reductions by Generalized Sparse Priors and Loopy Belief Propagation Original Image Degraded Image Restored Image • K. Tanaka, M. Yasuda and • D. M. Titterington: • J. Phys. Soc. Jpn, 81, 114802, 2012. p=0.2 p=0.5 p=1 SPDSA2013, Sendai, Japan
Summary • Formulation of Bayesian image modeling for image processing by means of generalized sparse priors and loopy belief propagation are proposed. • Our formulation is based on the conditional maximization of entropy with some constraints. • In our sparse priors, although the first order phase transitions often appear, our algorithm works well also in such cases. SPDSA2013, Sendai, Japan
References • S. Kataoka, M. Yasuda, K. Tanaka and D. M. Titterington: Statistical Analysis of the Expectation-Maximization Algorithm with Loopy Belief Propagation in Bayesian Image Modeling, Philosophical Magazine: The Study of Condensed Matter, Vol.92, Nos.1-3, pp.50-63,2012. • M. Yasuda and K. Tanaka: TAP Equation for Nonnegative Boltzmann Machine: Philosophical Magazine: The Study of Condensed Matter, Vol.92, Nos.1-3, pp.192-209, 2012. • S. Kataoka, M. Yasuda and K. Tanaka: Statistical Analysis of Gaussian Image Inpainting Problems, Journal of the Physical Society of Japan, Vol.81, No.2, Article No.025001, 2012. • M. Yasuda, S. Kataoka and K.Tanaka: Inverse Problem in Pairwise Markov Random Fields using Loopy Belief Propagation, Journal of the Physical Society of Japan, Vol.81, No.4, Article No.044801, pp.1-8, 2012. • M. Yasuda, Y. Kabashima and K. Tanaka: Replica Plefka Expansion of Ising systems, Journal of Statistical Mechanics: Theory and Experiment, Vol.2012, No.4, Article No.P04002, pp.1-16, 2012. • K. Tanaka, M. Yasuda and D. M. Titterington: Bayesian image modeling by means of generalized sparse prior and loopy belief propagation, Journal of the Physical Society of Japan, Vol.81, No.11, Article No.114802, 2012. • M. Yasuda and K. Tanaka: Susceptibility Propagation by Using Diagonal Consistency, Physical Review E, Vol.87, No.1, Article No.012134, 2013. SPDSA2013, Sendai, Japan