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Probability distributions / Bayesian statistics / KullbackLeibler divergence / Statistical theory / Thermodynamics / Gamma distribution / Variational Bayesian methods / Peak signal-to-noise ratio / Bayesian network / Sheaf
Date: 2010-10-04 04:57:27
Probability distributions
Bayesian statistics
KullbackLeibler divergence
Statistical theory
Thermodynamics
Gamma distribution
Variational Bayesian methods
Peak signal-to-noise ratio
Bayesian network
Sheaf

Proceedings of 2010 IEEE 17th International Conference on Image Processing September 26-29, 2010, Hong Kong Using the Kullback-Leibler Divergence to Combine Image Priors in Super-Resolution Image Reconstruction

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