Naive Mean Field Approximation for Image Restoration
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概要
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We attempt image restoration in the framework of the Bayesian inference. Recently, it has been shown that under a certain criterion the MAP (Maximum A Posterior) estimate, which corresponds to the minimization of energy, can be outperformed by the MPM (Maximizer of the Posterior Marginals) estimate, which is equivalent to a finite-temperature decoding method. Since a lot of computational time is needed for the MPM estimate to calculate the thermal averages, the mean field method, which is a deterministic algorithm, is often utilized to avoid this difficulty. We present a statistical-mechanical analysis of naive mean field approximation in the framework of image restoration. We compare our theoretical results with those of computer simulation, and investigate the potential of naive mean field approximation.
- 2002-10-15
著者
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Shouno Hayaru
Graduate School Of Human Culture Nara Women's University
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Wada Koji
Graduate School Of Science And Engineering Saitama University
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Okada Masato
Brain Research Institute Riken
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Shouno Hayaru
Graduate School of Human Culture, Nara Women's University, Kita-uoya-nishi, Nara
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