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      Boltzmann-Machine Learning of Prior Distributions of Binarized Natural Images

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          Abstract

          Prior distributions of binarized natural images are learned by using a Boltzmann machine. According the results of this study, there emerges a structure with two sublattices in the interactions, and the nearest-neighbor and next-nearest-neighbor interactions correspondingly take two discriminative values, which reflects the individual characteristics of the three sets of pictures that we process. Meanwhile, in a longer spatial scale, a longer-range, although still rapidly decaying, ferromagnetic interaction commonly appears in all cases. The characteristic length scale of the interactions is universally up to approximately four lattice spacings \(\xi \approx 4\). These results are derived by using the mean-field method, which effectively reduces the computational time required in a Boltzmann machine. An improved mean-field method called the Bethe approximation also gives the same results, as well as the Monte Carlo method does for small size images. These reinforce the validity of our analysis and findings. Relations to criticality, frustration, and simple-cell receptive fields are also discussed.

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          Author and article information

          Journal
          2014-12-15
          2016-10-06
          Article
          1412.7012
          2b73573c-e083-43af-a0e1-6e5144c31012

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          32 pages, 33 figures
          stat.ML cond-mat.dis-nn cs.CV

          Computer vision & Pattern recognition,Theoretical physics,Machine learning
          Computer vision & Pattern recognition, Theoretical physics, Machine learning

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