Paper

Learning to combine foveal glimpses with a third-order Boltzmann machine

We describe a model based on a Boltzmann machine with third-order connections that can learn how to accumulate information about a shape over several fixations. The model uses a retina that only has enough high resolution pixels to cover a small area of the image, so it must decide on a sequence of fixations and it must combine the “glimpse ” at each fixation with the location of the fixation before integrating the information with information from other glimpses of the same object. We evaluate this model on a synthetic dataset and two image classification datasets, showing that it can perform at least as well as a model trained on whole images. 1

http://learning.cs.toronto.edu/%7Ehinton/absps/nips_eyebm.pdfPublished 2010-12-06Paper link

Authors: Hugo Larochelle · Geoffrey E. Hinton

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