Title
Learning to combine foveal glimpses with a third-order Boltzmann machine.
Abstract
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."
Year
Venue
Field
2010
NIPS
Computer vision,Boltzmann machine,Fixation (psychology),Computer science,Third order,Artificial intelligence,Foveal,Pixel,Contextual image classification,Machine learning
DocType
Citations 
PageRank 
Conference
93
5.69
References 
Authors
15
2
Name
Order
Citations
PageRank
Hugo Larochelle17692488.99
geoffrey e hinton2404354751.69