Dynamic Model of Visual Recognition Predicts Neural Response Properties in the Visual Cortex (1995)
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| Venue: | Neural Computation |
| Citations: | 77 - 20 self |
BibTeX
@ARTICLE{Rao95dynamicmodel,
author = {Rajesh P.N. Rao and Dana H. Ballard},
title = {Dynamic Model of Visual Recognition Predicts Neural Response Properties in the Visual Cortex},
journal = {Neural Computation},
year = {1995},
volume = {9},
pages = {721--763}
}
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Abstract
this paper, we describe a hierarchical network model of visual recognition that explains these experimental observations by using a form of the extended Kalman filter as given by the Minimum Description Length (MDL) principle. The model dynamically combines input-driven bottom-up signals with expectation-driven top-down signals to predict current recognition state. Synaptic weights in the model are adapted in a Hebbian manner according to a learning rule also derived from the MDL principle. The resulting prediction/learning scheme can be viewed as implementing a form of the Expectation-Maximization (EM) algorithm. The architecture of the model posits an active computational role for the reciprocal connections between adjoining visual cortical areas in determining neural response properties. In particular, the model demonstrates the possible role of feedback from higher cortical areas in mediating neurophysiological effects due to stimuli from beyond the classical receptive field. Si







