Literature DB >> 17053994

A network that uses few active neurones to code visual input predicts the diverse shapes of cortical receptive fields.

Martin Rehn1, Friedrich T Sommer.   

Abstract

Computational models of primary visual cortex have demonstrated that principles of efficient coding and neuronal sparseness can explain the emergence of neurones with localised oriented receptive fields. Yet, existing models have failed to predict the diverse shapes of receptive fields that occur in nature. The existing models used a particular "soft" form of sparseness that limits average neuronal activity. Here we study models of efficient coding in a broader context by comparing soft and "bard" forms of neuronal sparseness. As a result of our analyses, we propose a novel network model for visual cortex. The model forms efficient visual representations in which the number of active neurones, rather than mean neuronal activity, is limited. This form of hard sparseness also economises cortical resources like synaptic memory and metabolic energy. Furthermore, our model accurately predicts the distribution of receptive field shapes found in the primary visual cortex of cat and monkey.

Mesh:

Year:  2007        PMID: 17053994     DOI: 10.1007/s10827-006-0003-9

Source DB:  PubMed          Journal:  J Comput Neurosci        ISSN: 0929-5313            Impact factor:   1.621


  23 in total

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Review 7.  A numerical analysis of the geniculocortical input to striate cortex in the monkey.

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Journal:  Cereb Cortex       Date:  1994 May-Jun       Impact factor: 5.357

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  39 in total

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Journal:  Neural Comput       Date:  2010-07       Impact factor: 2.026

2.  Sparse coding in striate and extrastriate visual cortex.

Authors:  Ben D B Willmore; James A Mazer; Jack L Gallant
Journal:  J Neurophysiol       Date:  2011-04-06       Impact factor: 2.714

3.  Relative spike time coding and STDP-based orientation selectivity in the early visual system in natural continuous and saccadic vision: a computational model.

Authors:  Timothée Masquelier
Journal:  J Comput Neurosci       Date:  2011-09-21       Impact factor: 1.621

4.  Categorically distinct types of receptive fields in early visual cortex.

Authors:  Vargha Talebi; Curtis L Baker
Journal:  J Neurophysiol       Date:  2016-03-02       Impact factor: 2.714

5.  Extracting neuronal functional network dynamics via adaptive Granger causality analysis.

Authors:  Alireza Sheikhattar; Sina Miran; Ji Liu; Jonathan B Fritz; Shihab A Shamma; Patrick O Kanold; Behtash Babadi
Journal:  Proc Natl Acad Sci U S A       Date:  2018-04-09       Impact factor: 11.205

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Authors:  Adam S Charles; Pierre Garrigues; Christopher J Rozell
Journal:  Neural Comput       Date:  2012-09-12       Impact factor: 2.026

7.  Small Networks Encode Decision-Making in Primary Auditory Cortex.

Authors:  Nikolas A Francis; Daniel E Winkowski; Alireza Sheikhattar; Kevin Armengol; Behtash Babadi; Patrick O Kanold
Journal:  Neuron       Date:  2018-02-01       Impact factor: 17.173

8.  Convergence and rate analysis of neural networks for sparse approximation.

Authors:  Aurèle Balavoine; Justin Romberg; Christopher J Rozell
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2012-06-28       Impact factor: 10.451

9.  Experience-driven formation of parts-based representations in a model of layered visual memory.

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Journal:  Front Comput Neurosci       Date:  2009-09-29       Impact factor: 2.380

10.  A structured model of video reproduces primary visual cortical organisation.

Authors:  Pietro Berkes; Richard E Turner; Maneesh Sahani
Journal:  PLoS Comput Biol       Date:  2009-09-04       Impact factor: 4.475

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