Literature DB >> 16889480

Estimating nonlinear receptive fields from natural images.

Joaquín Rapela1, Jerry M Mendel, Norberto M Grzywacz.   

Abstract

The response of visual cells is a nonlinear function of their stimuli. In addition, an increasing amount of evidence shows that visual cells are optimized to process natural images. Hence, finding good nonlinear models to characterize visual cells using natural stimuli is important. The Volterra model is an appealing nonlinear model for visual cells. However, their large number of parameters and the limited size of physiological recordings have hindered its application. Recently, a substantiated hypothesis stating that the responses of each visual cell could depend on an especially low-dimensional subspace of the image space has been proposed. We use this low-dimensional subspace in the Volterra relevant-space technique to allow the estimation of high-order Volterra models. Most laboratories characterize the response of visual cells as a nonlinear function on the low-dimensional subspace. They estimate this nonlinear function using histograms and by fitting parametric functions to them. Here, we compare the Volterra model with these histogram-based techniques. We use simulated data from cortical simple cells as well as simulated and physiological data from cortical complex cells. Volterra models yield equal or superior predictive power in all conditions studied. Several methods have been proposed to estimate the low-dimensional subspace. In this article, we test projection pursuit regression (PPR), a nonlinear regression algorithm. We compare PPR with two popular models used in vision: spike-triggered average (STA) and spike-triggered covariance (STC). We observe that PPR has advantages over these alternative algorithms. Hence, we conclude that PPR is a viable algorithm to recover the relevant subspace from natural images and that the Volterra model, estimated through the Volterra relevant-space technique, is a compelling alternative to histogram-based techniques.

Mesh:

Year:  2006        PMID: 16889480     DOI: 10.1167/6.4.11

Source DB:  PubMed          Journal:  J Vis        ISSN: 1534-7362            Impact factor:   2.240


  9 in total

1.  Characterizing responses of translation-invariant neurons to natural stimuli: maximally informative invariant dimensions.

Authors:  Michael Eickenberg; Ryan J Rowekamp; Minjoon Kouh; Tatyana O Sharpee
Journal:  Neural Comput       Date:  2012-06-26       Impact factor: 2.026

2.  Understanding spike-triggered covariance using Wiener theory for receptive field identification.

Authors:  Roman A Sandler; Vasilis Z Marmarelis
Journal:  J Vis       Date:  2015       Impact factor: 2.240

3.  Spatial structure of neuronal receptive field in awake monkey secondary visual cortex (V2).

Authors:  Lu Liu; Liang She; Ming Chen; Tianyi Liu; Haidong D Lu; Yang Dan; Mu-ming Poo
Journal:  Proc Natl Acad Sci U S A       Date:  2016-02-02       Impact factor: 11.205

Review 4.  Computational identification of receptive fields.

Authors:  Tatyana O Sharpee
Journal:  Annu Rev Neurosci       Date:  2013-07-08       Impact factor: 12.449

5.  System identification of point-process neural systems using probability based Volterra kernels.

Authors:  Roman A Sandler; Samuel A Deadwyler; Robert E Hampson; Dong Song; Theodore W Berger; Vasilis Z Marmarelis
Journal:  J Neurosci Methods       Date:  2014-12-03       Impact factor: 2.390

6.  Nonlinear modeling of causal interrelationships in neuronal ensembles.

Authors:  Theodoros P Zanos; Spiros H Courellis; Theodore W Berger; Robert E Hampson; Sam A Deadwyler; Vasilis Z Marmarelis
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2008-08       Impact factor: 3.802

Review 7.  Analyzing multicomponent receptive fields from neural responses to natural stimuli.

Authors:  Ryan J Rowekamp; Tatyana O Sharpee
Journal:  Network       Date:  2011-07-22       Impact factor: 1.273

8.  Neural mechanism for sensing fast motion in dim light.

Authors:  Ran Li; Yi Wang
Journal:  Sci Rep       Date:  2013-11-07       Impact factor: 4.379

9.  Neurons in primary visual cortex represent distribution of luminance.

Authors:  Yong Wang; Yi Wang
Journal:  Physiol Rep       Date:  2016-09
  9 in total

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