Literature DB >> 21316384

Perceptual learning in visual hyperacuity: A reweighting model.

Grigorios Sotiropoulos1, Aaron R Seitz, Peggy Seriès.   

Abstract

Improvements of visual hyperacuity are a key focus in research of perceptual learning. Of particular interest has been the specificity of visual hyperacuity learning to the particular features of the trained stimuli as well as disruption of learning that occurs in some cases when different stimulus features are trained together. The implications of these phenomena on the underlying learning mechanisms are still open to debate; however, there is a marked absence of computational models that explore these phenomena in a unified way. Here we implement a computational learning model based on reweighting and extend it to enable direct comparison, by means of simulations, with a variety of existing psychophysical data. We find that this very simple model can account for a diversity of findings, such as disruption of learning of one task by practice on a similar task, as well as transfer of learning across both tasks and stimulus configurations under certain conditions. These simulations help explain existing results in the literature as well as provide important insights and predictions regarding the reliability of different hyperacuity tasks and stimuli. Our simulations also shed light on the model's limitations, for example in accounting for temporal aspects of training procedures or dependency of learning with contextual stimuli, which will need to be addressed by future research.
Copyright © 2011 Elsevier Ltd. All rights reserved.

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Year:  2011        PMID: 21316384     DOI: 10.1016/j.visres.2011.02.004

Source DB:  PubMed          Journal:  Vision Res        ISSN: 0042-6989            Impact factor:   1.886


  17 in total

1.  Confidence-based integrated reweighting model of task-difficulty explains location-based specificity in perceptual learning.

Authors:  Bharath Chandra Talluri; Shao-Chin Hung; Aaron R Seitz; Peggy Seriès
Journal:  J Vis       Date:  2015       Impact factor: 2.240

2.  An integrated reweighting theory of perceptual learning.

Authors:  Barbara Anne Dosher; Pamela Jeter; Jiajuan Liu; Zhong-Lin Lu
Journal:  Proc Natl Acad Sci U S A       Date:  2013-07-29       Impact factor: 11.205

3.  Deep Neural Networks for Modeling Visual Perceptual Learning.

Authors:  Li K Wenliang; Aaron R Seitz
Journal:  J Neurosci       Date:  2018-05-23       Impact factor: 6.167

4.  Transfer of perceptual learning between different visual tasks.

Authors:  David P McGovern; Ben S Webb; Jonathan W Peirce
Journal:  J Vis       Date:  2012-10-09       Impact factor: 2.240

5.  The therapeutic benefits of perceptual learning.

Authors:  Jenni Deveau; Gary Lovcik; Aaron R Seitz
Journal:  Curr Trends Neurol       Date:  2013

6.  Construction and evaluation of an integrated dynamical model of visual motion perception.

Authors:  Émilien Tlapale; Barbara Anne Dosher; Zhong-Lin Lu
Journal:  Neural Netw       Date:  2015-03-28

7.  Co-learning analysis of two perceptual learning tasks with identical input stimuli supports the reweighting hypothesis.

Authors:  Chang-Bing Huang; Zhong-Lin Lu; Barbara A Dosher
Journal:  Vision Res       Date:  2011-11-12       Impact factor: 1.886

8.  Performance-monitoring integrated reweighting model of perceptual learning.

Authors:  Grigorios Sotiropoulos; Aaron R Seitz; Peggy Seriès
Journal:  Vision Res       Date:  2018-04-25       Impact factor: 1.886

9.  Feature-based attention enables robust, long-lasting location transfer in human perceptual learning.

Authors:  Shao-Chin Hung; Marisa Carrasco
Journal:  Sci Rep       Date:  2021-07-06       Impact factor: 4.379

10.  High resolution, high capacity, spatial specificity in perceptual learning.

Authors:  Christophe C Le Dantec; Aaron R Seitz
Journal:  Front Psychol       Date:  2012-07-25
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