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Thinking beyond the ventral stream: Comment on Bowers et al.

Published online by Cambridge University Press:  06 December 2023

Christopher Summerfield
Affiliation:
Department of Experimental Psychology, University of Oxford, Oxford, UK christopher.summerfield@psy.ox.ac.uk jessica.thompson@psy.ox.ac.uk https://humaninformationprocessing.com/ https://thompsonj.github.io/about/
Jessica A. F. Thompson
Affiliation:
Department of Experimental Psychology, University of Oxford, Oxford, UK christopher.summerfield@psy.ox.ac.uk jessica.thompson@psy.ox.ac.uk https://humaninformationprocessing.com/ https://thompsonj.github.io/about/

Abstract

Bowers et al. rightly emphasise that deep learning models often fail to capture constraints on visual perception that have been discovered by previous research. However, the solution is not to discard deep learning altogether, but to design stimuli and tasks that more closely reflect the problems that biological vision evolved to solve, such as understanding scenes and preparing skilled action.

Type
Open Peer Commentary
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press

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