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Deep learning—Using machine learning to study biological vision
Author(s) -
Najib J. Majaj,
Denis G. Pelli
Publication year - 2018
Publication title -
journal of vision
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.126
H-Index - 113
ISSN - 1534-7362
DOI - 10.1167/18.13.2
Subject(s) - artificial intelligence , machine learning , deep learning , computer science , strengths and weaknesses , perception , artificial neural network , benchmark (surveying) , deep neural networks , cognitive science , psychology , neuroscience , social psychology , geodesy , geography
Many vision science studies employ machine learning, especially the version called "deep learning." Neuroscientists use machine learning to decode neural responses. Perception scientists try to understand how living organisms recognize objects. To them, deep neural networks offer benchmark accuracies for recognition of learned stimuli. Originally machine learning was inspired by the brain. Today, machine learning is used as a statistical tool to decode brain activity. Tomorrow, deep neural networks might become our best model of brain function. This brief overview of the use of machine learning in biological vision touches on its strengths, weaknesses, milestones, controversies, and current directions. Here, we hope to help vision scientists assess what role machine learning should play in their research.

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