Deep convolutional models improve predictions of macaque V1 responses to natural images
Published 2019 View Full Article
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Title
Deep convolutional models improve predictions of macaque V1 responses to natural images
Authors
Keywords
Neurons, Neuronal tuning, Monkeys, Neural networks, Visual cortex, Vision, Aspect ratio, Macaque
Journal
PLoS Computational Biology
Volume 15, Issue 4, Pages e1006897
Publisher
Public Library of Science (PLoS)
Online
2019-04-24
DOI
10.1371/journal.pcbi.1006897
References
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