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The canonical deep neural network as a model for human symmetry processing
Yoram S. Bonneh
, Christopher W. Tyler
School of Optometry and Vision Science
City, University of London
Smith Kettlewell Eye Research Institute
Research output
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peer-review
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Keyphrases
Deep Neural Network
100%
Symmetry Processing
100%
Human Brain
50%
Natural Images
50%
Structural Properties
25%
Global Processing
25%
Symmetry Axis
25%
Global Property
25%
Template Matching
25%
Lateral Occipital Complex
25%
Visual Hierarchy
25%
Deep Feedforward Neural Network
25%
Mirror Symmetry
25%
Fully Connected Layer
25%
Natural Environmental
25%
Complexity Matching
25%
Random-dot Images
25%
Shape Templates
25%
Environmental Image
25%
Neural Layer
25%
Psychology
Neural Network
100%
Human Brain
40%
Physics
Deep Neural Network
100%
Selectivity
20%
Material Science
Structural Property
100%
Computer Science
Visual Hierarchy
20%