How does the brain solve visual object recognition?. DiCarlo, J. J., Zoccolan, D., & Rust, N. C. Neuron, 73(3):415–434, February, 2012.
Paper doi abstract bibtex Mounting evidence suggests that “core object recognition,” the ability to rapidly recognize objects despite substantial appearance variation, is solved in the brain via a cascade of reflexive, largely feedforward computations that culminate in a powerful neuronal representation in the inferior temporal cortex. However, the algorithm that produces this solution remains little-understood. Here we review evidence ranging from individual neurons, to neuronal populations, to behavior, to computational models. We propose that understanding this algorithm will require using neuronal and psychophysical data to sift through many computational models, each based on building blocks of small, canonical sub-networks with a common functional goal.
@article{dicarlo2012,
title = {How does the brain solve visual object recognition?},
volume = {73},
issn = {0896-6273},
url = {https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3306444/},
doi = {10.1016/j.neuron.2012.01.010},
abstract = {Mounting evidence suggests that “core object recognition,” the ability to rapidly recognize objects despite substantial appearance variation, is solved in the brain via a cascade of reflexive, largely feedforward computations that culminate in a powerful neuronal representation in the inferior temporal cortex. However, the algorithm that produces this solution remains little-understood. Here we review evidence ranging from individual neurons, to neuronal populations, to behavior, to computational models. We propose that understanding this algorithm will require using neuronal and psychophysical data to sift through many computational models, each based on building blocks of small, canonical sub-networks with a common functional goal.},
number = {3},
urldate = {2024-04-01},
journal = {Neuron},
author = {DiCarlo, James J. and Zoccolan, Davide and Rust, Nicole C.},
month = feb,
year = {2012},
pmid = {22325196},
pmcid = {PMC3306444},
pages = {415--434},
file = {PubMed Central Full Text PDF:/Users/lcneuro/Zotero/storage/ADQXZVSY/DiCarlo et al. - 2012 - How does the brain solve visual object recognition.pdf:application/pdf},
}
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