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visual cortex developsSciTechDaily
•84% Informative
A team at Stanford ’s Wu Tsai Neurosciences Institute has achieved a significant breakthrough in using AI to mimic the way the brain processes sensory information to understand the world.
The team used self-supervised learning approaches to help the accuracy of training models that simulate the brain.
This innovative approach has significant implications for both neuroscience and artificial intelligence.
AI could help grow virtual neuroscience, where experiments could be done more quickly and at a larger scale.
Virtual neuroscience experiments could also advance human medical care.
Another application could help develop prosthetics for vision or simulate exactly how diseases and injuries affect parts of the brain.
The researchers demonstrated as a proof of principle that their topographical deep artificial neural network reproduced brain-like responses to a wide range of naturalistic stimuli.
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