The model-resistant richness of human visual experience

Behavioral and Brain Sciences 46:e401 (2023)
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Abstract

Current deep neural networks (DNNs) are far from being able to model the rich landscape of human visual experience. Beyond visual recognition, we explore the neural substrates of visual mental imagery and other visual experiences. Rather than shared visual representations, temporal dynamics and functional connectivity of the process are essential. Generative adversarial networks may drive future developments in simulating human visual experience.

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Biological and Computer Vision.Gabriel Kreiman - 2021 - Cambridge University Press.

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