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V1T: large-scale mouse V1 response prediction using a Vision Transformer

V1T, a Vision Transformer model, outperforms convolution-based models in predicting neural responses to visual stimuli and reveals meaningful features of the visual cortex.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2302.03023v4ARXIV-DEFAULT
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Abstract

Accurate predictive models of the visual cortex neural response to natural visual stimuli remain a challenge in computational neuroscience. In this work, we introduce V1T, a novel Vision Transformer based architecture that learns a shared visual and behavioral representation across animals. We evaluate our model on two large datasets recorded from mouse primary visual cortex and outperform previous convolution-based models by more than 12.7% in prediction performance. Moreover, we show that the self-attention weights learned by the Transformer correlate with the population receptive fields. Our model thus sets a new benchmark for neural response prediction and can be used jointly with behavioral and neural recordings to reveal meaningful characteristic features of the visual cortex.

Authors

4