Mice to Machines: Neural Representations from Visual Cortex for Domain Generalization
Ahmed Qazi, Hamd Jalil, Asim Iqbal

TL;DR
This paper explores the neural representations in the mouse visual cortex and their parallels with deep learning models, introducing a new normalization layer that improves model robustness in domain generalization tasks.
Contribution
The study introduces a generalized representational learning strategy and a Neural Response Normalization layer inspired by mouse visual cortex activity, enhancing deep learning model alignment and robustness.
Findings
High similarity between mouse visual cortex and deep learning models
NeuRN layer improves model robustness against data shifts
Framework for comparing neural and artificial visual representations
Abstract
The mouse is one of the most studied animal models in the field of systems neuroscience. Understanding the generalized patterns and decoding the neural representations that are evoked by the diverse range of natural scene stimuli in the mouse visual cortex is one of the key quests in computational vision. In recent years, significant parallels have been drawn between the primate visual cortex and hierarchical deep neural networks. However, their generalized efficacy in understanding mouse vision has been limited. In this study, we investigate the functional alignment between the mouse visual cortex and deep learning models for object classification tasks. We first introduce a generalized representational learning strategy that uncovers a striking resemblance between the functional mapping of the mouse visual cortex and high-performing deep learning models on both top-down…
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Taxonomy
TopicsFace Recognition and Perception · Neural dynamics and brain function · Visual Attention and Saliency Detection
