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SeminarPast EventNeuroscience

What does the primary visual cortex tell us about object recognition?

Tiago Marques

Dr

MIT

Schedule
Monday, January 24, 2022

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Schedule

Monday, January 24, 2022

12:00 PM Europe/London

Host: UCL BehavioNeuro Talks

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Event Information

Domain

Neuroscience

Original Event

View source

Host

UCL BehavioNeuro Talks

Duration

70 minutes

Abstract

Object recognition relies on the complex visual representations in cortical areas at the top of the ventral stream hierarchy. While these are thought to be derived from low-level stages of visual processing, this has not been shown, yet. Here, I describe the results of two projects exploring the contributions of primary visual cortex (V1) processing to object recognition using artificial neural networks (ANNs). First, we developed hundreds of ANN-based V1 models and evaluated how their single neurons approximate those in the macaque V1. We found that, for some models, single neurons in intermediate layers are similar to their biological counterparts, and that the distributions of their response properties approximately match those in V1. Furthermore, we observed that models that better matched macaque V1 were also more aligned with human behavior, suggesting that object recognition is derived from low-level. Motivated by these results, we then studied how an ANN’s robustness to image perturbations relates to its ability to predict V1 responses. Despite their high performance in object recognition tasks, ANNs can be fooled by imperceptibly small, explicitly crafted perturbations. We observed that ANNs that better predicted V1 neuronal activity were also more robust to adversarial attacks. Inspired by this, we developed VOneNets, a new class of hybrid ANN vision models. Each VOneNet contains a fixed neural network front-end that simulates primate V1 followed by a neural network back-end adapted from current computer vision models. After training, VOneNets were substantially more robust, outperforming state-of-the-art methods on a set of perturbations. While current neural network architectures are arguably brain-inspired, these results demonstrate that more precisely mimicking just one stage of the primate visual system leads to new gains in computer vision applications and results in better models of the primate ventral stream and object recognition behavior.

Topics

V1VOneNetsadversarial attacksartificial neural networksimage perturbationsmacaqueneural network modelsobject recognitionprimary visual cortex

About the Speaker

Tiago Marques

Dr

MIT

Contact & Resources

@tiagogmarques

Follow on Twitter/X

twitter.com/tiagogmarques

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