Decoding face recognition abilities in the human brain

Simon Faghel-Soubeyrand*, Meike Ramon, Eva Bamps, Matteo Zoia, Jessica Woodhams, Anne-Raphaelle Richoz, Roberto Caldara, Frederic Gosselin, Ian Charest*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Why are some individuals better at recognising faces? Uncovering the neural mechanisms supporting face recognition ability has proven elusive. To tackle this challenge, we used a multi-modal data-driven approach combining neuroimaging, computational modelling, and behavioural tests. We recorded the high-density electroencephalographic brain activity of individuals with extraordinary face recognition abilities—super-recognisers—and typical recognisers in response to diverse visual stimuli. Using multivariate pattern analyses, we decoded face recognition abilities from 1 second of brain activity with up to 80% accuracy. To better understand the mechanisms subtending this decoding, we compared representations in the brains of our participants with those in artificial neural network models of vision and semantics, as well as with those involved in human judgments of shape and meaning similarity. Compared to typical recognisers, we found stronger associations between early brain representations of super-recognisers and mid-level representations of vision models as well as shape similarity judgments. Moreover, we found stronger associations between late brain representations of super-recognisers and representations of the artificial semantic model as well as meaning similarity judgments. Overall, these results indicate that important individual variations in brain processing, including neural computations extending beyond purely visual processes, support differences in face recognition abilities. They provide the first empirical evidence for an association between semantic computations and face recognition abilities. We believe that such multi-modal data-driven approaches will likely play a critical role in further revealing the complex nature of idiosyncratic face recognition in the human brain.
Original languageEnglish
Article numberpgae095
JournalPNAS nexus
Early online date1 Mar 2024
DOIs
Publication statusE-pub ahead of print - 1 Mar 2024

Bibliographical note

Acknowledgments:
We thank Prof. Josh P. Davis for sharing behavioural scores of super-recognisers and establishing first contact to the UK-based Super-Recognizers reported here. We also thank Mick Neville, from Super-Recognisers Ltd., who helped us to get in contact with some of our super-recognizer participants. We thank Rose Jutras, who helped with data acquisition. Funding for this project was supported by an ERC Starting Grant [ERC-StG-759432] to I.C, an ERSC-IAA grant to J.W., I.C. and S.F.S., by a Swiss National Science Foundation PRIMA (Promoting Women in Academia) grant [PR00P1_179872] to M.R., and by IVADO (2021- 6707598907), NSERC, and UNIQUE graduate scholarships to S.F.S. This manuscript was posted on a preprint: https://www.biorxiv.org/content/10.1101/2022.03.19.484245v3. https://doi.org/10.1101/2022.03.19.484245

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