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The scope and limits of fine-grained category information in the ventral visual pathway

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Bergmann,  Johanna       
Department Psychology (Doeller), MPI for Human Cognitive and Brain Sciences, Max Planck Society;

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Roth,  Johannes
Max Planck Research Group Vision and Computational Cognition, MPI for Human Cognitive and Brain Sciences, Max Planck Society;

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Doeller,  Christian F.       
Department Psychology (Doeller), MPI for Human Cognitive and Brain Sciences, Max Planck Society;

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Hebart,  Martin N.       
Max Planck Research Group Vision and Computational Cognition, MPI for Human Cognitive and Brain Sciences, Max Planck Society;

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Citation

Badwal, M. W., Bergmann, J., Roth, J., Doeller, C. F., & Hebart, M. N. (2024). The scope and limits of fine-grained category information in the ventral visual pathway. bioRxiv. doi:10.1101/2024.08.04.606507.


Cite as: https://hdl.handle.net/21.11116/0000-000F-B986-9
Abstract
Humans can easily abstract incoming visual information into discrete semantic categories. Previous research employing functional MRI (fMRI) in humans has identified cortical organizing principles that allow not only for coarse-scale distinctions such as animate versus inanimate objects but also more fine-grained distinctions at the level of individual objects. This suggests that fMRI carries rather fine-grained information about individual objects. However, most previous work investigating fine-grained category representations either additionally included coarse-scale category comparisons of objects, which confounds fine-grained and coarse-scale distinctions, or only used a single exemplar of each object, which confounds visual and semantic information. To address these challenges, here we used multisession fMRI paired with a broad yet homogenous stimulus class of 48 terrestrial mammals, with 2 exemplars per mammal. Multivariate decoding and representational similarity analysis (RSA) revealed high image-specific reliability in low- and high-level visual regions, indicating stable representational patterns at the image level. In contrast, analyses across exemplars of the same animal yielded only small effects in the lateral occipital complex (LOC), indicating rather subtle category effects in this region. Variance partitioning with a deep neural network and shape model showed that across exemplar effects in EVC were largely explained by low-level visual appearance, while representations in LOC appeared to also contain higher category-specific information. These results suggest that representations typically measured with fMRI are dominated by image-specific visual or coarse-grained category information but demonstrate that commonly employed fMRI protocols can reveal subtle yet reliable distinctions between individual objects.