2023
DOI: 10.7554/elife.82580
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THINGS-data, a multimodal collection of large-scale datasets for investigating object representations in human brain and behavior

Abstract: Understanding object representations requires a broad, comprehensive sampling of the objects in our visual world with dense measurements of brain activity and behavior. Here we present THINGS-data, a multimodal collection of large-scale neuroimaging and behavioral datasets in humans, comprising densely-sampled functional MRI and magnetoencephalographic recordings, as well as 4.70 million similarity judgments in response to thousands of photographic images for up to 1,854 object concepts. THINGS-data is unique … Show more

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Cited by 38 publications
(70 citation statements)
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“…Recent open, large-scale condition-rich fMRI datasets are now available (e.g. NSD dataset, Allen et al, 2022; THINGS dataset, Hebart et al, 2019, 2022) which can enable the development of cortical topographic metrics beyond these macro- and meso-scale signatures probed for here. Thus, going forward, there is clear work to do towards mapping these computational models more directly to the cortex (c.f.…”
Section: Discussionmentioning
confidence: 99%
“…Recent open, large-scale condition-rich fMRI datasets are now available (e.g. NSD dataset, Allen et al, 2022; THINGS dataset, Hebart et al, 2019, 2022) which can enable the development of cortical topographic metrics beyond these macro- and meso-scale signatures probed for here. Thus, going forward, there is clear work to do towards mapping these computational models more directly to the cortex (c.f.…”
Section: Discussionmentioning
confidence: 99%
“…Finally, complementing these computational approaches, there is a clear need to develop quantitative metrics for comparing topographic activation similarity, which takes into account distance on a cortical sheet (e.g., Wasserstein distance). Recent open, large-scale condition-rich fMRI datasets are now available [e.g., NSD dataset (93) and THINGS dataset (94)], which can enable the development of cortical topographic metrics beyond these macro-and mesoscale signatures probed for here. Thus, going forward, there is clear work to do toward mapping these computational models more directly to the cortex and assessing how they succeed and fail at capturing the systematic response structure to thousands of natural images across the cortical surface.…”
Section: Modeling Cortical Topographymentioning
confidence: 99%
“…While this study focused on comparing the similarity structures of colors as an initial tractable attempt, future research could explore other sensory modalities across a broader range of tasks (e.g., visual object similarity judgment tasks [20,21]). This could provide a more comprehensive understanding of the extent to which large language models accurately capture the similarity structures inherent in human perception.…”
Section: Discussionmentioning
confidence: 99%