September 2024
Volume 24, Issue 10
Open Access
Vision Sciences Society Annual Meeting Abstract  |   September 2024
The Natural Scenes Dataset: Lessons Learned and What's Next?
Author Affiliations
  • Eline R. Kupers
    Stanford University
    University of Minnesota
  • Celia Durkin
    University of Minnesota
  • Clayton E Curtis
    New York University
  • Harvey Huang
    Mayo Clinic
  • Dora Hermes
    Mayo Clinic
  • Thomas Naselaris
    University of Minnesota
  • Kendrick Kay
    University of Minnesota
Journal of Vision September 2024, Vol.24, 147. doi:https://doi.org/10.1167/jov.24.10.147
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      Eline R. Kupers, Celia Durkin, Clayton E Curtis, Harvey Huang, Dora Hermes, Thomas Naselaris, Kendrick Kay; The Natural Scenes Dataset: Lessons Learned and What's Next?. Journal of Vision 2024;24(10):147. https://doi.org/10.1167/jov.24.10.147.

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      © ARVO (1962-2015); The Authors (2016-present)

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Abstract

Release and reuse of rich neuroimaging datasets have rapidly grown in popularity, enabling researchers to ask new questions about visual processing and to benchmark computational models. One highly used dataset is the Natural Scenes Dataset (NSD), a 7T fMRI dataset where 8 subjects viewed more than 70,000 images over the course of a year. Since its recent release in September 2021, NSD has gained 1700+ users and resulted in 55+ papers and pre-prints. Here, we share behind-the-scenes considerations and inside knowledge from the NSD acquisition effort that helped ensure its quality and impact. This includes lessons learned regarding funding, designing, collecting, and releasing a large-scale fMRI dataset. Complementing the creator’s perspective, we also highlight the user’s viewpoint by revealing results from a large anonymous survey distributed amongst NSD users. These results will provide valuable (and often unspoken) insights into both positive and negative experiences interacting with NSD and other publicly available datasets. Finally, we discuss ongoing efforts towards two new large-scale datasets: (i) NSD-iEEG, an intracranial electroencephalography dataset with extensive electrode coverage in cortex and sub-cortex using a similar paradigm to NSD and (ii) Visual Cognition Dataset, a 7T fMRI dataset that samples a large diversity of tasks on a common set of visual stimuli (in contrast to NSD which samples a large diversity of stimuli during a single task). By sharing these lessons and ideas, we hope to facilitate new data collection efforts and enhance the ability of these datasets to support new discoveries in vision and cognition.

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