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      A massive 7T fMRI dataset to bridge cognitive neuroscience and artificial intelligence

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          Abstract

          <p class="first" id="d1551825e315">Extensive sampling of neural activity during rich cognitive phenomena is critical for robust understanding of brain function. Here we present the Natural Scenes Dataset (NSD), in which high-resolution functional magnetic resonance imaging responses to tens of thousands of richly annotated natural scenes were measured while participants performed a continuous recognition task. To optimize data quality, we developed and applied novel estimation and denoising techniques. Simple visual inspections of the NSD data reveal clear representational transformations along the ventral visual pathway. Further exemplifying the inferential power of the dataset, we used NSD to build and train deep neural network models that predict brain activity more accurately than state-of-the-art models from computer vision. NSD also includes substantial resting-state and diffusion data, enabling network neuroscience perspectives to constrain and enhance models of perception and memory. Given its unprecedented scale, quality and breadth, NSD opens new avenues of inquiry in cognitive neuroscience and artificial intelligence. </p>

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          Journal
          Nature Neuroscience
          Nat Neurosci
          Springer Science and Business Media LLC
          1097-6256
          1546-1726
          December 16 2021
          Article
          10.1038/s41593-021-00962-x
          34916659
          18e83646-92d2-4699-95e9-56184297c8b2
          © 2021

          https://www.springer.com/tdm

          https://www.springer.com/tdm

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