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Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity

Reconstructing natural images and decoding their semantic category from fMRI brain recordings is challenging. Acquiring sufficient pairs of images and their corresponding fMRI responses, which span the huge space of natural images, is prohibitive. We present a novel self-supervised approach that goe...

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Autores principales: Gaziv, Guy, Beliy, Roman, Granot, Niv, Hoogi, Assaf, Strappini, Francesca, Golan, Tal, Irani, Michal
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9133799/
https://www.ncbi.nlm.nih.gov/pubmed/35342004
http://dx.doi.org/10.1016/j.neuroimage.2022.119121
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author Gaziv, Guy
Beliy, Roman
Granot, Niv
Hoogi, Assaf
Strappini, Francesca
Golan, Tal
Irani, Michal
author_facet Gaziv, Guy
Beliy, Roman
Granot, Niv
Hoogi, Assaf
Strappini, Francesca
Golan, Tal
Irani, Michal
author_sort Gaziv, Guy
collection PubMed
description Reconstructing natural images and decoding their semantic category from fMRI brain recordings is challenging. Acquiring sufficient pairs of images and their corresponding fMRI responses, which span the huge space of natural images, is prohibitive. We present a novel self-supervised approach that goes well beyond the scarce paired data, for achieving both: (i) state-of-the art fMRI-to-image reconstruction, and (ii) first-ever large-scale semantic classification from fMRI responses. By imposing cycle consistency between a pair of deep neural networks (from image-to-fMRI & from fMRI-to-image), we train our image reconstruction network on a large number of “unpaired” natural images (images without fMRI recordings) from many novel semantic categories. This enables to adapt our reconstruction network to a very rich semantic coverage without requiring any explicit semantic supervision. Specifically, we find that combining our self-supervised training with high-level perceptual losses, gives rise to new reconstruction & classification capabilities. In particular, this perceptual training enables to classify well fMRIs of never-before-seen semantic classes, without requiring any class labels during training. This gives rise to: (i) Unprecedented image-reconstruction from fMRI of never-before-seen images (evaluated by image metrics and human testing), and (ii) Large-scale semantic classification of categories that were never-before-seen during network training. Such large-scale (1000-way) semantic classification from fMRI recordings has never been demonstrated before. Finally, we provide evidence for the biological consistency of our learned model.
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spelling pubmed-91337992022-07-01 Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity Gaziv, Guy Beliy, Roman Granot, Niv Hoogi, Assaf Strappini, Francesca Golan, Tal Irani, Michal Neuroimage Article Reconstructing natural images and decoding their semantic category from fMRI brain recordings is challenging. Acquiring sufficient pairs of images and their corresponding fMRI responses, which span the huge space of natural images, is prohibitive. We present a novel self-supervised approach that goes well beyond the scarce paired data, for achieving both: (i) state-of-the art fMRI-to-image reconstruction, and (ii) first-ever large-scale semantic classification from fMRI responses. By imposing cycle consistency between a pair of deep neural networks (from image-to-fMRI & from fMRI-to-image), we train our image reconstruction network on a large number of “unpaired” natural images (images without fMRI recordings) from many novel semantic categories. This enables to adapt our reconstruction network to a very rich semantic coverage without requiring any explicit semantic supervision. Specifically, we find that combining our self-supervised training with high-level perceptual losses, gives rise to new reconstruction & classification capabilities. In particular, this perceptual training enables to classify well fMRIs of never-before-seen semantic classes, without requiring any class labels during training. This gives rise to: (i) Unprecedented image-reconstruction from fMRI of never-before-seen images (evaluated by image metrics and human testing), and (ii) Large-scale semantic classification of categories that were never-before-seen during network training. Such large-scale (1000-way) semantic classification from fMRI recordings has never been demonstrated before. Finally, we provide evidence for the biological consistency of our learned model. Academic Press 2022-07-01 /pmc/articles/PMC9133799/ /pubmed/35342004 http://dx.doi.org/10.1016/j.neuroimage.2022.119121 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Gaziv, Guy
Beliy, Roman
Granot, Niv
Hoogi, Assaf
Strappini, Francesca
Golan, Tal
Irani, Michal
Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title_full Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title_fullStr Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title_full_unstemmed Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title_short Self-supervised Natural Image Reconstruction and Large-scale Semantic Classification from Brain Activity
title_sort self-supervised natural image reconstruction and large-scale semantic classification from brain activity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9133799/
https://www.ncbi.nlm.nih.gov/pubmed/35342004
http://dx.doi.org/10.1016/j.neuroimage.2022.119121
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