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We’re very happy to share our latest study: ‘Brain decoding: toward real-time reconstruction of visual perception’ led by Yohann Benchetrit & @HubertBanville - paper: - blog: - summary: ⬇️

249,409 просмотров • 2 лет назад •via X (Twitter)

Комментарии: 10

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

1/9 How the brain represents its surrounding worlds remains largely unknown. Since the early 2000s, machine learning has been used to solve this issue and trained to decode brain activity.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

2/9 With modern AI, decoding of fMRI has greatly improved. Here, we extend this approach to MEG, a neuroimaging technique with a much high temporal resolution.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

3/9 For this, we rely on the MEG-decoding architecture we recently released ( adapt it to visual perception, and add an image decoder on top.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

4/9 We then train this pipeline on the MEG responses elicited in a rapid serial visual presentation of natural images provided by the THINGS initiative led by @martin_hebart, in which participants watch 0.5 s images every ~1.5s.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

5/9 We compare the alignment between MEG signals and a variety of image encoders, when exposed to the same images.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

6/9 We also compare a variety of design choices and finally use this Image - MEG alignment to condition the generation of plausible images. Here are some results with growing-window decoders: (Note the incorrect caption, each image lasts 500ms)

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

7/9 Overall the results are not as precise as what can be obtained with the relatively slow but spatially-precise 7T fMRI. Here are some examples obtained with a similar pipeline, trained tested on the NSD dataset, released by Thomas Naselaris and Kendrick Kay:

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

8/9 Nevertheless, the results preserve a remarkably high level of semantic features. E.g. the pandas is reconstructed as a black and white bear, the cheetah leads to a black-spotted mammals etc. We quite frankly did not expect that to be possible with MEG.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

9/9 Overall, this approach leads to the exciting possibility of understanding the real-time unfolding of visual representations in the human brain.

Фото профиля Jean-Rémi King
Jean-Rémi King2 лет назад

We’re infinitely thankful to @AIatMeta, @ENS_ULM, the THINGS initiative and, more generally, the open-source and neuroscience communities for making this work possible.

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