English

Scaling laws for decoding images from brain activity

Image and Video Processing 2025-01-29 v2 Artificial Intelligence Machine Learning Neurons and Cognition

Abstract

Generative AI has recently propelled the decoding of images from brain activity. How do these approaches scale with the amount and type of neural recordings? Here, we systematically compare image decoding from four types of non-invasive devices: electroencephalography (EEG), magnetoencephalography (MEG), high-field functional Magnetic Resonance Imaging (3T fMRI) and ultra-high field (7T) fMRI. For this, we evaluate decoding models on the largest benchmark to date, encompassing 8 public datasets, 84 volunteers, 498 hours of brain recording and 2.3 million brain responses to natural images. Unlike previous work, we focus on single-trial decoding performance to simulate real-time settings. This systematic comparison reveals three main findings. First, the most precise neuroimaging devices tend to yield the best decoding performances, when the size of the training sets are similar. However, the gain enabled by deep learning - in comparison to linear models - is obtained with the noisiest devices. Second, we do not observe any plateau of decoding performance as the amount of training data increases. Rather, decoding performance scales log-linearly with the amount of brain recording. Third, this scaling law primarily depends on the amount of data per subject. However, little decoding gain is observed by increasing the number of subjects. Overall, these findings delineate the path most suitable to scale the decoding of images from non-invasive brain recordings.

Keywords

Cite

@article{arxiv.2501.15322,
  title  = {Scaling laws for decoding images from brain activity},
  author = {Hubert Banville and Yohann Benchetrit and Stéphane d'Ascoli and Jérémy Rapin and Jean-Rémi King},
  journal= {arXiv preprint arXiv:2501.15322},
  year   = {2025}
}

Comments

29 pages, 14 figures, fixed typo in author list

R2 v1 2026-06-28T21:17:49.871Z