English

Simple Models, Rich Representations: Visual Decoding from Primate Intracortical Neural Signals

Neurons and Cognition 2026-01-19 v1 Computer Vision and Pattern Recognition

Abstract

Understanding how neural activity gives rise to perception is a central challenge in neuroscience. We address the problem of decoding visual information from high-density intracortical recordings in primates, using the THINGS Ventral Stream Spiking Dataset. We systematically evaluate the effects of model architecture, training objectives, and data scaling on decoding performance. Results show that decoding accuracy is mainly driven by modeling temporal dynamics in neural signals, rather than architectural complexity. A simple model combining temporal attention with a shallow MLP achieves up to 70% top-1 image retrieval accuracy, outperforming linear baselines as well as recurrent and convolutional approaches. Scaling analyses reveal predictable diminishing returns with increasing input dimensionality and dataset size. Building on these findings, we design a modular generative decoding pipeline that combines low-resolution latent reconstruction with semantically conditioned diffusion, generating plausible images from 200 ms of brain activity. This framework provides principles for brain-computer interfaces and semantic neural decoding.

Keywords

Cite

@article{arxiv.2601.11108,
  title  = {Simple Models, Rich Representations: Visual Decoding from Primate Intracortical Neural Signals},
  author = {Matteo Ciferri and Matteo Ferrante and Nicola Toschi},
  journal= {arXiv preprint arXiv:2601.11108},
  year   = {2026}
}

Comments

Presented at "Foundation Models for the Brain and Body" - NeurIPS 2025 Workshop

R2 v1 2026-07-01T09:07:14.863Z