Optimized two-stage AI-based Neural Decoding for Enhanced Visual Stimulus Reconstruction from fMRI Data
Lorenzo Veronese, Andrea Moglia, Luca Mainardi, Pietro Cerveri

TL;DR
This paper introduces a non-linear deep network architecture to improve neural decoding of visual stimuli from noisy fMRI data, enhancing reconstruction quality by leveraging two-stage generative AI models.
Contribution
It proposes a novel non-linear deep network for better fMRI latent space representation, improving visual reconstruction accuracy over traditional linear models.
Findings
Structural similarity improved by 2% over state-of-the-art
Semantic accuracy increased by 4%
First-stage prediction is crucial for high structural fidelity
Abstract
AI-based neural decoding reconstructs visual perception by leveraging generative models to map brain activity, measured through functional MRI (fMRI), into latent hierarchical representations. Traditionally, ridge linear models transform fMRI into a latent space, which is then decoded using latent diffusion models (LDM) via a pre-trained variational autoencoder (VAE). Due to the complexity and noisiness of fMRI data, newer approaches split the reconstruction into two sequential steps, the first one providing a rough visual approximation, the second on improving the stimulus prediction via LDM endowed by CLIP embeddings. This work proposes a non-linear deep network to improve fMRI latent space representation, optimizing the dimensionality alike. Experiments on the Natural Scenes Dataset showed that the proposed architecture improved the structural similarity of the reconstructed image by…
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Taxonomy
TopicsCCD and CMOS Imaging Sensors
MethodsDiffusion · Contrastive Language-Image Pre-training
