MindFormer: Semantic Alignment of Multi-Subject fMRI for Brain Decoding
Research efforts for visual decoding from fMRI signals have attracted considerable attention in research community. Still multi-subject fMRI decoding with one model has been considered intractable due to the drastic variations in fMRI signals between subjects and even within the same subject across...
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Zusammenfassung: | Research efforts for visual decoding from fMRI signals have attracted
considerable attention in research community. Still multi-subject fMRI decoding
with one model has been considered intractable due to the drastic variations in
fMRI signals between subjects and even within the same subject across different
trials. To address current limitations in multi-subject brain decoding, here we
introduce a novel semantic alignment method of multi-subject fMRI signals using
so-called MindFormer. This model is specifically designed to generate
fMRI-conditioned feature vectors that can be used for conditioning Stable
Diffusion model for fMRI- to-image generation or large language model (LLM) for
fMRI-to-text generation. More specifically, MindFormer incorporates two key
innovations: 1) a subject specific token that effectively capture individual
differences in fMRI signals while synergistically combines multi subject fMRI
data for training, and 2) a novel feature embedding and training scheme based
on the IP-Adapter to extract semantically meaningful features from fMRI
signals. Our experimental results demonstrate that MindFormer generates
semantically consistent images and text across different subjects. Since our
MindFormer maintains semantic fidelity by fully utilizing the training data
across different subjects by significantly surpassing existing models in
multi-subject brain decoding, this may help deepening our understanding of
neural processing variations among individuals. |
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DOI: | 10.48550/arxiv.2405.17720 |