TL;DR
StableMind introduces a regularized adaptation framework for cross-subject fMRI decoding that enhances stability and reliability with limited data, outperforming existing methods.
Contribution
It proposes novel techniques for brain representation stabilization and image supervision reliability in source-free, limited-data fMRI adaptation.
Findings
Achieves 84.02% image retrieval accuracy and 81.66% brain retrieval accuracy.
Surpasses state-of-the-art by 5.71% in brain retrieval accuracy.
Uses fewer trainable parameters for adaptation.
Abstract
Existing cross-subject fMRI decoding methods typically train a model on multiple scanned subjects and then adapt it to a new subject using substantial paired fMRI-image data. However, in realistic scenarios, new-subject fMRI data are often limited due to costly data acquisition, and raw data from previous subjects may be inaccessible, leading existing methods to suffer performance degradation during new-subject adaptation. In this paper, we identify that this degradation stems from two key issues: brain-side instability caused by large subject differences in fMRI responses, and image-side supervision unreliability caused by fine-grained visual details that are not reliably supported by limited fMRI signals. To address these challenges, we propose StableMind, a regularized adaptation framework designed to improve brain-side representation stability and image-side supervision reliability.…
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