Foundation Model Guided Dual-Branch Co-Adaptation for Source-Free EEG Decoding
Peiliang Gong, Han Zhang, Zhen Jiang, Chenyu Liu, Ziyu Jia, Xinliang Zhou, Daoqiang Zhang, Xiaoli Li

TL;DR
This paper introduces FUSED, a novel framework that leverages large-scale EEG foundation models with dual-branch co-adaptation and pseudo-label refinement to improve source-free cross-subject EEG decoding.
Contribution
It is the first to integrate EEG foundation models into source-free domain adaptation, enhancing cross-domain generalization and decoding accuracy.
Findings
Achieves state-of-the-art results across multiple EEG paradigms.
Demonstrates robustness and improved accuracy in cross-subject EEG decoding.
Validates the effectiveness of foundation-guided synergy in EEG analysis.
Abstract
Source-free domain adaptation (SFDA) provides a practical solution to cross-subject EEG decoding by adapting source-pretrained models to unlabeled target domains without accessing source data. However, existing SFDA methods rely solely on the limited internal knowledge of source-pretrained models, leading to inferior cross-domain generalization and unreliable pseudo-labels. Although EEG Foundation Models (FMs) pretrained on large-scale data exhibit strong generalizability, their potential in SFDA remains largely unexplored. To this end, we propose FUSED, a Foundation-guided Source-free EEG Decoding framework that integrates a large-scale FM with a compact Specialist Model (SM) via dual-branch co-adaptation. Specifically, we introduce a Co-adaptation mechanism equipping both branches with linear and prototype views, enabling cross-branch pseudo-label generation. Additionally, we design a…
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