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Shrinking the Teacher: An Adaptive Teaching Paradigm for Asymmetric EEG-Vision Alignment

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Decoding visual features from EEG signals is a central challenge in neuroscience, with cross-modal alignment as the dominant approach. We argue that the relationship between visual and brain modalities is fundamentally asymmetric, characterized by two critical gaps: a Fidelity Gap (stemming from EEG's inherent noise and signal degradation, vs. vision's high-fidelity features) and a Semantic Gap (arising from EEG's shallow conceptual representation, vs. vision's rich semantic depth). Previous methods often overlook this asymmetry, forcing alignment between the two modalities as if they were equal partners and thereby leading to poor generalization. To address this, we propose the adaptive teaching paradigm. This paradigm empowers the ``teacher" modality (vision) to dynamically shrink and adjust its knowledge structure under task guidance, tailoring its semantically dense features to match the ``student" modality (EEG)'s capacity. We implement this paradigm with the ShrinkAdapter, a simple yet effective module featuring a residual-free design and a bottleneck structure. Through extensive experiments, we validate the underlying rationale and effectiveness of our paradigm. Our method achieves a top-1 accuracy of 60.2\% on the zero-shot brain-to-image retrieval task, surpassing previous state-of-the-art methods by a margin of 9.8\%. Our work introduces a new perspective for asymmetric alignment: the teacher must shrink and adapt to bridge the vision-brain gap.

Lukun Wu, Jie Li, Ziqi Ren, Kaifan Zhang, Xinbo Gao• 2025

Related benchmarks

TaskDatasetResultRank
Brain-to-image retrievalTHINGS-EEG2 Intra-subject v1 (test)
Top-1 Accuracy68
77
Brain-to-image retrievalTHINGS-MEG Intra-subject (test)
Top-1 Accuracy56
30
Brain-to-image retrievalTHINGS-MEG Inter-subject
Average Top-1 Score6
26
Brain-to-image retrievalTHINGS-EEG2 Inter-subject v1 (test)
Top-1 Accuracy17
17
Image RetrievalTHINGS-EEG (test)
Top-1 Accuracy (Subject 1)53
15
Image RetrievalTHINGS-MEG (Subject 2)
Top-1 Accuracy61.5
10
Image RetrievalTHINGS-MEG (Average)
Top-1 Accuracy32.3
10
Image RetrievalTHINGS-MEG (Subject 1)
Top-1 Accuracy15.5
10
Image RetrievalTHINGS-MEG (Subject 3)
Top-1 Accuracy33
10
Image RetrievalTHINGS-MEG (Subject 4)
Top-1 Accuracy19
10
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