ViEEG: Hierarchical Visual Neural Representation for EEG Brain Decoding
Liu, Minxu, Guan, Donghai, Zheng, Chuhang, Tian, Chunwei, Wen, Jie, Zhu, Qi
–arXiv.org Artificial Intelligence
Understanding and decoding brain activity into visual representations is a fundamental challenge at the intersection of neuroscience and artificial intelligence. While EEG visual decoding has shown promise due to its non-invasive, and low-cost nature, existing methods suffer from Hierarchical Neural Encoding Neglect (HNEN) --a critical limitation where flat neural representations fail to model the brain's hierarchical visual processing hierarchy. Inspired by the hierarchical organization of visual cortex, we propose ViEEG, a neuro-inspired framework that addresses HNEN. ViEEG decomposes each visual stimulus into three biologically aligned components--contour, foreground object, and contextual scene--serving as anchors for a three-stream EEG encoder. These EEG features are progressively integrated via cross-attention routing, simulating cortical information flow from low-level to high-level vision. We further adopt hierarchical contrastive learning for EEG-CLIP representation alignment, enabling zero-shot object recognition. Extensive experiments on the THINGS-EEG dataset demonstrate that ViEEG significantly outperforms previous methods by a large margin in both subject-dependent and subject-independent settings. Results on the THINGS-MEG dataset further confirm ViEEG's generalization to different neural modalities. Our framework not only advances the performance frontier but also sets a new paradigm for EEG brain decoding.
arXiv.org Artificial Intelligence
Sep-3-2025
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- Research Report > New Finding (1.00)
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- Health & Medicine > Therapeutic Area > Neurology (1.00)
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