HyFI: Hyperbolic Feature Interpolation for Brain-Vision Alignment
arXiv cs.AI / 3/25/2026
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Key Points
- The paper introduces HyFI (Hyperbolic Feature Interpolation), a framework for aligning brain signals with visual features by addressing both a modality gap and the entanglement of semantic vs. perceptual representations.
- HyFI uses hyperbolic space to interpolate between semantic and perceptual visual features along hyperbolic geodesics, which geometrically compress/fuse information to better match the limited expressiveness of brain signals.
- The method is evaluated on zero-shot brain-to-image retrieval tasks, showing state-of-the-art results with Top-1 accuracy gains of up to +17.3% on THINGS-EEG and +9.1% on THINGS-MEG.
- The approach is positioned as improving brain-to-visual alignment compared with prior methods that independently map neural activity to features extracted from pre-trained vision models.
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