Forecasting Epileptic Seizures from Contactless Camera via Cross-Species Transfer Learning
arXiv cs.CV / 3/16/2026
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Key Points
- The paper formulates a novel task of video-based epileptic seizure forecasting, using short pre-ictal video segments to predict whether a seizure will occur within the next five seconds.
- It proposes a cross-species transfer learning framework that pretrains on large-scale rodent video data to learn seizure-related behavioral dynamics that generalize across species.
- Experimental results show over 70% prediction accuracy in a strictly video-only setting and outperform existing baselines.
- The findings highlight the potential of cross-species learning for non-invasive, scalable early-warning systems for epilepsy.
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