MindShot: A Few-Shot Brain Decoding Framework via Transferring Cross-Subject Prior and Distilling Frequency Domain Knowledge

arXiv — cs.CVMonday, November 24, 2025 at 5:00:00 AM
  • A new framework named MindShot has been introduced to enhance brain decoding by reconstructing visual stimuli from brain signals, addressing challenges like individual differences and high data collection costs. This two-stage framework includes a Multi-Subject Pretraining (MSP) stage and a Fourier-based cross-subject Knowledge Distillation (FKD) stage, aiming to improve adaptability for clinical applications.
  • The development of MindShot is significant as it seeks to simplify the brain decoding process, making it more accessible for clinical scenarios. By leveraging cross-subject prior knowledge and reducing inter-individual differences, this framework could potentially lead to more effective and efficient brain signal interpretation, which is crucial for advancements in neuroimaging and related fields.
  • This innovation reflects a broader trend in artificial intelligence and neuroscience, where frameworks like MindShot and others are increasingly focusing on reducing reliance on extensive subject-specific data. The integration of models such as CLIP in various contexts, including semantic segmentation and video anomaly detection, highlights the growing importance of cross-domain knowledge transfer and the need for adaptable AI solutions in complex tasks.
— via World Pulse Now AI Editorial System

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