AI RESEARCH
CRISP: Rank-Guided Iterative Squeezing for Robust Medical Image Segmentation under Domain Shift
arXiv CS.CV
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ArXi:2604.05409v1 Announce Type: new Distribution shift in medical imaging remains a central bottleneck for the clinical translation of medical AI. Failure to address it can lead to severe performance degradation in unseen environments and exacerbate health inequities. Existing methods for domain adaptation are inherently limited by exhausting predefined possibilities through simulated shifts or pseudo-supervision. Such strategies struggle in the open-ended and unpredictable real world, where distribution shifts are effectively infinite. To address this challenge, we.