AI RESEARCH
CLoE: Expert Consistency Learning for Missing Modality Segmentation
arXiv CS.AI
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ArXi:2603.09316v1 Announce Type: cross Multimodal medical image segmentation often faces missing modalities at inference, which induces disagreement among modality experts and makes fusion unstable, particularly on small foreground structures. We propose Consistency Learning of Experts (CLoE), a consistency-driven framework for missing-modality segmentation that preserves strong performance when all modalities are available. CLoE formulates robustness as decision-level expert consistency control and.