FMIR, a foundation model-based Image Registration Framework for Robust Image Registration
- MedIm
Deep learning has revolutionized medical image registration by achieving unprecedented speeds, yet its clinical application is hindered by a limited ability to generalize beyond the training domain, a critical weakness given the typically small scale of medical datasets. In this paper, we introduce FMIR, a foundation model-based registration framework that overcomes thisthis http URLa foundation model-based feature encoder for extracting anatomical structures with a general registration head, and trained with a channel regularization strategy on just a single dataset, FMIR achieves state-of-the-art(SOTA) in-domain performance while maintaining robust registration on out-of-domainthis http URLapproach demonstrates a viable path toward building generalizable medical imaging foundation models with limited resources. The code is available atthis https URL.
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