基础(证据)
图像配准
计算机科学
图像(数学)
人工智能
计算机视觉
地理
考古
作者
Lin Tian,Hastings Greer,Roland Kwitt,François‐Xavier Vialard,Raúl San Jośe Estépar,Sylvain Bouix,R. Jarrett Rushmore,Marc Niethammer
出处
期刊:Cornell University - arXiv
日期:2024-03-08
标识
DOI:10.48550/arxiv.2403.05780
摘要
Conventional medical image registration approaches directly optimize over the parameters of a transformation model. These approaches have been highly successful and are used generically for registrations of different anatomical regions. Recent deep registration networks are incredibly fast and accurate but are only trained for specific tasks. Hence, they are no longer generic registration approaches. We therefore propose uniGradICON, a first step toward a foundation model for registration providing 1) great performance \emph{across} multiple datasets which is not feasible for current learning-based registration methods, 2) zero-shot capabilities for new registration tasks suitable for different acquisitions, anatomical regions, and modalities compared to the training dataset, and 3) a strong initialization for finetuning on out-of-distribution registration tasks. UniGradICON unifies the speed and accuracy benefits of learning-based registration algorithms with the generic applicability of conventional non-deep-learning approaches. We extensively trained and evaluated uniGradICON on twelve different public datasets. Our code and the uniGradICON model are available at https://github.com/uncbiag/uniGradICON.
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