| Literature DB >> 34367471 |
Zhe Xu1,2, Jiangpeng Yan1, Jie Luo2, William Wells2, Xiu Li1, Jayender Jagadeesan2.
Abstract
The loss function of an unsupervised multimodal image registration framework has two terms, i.e., a metric for similarity measure and regularization. In the deep learning era, researchers proposed many approaches to automatically learn the similarity metric, which has been shown effective in improving registration performance. However, for the regularization term, most existing multimodal registration approaches still use a hand-crafted formula to impose artificial properties on the estimated deformation field. In this work, we propose a unimodal cyclic regularization training pipeline, which learns task-specific prior knowledge from simpler unimodal registration, to constrain the deformation field of multimodal registration. In the experiment of abdominal CT-MR registration, the proposed method yields better results over conventional regularization methods, especially for severely deformed local regions.Entities:
Keywords: Multimodal image registration; regularization; unsupervised image registration
Year: 2021 PMID: 34367471 PMCID: PMC8340621 DOI: 10.1109/isbi48211.2021.9433926
Source DB: PubMed Journal: Proc IEEE Int Symp Biomed Imaging ISSN: 1945-7928