English

Double-Uncertainty Guided Spatial and Temporal Consistency Regularization Weighting for Learning-based Abdominal Registration

Computer Vision and Pattern Recognition 2022-03-03 v3 Image and Video Processing

Abstract

In order to tackle the difficulty associated with the ill-posed nature of the image registration problem, regularization is often used to constrain the solution space. For most learning-based registration approaches, the regularization usually has a fixed weight and only constrains the spatial transformation. Such convention has two limitations: (i) Besides the laborious grid search for the optimal fixed weight, the regularization strength of a specific image pair should be associated with the content of the images, thus the "one value fits all" training scheme is not ideal; (ii) Only spatially regularizing the transformation may neglect some informative clues related to the ill-posedness. In this study, we propose a mean-teacher based registration framework, which incorporates an additional temporal consistency regularization term by encouraging the teacher model's prediction to be consistent with that of the student model. More importantly, instead of searching for a fixed weight, the teacher enables automatically adjusting the weights of the spatial regularization and the temporal consistency regularization by taking advantage of the transformation uncertainty and appearance uncertainty. Extensive experiments on the challenging abdominal CT-MRI registration show that our training strategy can promisingly advance the original learning-based method in terms of efficient hyperparameter tuning and a better tradeoff between accuracy and smoothness.

Keywords

Cite

@article{arxiv.2107.02433,
  title  = {Double-Uncertainty Guided Spatial and Temporal Consistency Regularization Weighting for Learning-based Abdominal Registration},
  author = {Zhe Xu and Jie Luo and Donghuan Lu and Jiangpeng Yan and Sarah Frisken and Jayender Jagadeesan and William Wells and Xiu Li and Yefeng Zheng and Raymond Tong},
  journal= {arXiv preprint arXiv:2107.02433},
  year   = {2022}
}

Comments

11 pages

R2 v1 2026-06-24T03:55:19.891Z