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SuperWarp: Supervised Learning and Warping on U-Net for Invariant Subvoxel-Precise Registration.

Authors :
Young SI
Balbastre Y
Dalca AV
Wells WM
Iglesias JE
Fischl B
Source :
Biomedical image registration : 10th international workshop, WBIR 2022, Munich, Germany, July 10-12, 2022 : proceedings. WBIR (Workshop : 2006- ) (10th : 2022 : Munich, Germany) [Biomed Image Regist (2022)] 2022 Jul; Vol. 13386, pp. 103-115. Date of Electronic Publication: 2022 Jul 09.
Publication Year :
2022

Abstract

In recent years, learning-based image registration methods have gradually moved away from direct supervision with target warps to instead use self-supervision, with excellent results in several registration benchmarks. These approaches utilize a loss function that penalizes the intensity differences between the fixed and moving images, along with a suitable regularizer on the deformation. However, since images typically have large untextured regions, merely maximizing similarity between the two images is not sufficient to recover the true deformation. This problem is exacerbated by texture in other regions, which introduces severe non-convexity into the landscape of the training objective and ultimately leads to overfitting. In this paper, we argue that the relative failure of supervised registration approaches can in part be blamed on the use of regular U-Nets, which are jointly tasked with feature extraction, feature matching and deformation estimation. Here, we introduce a simple but crucial modification to the U-Net that disentangles feature extraction and matching from deformation prediction, allowing the U-Net to warp the features, across levels, as the deformation field is evolved. With this modification, direct supervision using target warps begins to outperform self-supervision approaches that require segmentations, presenting new directions for registration when images do not have segmentations. We hope that our findings in this preliminary workshop paper will re-ignite research interest in supervised image registration techniques. Our code is publicly available from http://github.com/balbasty/superwarp.

Details

Language :
English
Volume :
13386
Database :
MEDLINE
Journal :
Biomedical image registration : 10th international workshop, WBIR 2022, Munich, Germany, July 10-12, 2022 : proceedings. WBIR (Workshop : 2006- ) (10th : 2022 : Munich, Germany)
Publication Type :
Academic Journal
Accession number :
36383500
Full Text :
https://doi.org/10.1007/978-3-031-11203-4_12