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ContraReg: Contrastive Learning of Multi-modality Unsupervised Deformable Image Registration

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arxiv 2206.13434 v1 pith:3LCP37DH submitted 2022-06-27 cs.CV cs.LG

ContraReg: Contrastive Learning of Multi-modality Unsupervised Deformable Image Registration

classification cs.CV cs.LG
keywords contraregmulti-modalityregistrationacrosscontrastivedeformabledeformationsinter-domain
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Establishing voxelwise semantic correspondence across distinct imaging modalities is a foundational yet formidable computer vision task. Current multi-modality registration techniques maximize hand-crafted inter-domain similarity functions, are limited in modeling nonlinear intensity-relationships and deformations, and may require significant re-engineering or underperform on new tasks, datasets, and domain pairs. This work presents ContraReg, an unsupervised contrastive representation learning approach to multi-modality deformable registration. By projecting learned multi-scale local patch features onto a jointly learned inter-domain embedding space, ContraReg obtains representations useful for non-rigid multi-modality alignment. Experimentally, ContraReg achieves accurate and robust results with smooth and invertible deformations across a series of baselines and ablations on a neonatal T1-T2 brain MRI registration task with all methods validated over a wide range of deformation regularization strengths.

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