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Unsupervised Deformable Image Registration with Structural Nonparametric Smoothing

Main:12 Pages
9 Figures
Bibliography:5 Pages
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Abstract

Learning-based deformable image registration (DIR) accelerates alignment by amortizing traditional optimization via neural networks. Label supervision further enhances accuracy, enabling efficient and precise nonlinear alignment of unseen scans. However, images with sparse features amid large smooth regions, such as retinal vessels, introduce aperture and large-displacement challenges that unsupervised DIR methods struggle to address. This limitation occurs because neural networks predict deformation fields in a single forward pass, leaving fields unconstrained post-training and shifting the regularization burden entirely to network weights. To address these issues, we introduce SmoothProper, a plug-and-play neural module enforcing smoothness and promoting message passing within the network's forward pass. By integrating a duality-based optimization layer with tailored interaction terms, SmoothProper efficiently propagates flow signals across spatial locations, enforces smoothness, and preserves structural consistency. It is model-agnostic, seamlessly integrates into existing registration frameworks with minimal parameter overhead, and eliminates regularizer hyperparameter tuning. Preliminary results on a retinal vessel dataset exhibiting aperture and large-displacement challenges demonstrate our method reduces registration error to 1.88 pixels on 2912x2912 images, marking the first unsupervised DIR approach to effectively address both challenges. The source code will be available atthis https URL.

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@article{zhang2025_2506.10813,
  title={ Unsupervised Deformable Image Registration with Structural Nonparametric Smoothing },
  author={ Hang Zhang and Xiang Chen and Renjiu Hu and Rongguang Wang and Jinwei Zhang and Min Liu and Yaonan Wang and Gaolei Li and Xinxing Cheng and Jinming Duan },
  journal={arXiv preprint arXiv:2506.10813},
  year={ 2025 }
}
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