AdamFlow: Adam-based Wasserstein Gradient Flows for Surface Registration in Medical Imaging

2026-04-02Computer Vision and Pattern Recognition

Computer Vision and Pattern Recognition
AI summary

The authors developed a new method to align 3D shapes of body parts, which is important for medical image analysis. Their approach treats the shapes as probability distributions and measures differences using a fast mathematical tool called sliced Wasserstein distance. They also introduced a new optimization algorithm, AdamFlow, that improves how this distance is minimized. Their method is both fast and accurate for different types of shape alignments on various anatomical structures.

surface registrationanatomical shape analysissurface meshesprobability measuressliced Wasserstein distancedistributional optimisationAdam optimisationAdamFlowaffine registrationnon-rigid registration
Authors
Qiang Ma, Qingjie Meng, Xin Hu, Yicheng Wu, Wenjia Bai
Abstract
Surface registration plays an important role for anatomical shape analysis in medical imaging. Existing surface registration methods often face a trade-off between efficiency and robustness. Local point matching methods are computationally efficient, but vulnerable to noise and initialisation. Methods designed for global point set alignment tend to incur a high computational cost. To address the challenge, here we present a fast surface registration method, which formulates surface meshes as probability measures and surface registration as a distributional optimisation problem. The discrepancy between two meshes is measured using an efficient sliced Wasserstein distance with log-linear computational complexity. We propose a novel optimisation method, AdamFlow, which generalises the well-known Adam optimisation method from the Euclidean space to the probability space for minimising the sliced Wasserstein distance. We theoretically analyse the asymptotic convergence of AdamFlow and empirically demonstrate its superior performance in both affine and non-rigid surface registration across various anatomical structures.