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Volumetrically Consistent Implicit Atlas Learning via Neural Diffeomorphic Flow for Placenta MRI

arXiv cs.CV / 3/18/2026

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Key Points

  • The paper presents a volumetrically consistent implicit model that couples reconstruction of signed distance functions with neural diffeomorphic flow to learn a common placenta template.
  • Volumetric regularization, including Jacobian-determinant and biharmonic penalties, is used to discourage folding and enforce globally coherent deformations.
  • Applied to placenta MRI, the method reconstructs individual placentas, aligns them to a population implicit template, and enables voxel-wise intensity mapping in a unified canonical space.
  • Experiments show improved geometric fidelity and volumetric alignment over surface-based implicit baselines, yielding anatomically interpretable and topologically consistent flattening for group analysis.

Abstract

Establishing dense volumetric correspondences across anatomical shapes is essential for group-level analysis but remains challenging for implicit neural representations. Most existing implicit registration methods rely on supervision near the zero-level set and thus capture only surface correspondences, leaving interior deformations under-constrained. We introduce a volumetrically consistent implicit model that couples reconstruction of signed distance functions (SDFs) with neural diffeomorphic flow to learn a shared canonical template of the placenta. Volumetric regularization, including Jacobian-determinant and biharmonic penalties, suppresses local folding and promotes globally coherent deformations. In the motivating application to placenta MRI, our formulation jointly reconstructs individual placentas, aligns them to a population-derived implicit template, and enables voxel-wise intensity mapping in a unified canonical space. Experiments on in-vivo placenta MRI scans demonstrate improved geometric fidelity and volumetric alignment over surface-based implicit baseline methods, yielding anatomically interpretable and topologically consistent flattening suitable for group analysis.