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

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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.

Athena Taymourtash, S. Mazdak Abulnaga, Esra Abaci Turk, P. Ellen Grant, Polina Golland• 2026

Related benchmarks

TaskDatasetResultRank
Surface ReconstructionPlacenta dataset
Chamfer-L20.12
5
3D Mesh ReconstructionPlacenta MRI Dataset
FlipRate4.04
4
Geometric Distortion AnalysisPlacenta
Volume Distortion1.94
4
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