GeoTopoDiff: Learning Geometry--Topology Graph Priors through Boundary-Constrained Mixed Diffusion for Sparse-Slice 3D Porous Reconstruction
arXiv cs.CV / 5/6/2026
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Key Points
- GeoTopoDiff is a diffusion-based graph framework designed to reconstruct large-scale 3D porous microstructures from sparse CT slices while preserving both pore geometry and pore-throat topology.
- It shifts diffusion prior learning from a voxel space to a mixed graph state space that jointly represents continuous pore morphology and discrete connectivity.
- The method introduces a topology-aware partial graph prior derived from sparsely observed CT slices to constrain the reverse denoising (generation) process.
- Experiments on anisotropic PTFE and Fontainebleau sandstone report average improvements of 19.8% for morphology-related errors and 36.5% for topology-sensitive transport errors.
- The authors release models and code publicly to support further research on diffusion models for 3D porous microstructure simulation.
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