Vesselpose: Vessel Graph Reconstruction from Learned Voxel-wise Direction Vectors in 3D Vascular Images
arXiv cs.CV / 5/4/2026
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Key Points
- The paper introduces Vesselpose, a method for reconstructing 3D vascular networks with improved topological correctness beyond the common segment-then-fix paradigm.
- It predicts voxel-wise vessel direction vectors alongside standard vessel segmentation masks, then converts these predictions into a vascular graph using a direction-vector-guided TEASAR extension.
- Experiments show state-of-the-art results on three benchmark datasets covering both synthetic and real 3D imagery, including challenging 3D micro-CT scans of rat heart vasculature.
- The work proposes interpretable topology-error metrics—false splits and false merges—to better quantify reconstruction quality.
- Overall, the approach improves the ability to separate closely apposed vessel segments and reconstruct multiple vascular trees within a single 3D volume.
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