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Main Authors: Liu, Yaoyu, Zhang, Minghui, He, Junjun, Gu, Yun
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.14909
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author Liu, Yaoyu
Zhang, Minghui
He, Junjun
Gu, Yun
author_facet Liu, Yaoyu
Zhang, Minghui
He, Junjun
Gu, Yun
contents Automatic extraction of vessel skeletons is crucial for many clinical applications. However, achieving topologically faithful delineation of thin vessel skeletons remains highly challenging, primarily due to frequent discontinuities and the presence of spurious skeleton segments. To address these difficulties, we propose TopoVST, a topology-fidelitious vessel skeleton tracker. TopoVST constructs multi-scale sphere graphs to sample the input image and employs graph neural networks to jointly estimate tracking directions and vessel radii. The utilization of multi-scale representations is enhanced through a gating-based feature fusion mechanism, while the issue of class imbalance during training is mitigated by embedding a geometry-aware weighting scheme into the directional loss. In addition, we design a wave-propagation-based skeleton tracking algorithm that explicitly mitigates the generation of spurious skeletons through space-occupancy filtering. We evaluate TopoVST on two vessel datasets with different geometries. Extensive comparisons with state-of-the-art baselines demonstrate that TopoVST achieves competitive performance in both overlapping and topological metrics. Our source code is available at: https://github.com/EndoluminalSurgicalVision-IMR/TopoVST.
format Preprint
id arxiv_https___arxiv_org_abs_2603_14909
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TopoVST: Toward Topology-fidelitous Vessel Skeleton Tracking
Liu, Yaoyu
Zhang, Minghui
He, Junjun
Gu, Yun
Computer Vision and Pattern Recognition
Automatic extraction of vessel skeletons is crucial for many clinical applications. However, achieving topologically faithful delineation of thin vessel skeletons remains highly challenging, primarily due to frequent discontinuities and the presence of spurious skeleton segments. To address these difficulties, we propose TopoVST, a topology-fidelitious vessel skeleton tracker. TopoVST constructs multi-scale sphere graphs to sample the input image and employs graph neural networks to jointly estimate tracking directions and vessel radii. The utilization of multi-scale representations is enhanced through a gating-based feature fusion mechanism, while the issue of class imbalance during training is mitigated by embedding a geometry-aware weighting scheme into the directional loss. In addition, we design a wave-propagation-based skeleton tracking algorithm that explicitly mitigates the generation of spurious skeletons through space-occupancy filtering. We evaluate TopoVST on two vessel datasets with different geometries. Extensive comparisons with state-of-the-art baselines demonstrate that TopoVST achieves competitive performance in both overlapping and topological metrics. Our source code is available at: https://github.com/EndoluminalSurgicalVision-IMR/TopoVST.
title TopoVST: Toward Topology-fidelitous Vessel Skeleton Tracking
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.14909