Wu_DeNVeR_Deformable_Neural_Vessel_Representations_for_Unsupervised_Video_Vessel_Segmentation@CVPR2025@CVF

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#1 DeNVeR: Deformable Neural Vessel Representations for Unsupervised Video Vessel Segmentation [PDF1] [Copy] [Kimi1] [REL]

Authors: Chun-Hung Wu, Shih-Hong Chen, Chih-Yao Hu, Hsin-Yu Wu, Kai-Hsin Chen, Yu-You Chen, Chih-Hai Su, Chih-Kuo Lee, Yu-Lun Liu

This paper presents **De**formable **N**eural **Ve**ssel **R**epresentations (DeNVeR), an unsupervised approach for vessel segmentation in X-ray angiography videos without annotated ground truth. DeNVeR utilizes optical flow and layer separation techniques, enhancing segmentation accuracy and adaptability through test-time training. Key contributions include a novel layer separation bootstrapping technique, a parallel vessel motion loss, and the integration of Eulerian motion fields for modeling complex vessel dynamics. A significant component of this research is the introduction of the XACV dataset, the first X-ray angiography coronary video dataset with high-quality, manually labeled segmentation ground truth. Extensive evaluations on both XACV and CADICA datasets demonstrate that DeNVeR outperforms current state-of-the-art methods in vessel segmentation accuracy and generalization capability while maintaining temporal coherency.

Subject: CVPR.2025 - Poster