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Main Authors: Ahmed, Iftekhar, Absar, Shakib, Sami, Aftar Ahmad, Sakib, Shadman, Biswas, Debojyoti, Mostafa, Seraj Al Mahmud
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.19136
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author Ahmed, Iftekhar
Absar, Shakib
Sami, Aftar Ahmad
Sakib, Shadman
Biswas, Debojyoti
Mostafa, Seraj Al Mahmud
author_facet Ahmed, Iftekhar
Absar, Shakib
Sami, Aftar Ahmad
Sakib, Shadman
Biswas, Debojyoti
Mostafa, Seraj Al Mahmud
contents Precise segmentation of retinal arteries and veins carries the diagnosis of systemic cardiovascular conditions. However, standard convolutional architectures often yield topologically disjointed segmentations, characterized by gaps and discontinuities that render reliable graph-based clinical analysis impossible despite high pixel-level accuracy. To address this, we introduce a topology-aware framework engineered to maintain vascular connectivity. Our architecture fuses a Topological Feature Fusion Module (TFFM) that maps local feature representations into a latent graph space, deploying Graph Attention Networks to capture global structural dependencies often missed by fixed receptive fields. Furthermore, we drive the learning process with a hybrid objective function, coupling Tversky loss for class imbalance with soft clDice loss to explicitly penalize topological disconnects. Evaluation on the Fundus-AVSeg dataset reveals state-of-the-art performance, achieving a combined Dice score of 90.97% and a 95% Hausdorff Distance of 3.50 pixels. Notably, our method decreases vessel fragmentation by approximately 38% relative to baselines, yielding topologically coherent vascular trees viable for automated biomarker quantification. We open-source our code at https://tffm-module.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2601_19136
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TFFM: Topology-Aware Feature Fusion Module via Latent Graph Reasoning for Retinal Vessel Segmentation
Ahmed, Iftekhar
Absar, Shakib
Sami, Aftar Ahmad
Sakib, Shadman
Biswas, Debojyoti
Mostafa, Seraj Al Mahmud
Computer Vision and Pattern Recognition
Precise segmentation of retinal arteries and veins carries the diagnosis of systemic cardiovascular conditions. However, standard convolutional architectures often yield topologically disjointed segmentations, characterized by gaps and discontinuities that render reliable graph-based clinical analysis impossible despite high pixel-level accuracy. To address this, we introduce a topology-aware framework engineered to maintain vascular connectivity. Our architecture fuses a Topological Feature Fusion Module (TFFM) that maps local feature representations into a latent graph space, deploying Graph Attention Networks to capture global structural dependencies often missed by fixed receptive fields. Furthermore, we drive the learning process with a hybrid objective function, coupling Tversky loss for class imbalance with soft clDice loss to explicitly penalize topological disconnects. Evaluation on the Fundus-AVSeg dataset reveals state-of-the-art performance, achieving a combined Dice score of 90.97% and a 95% Hausdorff Distance of 3.50 pixels. Notably, our method decreases vessel fragmentation by approximately 38% relative to baselines, yielding topologically coherent vascular trees viable for automated biomarker quantification. We open-source our code at https://tffm-module.github.io/.
title TFFM: Topology-Aware Feature Fusion Module via Latent Graph Reasoning for Retinal Vessel Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.19136