VFGS-Net:用于保持拓扑结构的视网膜血管分割的频率引导状态空间学习 / VFGS-Net: Frequency-Guided State-Space Learning for Topology-Preserving Retinal Vessel Segmentation
1️⃣ 一句话总结
这篇论文提出了一种名为VFGS-Net的新型神经网络,它通过结合频率域分析和全局空间建模,能更准确地分割出视网膜图像中形态复杂、对比度低的血管,尤其擅长保留细微毛细血管和血管网络的整体连通性。
Accurate retinal vessel segmentation is a critical prerequisite for quantitative analysis of retinal images and computer-aided diagnosis of vascular diseases such as diabetic retinopathy. However, the elongated morphology, wide scale variation, and low contrast of retinal vessels pose significant challenges for existing methods, making it difficult to simultaneously preserve fine capillaries and maintain global topological continuity. To address these challenges, we propose the Vessel-aware Frequency-domain and Global Spatial modeling Network (VFGS-Net), an end-to-end segmentation framework that seamlessly integrates frequency-aware feature enhancement, dual-path convolutional representation learning, and bidirectional asymmetric spatial state-space modeling within a unified architecture. Specifically, VFGS-Net employs a dual-path feature convolution module to jointly capture fine-grained local textures and multi-scale contextual semantics. A novel vessel-aware frequency-domain channel attention mechanism is introduced to adaptively reweight spectral components, thereby enhancing vessel-relevant responses in high-level features. Furthermore, at the network bottleneck, we propose a bidirectional asymmetric Mamba2-based spatial modeling block to efficiently capture long-range spatial dependencies and strengthen the global continuity of vascular structures. Extensive experiments on four publicly available retinal vessel datasets demonstrate that VFGS-Net achieves competitive or superior performance compared to state-of-the-art methods. Notably, our model consistently improves segmentation accuracy for fine vessels, complex branching patterns, and low-contrast regions, highlighting its robustness and clinical potential.
VFGS-Net:用于保持拓扑结构的视网膜血管分割的频率引导状态空间学习 / VFGS-Net: Frequency-Guided State-Space Learning for Topology-Preserving Retinal Vessel Segmentation
这篇论文提出了一种名为VFGS-Net的新型神经网络,它通过结合频率域分析和全局空间建模,能更准确地分割出视网膜图像中形态复杂、对比度低的血管,尤其擅长保留细微毛细血管和血管网络的整体连通性。
源自 arXiv: 2602.10978