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PCANet: Pyramid Context-aware Network for Retinal Vessel Segmentation

机译:PCANet:金字塔上下文感知网络,用于视网膜血管分割

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Automated retinal vessel segmentation plays an important role in the diagnosis of some diseases such as diabetes, arteriosclerosis and hypertension. Recent works attempt to improve segmentation performance by exploring either global or local contexts. However, the context demands are varying from regions in each image and different levels of network. To address these problems, we propose Pyramid Context-aware Network (PCANet), which can adaptively capture multi-scale context representations. Specifically, PCANet is composed of multiple Adaptive Context-aware (ACA) blocks arranged in parallel, each of which can adaptively obtain the context-aware features by estimating affinity coefficients at a specific scale under the guidance of global contextual dependencies. Meanwhile, we import ACA blocks with specific scales in different levels of the network to obtain a coarse-to-fine result. Furthermore, an integrated test-time augmentation method is developed to further boost the performance of PCANet. Finally, extensive experiments demonstrate the effectiveness of the proposed PCANet, and state-of-the-art performances are achieved with AUCs of 0.9866, 0.9886 and F1 Scores of 0.8274, 0.8371 on two public datasets, DRIVE and STARE, respectively.
机译:自动视网膜血管分割在诊断糖尿病,动脉硬化和高血压等诊断中起重要作用。最近的作品试图通过探索全球或本地环境来改善细分绩效。但是,上下文要求从每个图像和不同网络中的地区变化。为了解决这些问题,我们提出了金字塔上下文感知网络(PCANet),可以自适应地捕获多尺度上下文表示。具体地,PCanet由并行排列的多个自适应上下文感知(ACA)块组成,每个块可以通过在全球上下文依赖性的指导下估计特定规模的亲和度系数来自适应地获得上下文感知功能。同时,我们在网络的不同级别中导入具有特定尺度的ACA块,以获得粗略效果。此外,开发了一种集成的测试时间增强方法以进一步提高PCANet的性能。最后,广泛的实验证明了所提出的PCANet的有效性,以及在两个公共数据集,驱动和凝视上的0.9866,0.9886和F1分数为0.9866,0.9886和F1分数的最新性能。

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