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Boosting Connectivity in Retinal Vessel Segmentation via a Recursive Semantics-Guided Network

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arxiv 2004.12776 v1 pith:P5TBRDC5 submitted 2020-04-24 eess.IV cs.CV

Boosting Connectivity in Retinal Vessel Segmentation via a Recursive Semantics-Guided Network

classification eess.IV cs.CV
keywords networkrecursiveretinalsegmentationsemantics-guidedbeenboostingconnectivity
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Many deep learning based methods have been proposed for retinal vessel segmentation, however few of them focus on the connectivity of segmented vessels, which is quite important for a practical computer-aided diagnosis system on retinal images. In this paper, we propose an efficient network to address this problem. A U-shape network is enhanced by introducing a semantics-guided module, which integrates the enriched semantics information to shallow layers for guiding the network to explore more powerful features. Besides, a recursive refinement iteratively applies the same network over the previous segmentation results for progressively boosting the performance while increasing no extra network parameters. The carefully designed recursive semantics-guided network has been extensively evaluated on several public datasets. Experimental results have shown the efficiency of the proposed method.

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