Image Magnification Network for Vessel Segmentation in OCTA Images
- URL: http://arxiv.org/abs/2110.13428v1
- Date: Tue, 26 Oct 2021 06:18:38 GMT
- Title: Image Magnification Network for Vessel Segmentation in OCTA Images
- Authors: Mingchao Li, Yerui Chen, Weiwei Zhang and Qiang Chen
- Abstract summary: We propose a novel image magnification network (IMN) for vessel segmentation in OCTA images.
The experimental results on three open OCTA datasets show that the proposed IMN with an average dice score of 90.2% achieves the best performance.
- Score: 5.535039549947958
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Optical coherence tomography angiography (OCTA) is a novel non-invasive
imaging modality that allows micron-level resolution to visualize the retinal
microvasculature. The retinal vessel segmentation in OCTA images is still an
open problem, and especially the thin and dense structure of the capillary
plexus is an important challenge of this problem. In this work, we propose a
novel image magnification network (IMN) for vessel segmentation in OCTA images.
Contrary to the U-Net structure with a down-sampling encoder and up-sampling
decoder, the proposed IMN adopts the design of up-sampling encoding and then
down-sampling decoding. This design is to capture more image details and reduce
the omission of thin-and-small structures. The experimental results on three
open OCTA datasets show that the proposed IMN with an average dice score of
90.2% achieves the best performance in vessel segmentation of OCTA images.
Besides, we also demonstrate the superior performance of IMN in cross-field
image vessel segmentation and vessel skeleton extraction.
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