论文标题

U-NET带有基于图的平滑正规剂,用于小容器分割的眼底图像

U-Net with Graph Based Smoothing Regularizer for Small Vessel Segmentation on Fundus Image

论文作者

Hakim, Lukman, Yudistira, Novanto, Kavitha, Muthusubash, Kurita, Takio

论文摘要

检测视网膜血管,尤其是小血管条件的变化是确定人体血管网络的最重要指标。现有技术主要集中在大容器的形状上,这不适用于断开的小容器和孤立的容器。请注意低眼对比度的小血管在眼底地区,我们首次提出将基于图基的平滑正规剂与U-NET框架中的损耗函数相结合。提出的正规器将图像视为两个图形,通过计算船只区域上的图形拉普拉斯人和图像上的背景区域。在经典的U-NET上比较有或没有正规器的经典U-NET,比较了基于图的平滑正规剂在重建小容器中的潜力。数值和视觉结果表明,我们发达的正规器证明了其在分割小血管并重新连接碎片视网膜血管方面的有效性。

The detection of retinal blood vessels, especially the changes of small vessel condition is the most important indicator to identify the vascular network of the human body. Existing techniques focused mainly on shape of the large vessels, which is not appropriate for the disconnected small and isolated vessels. Paying attention to the low contrast small blood vessel in fundus region, first time we proposed to combine graph based smoothing regularizer with the loss function in the U-net framework. The proposed regularizer treated the image as two graphs by calculating the graph laplacians on vessel regions and the background regions on the image. The potential of the proposed graph based smoothing regularizer in reconstructing small vessel is compared over the classical U-net with or without regularizer. Numerical and visual results shows that our developed regularizer proved its effectiveness in segmenting the small vessels and reconnecting the fragmented retinal blood vessels.

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