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Uncertainty-Aware Artery/Vein Classification on Retinal Images

机译:视网膜图像的不确定性动脉/静脉分类

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The automatic differentiation of retinal vessels into arteries and veins (A/V) is a highly relevant task within the field of retinal image analysis. However, due to limitations of retinal image acquisition devices, specialists can find it impossible to label certain vessels in eye fundus images. In this paper, we introduce a method that takes into account such uncertainty by design. For this, we formulate the A/V classification task as a four-class segmentation problem, and a Convolutional Neural Network is trained to classify pixels into background, A/V, or uncertain classes. The resulting technique can directly provide pixelwise uncertainty estimates. In addition, instead of depending on a previously available vessel segmentation, the method automatically segments the vessel tree. Experimental results show a performance comparable or superior to several recent A/V classification approaches. In addition, the proposed technique also attains state-of-the-art performance when evaluated for the task of vessel segmentation, generalizing to data that was not used during training, even with considerable differences in terms of appearance and resolution.
机译:在视网膜图像分析领域,视网膜血管自动分化为动脉和静脉(A / V)是一项高度相关的任务。但是,由于视网膜图像采集设备的局限性,专家们发现无法在眼底图像中标记某些血管。在本文中,我们介绍一种通过设计考虑这种不确定性的方法。为此,我们将A / V分类任务公式化为四类分割问题,并训练了卷积神经网络将像素分类为背景,A / V或不确定类。所得技术可以直接提供像素方向的不确定性估计。另外,该方法不依赖于先前可用的血管分割,而是自动分割血管树。实验结果表明,其性能可与几种最新的A / V分类方法相比或更高。此外,在评估血管分割的任务时,所提出的技术还可以获得最先进的性能,将其推广到训练期间未使用的数据,即使在外观和分辨率方面存在很大差异。

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