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Dense Correlation Network for Automated Multi-Label Ocular Disease Detection with Paired Color Fundus Photographs

机译:彩色相关眼底照片自动检测多标签眼病的密集相关网络

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In ophthalmology, color fundus photography is an economic and effective tool for early-stage ocular disease screening. Since the left and right eyes are highly correlated, we utilize paired color fundus photographs for our task of automated multi-label ocular disease detection. We propose a Dense Correlation Network (DCNet) to exploit the dense spatial correlations between the paired CFPs. Specifically, DCNet is composed of a backbone Convolutional Neural Network (CNN), a Spatial Correlation Module (SCM), and a classifier. The SCM can capture the dense correlations between the features extracted from the paired CFPs in a pixel-wise manner, and fuse the relevant feature representations. Experiments on a public dataset show that our proposed DCNet can achieve better performance compared to the respective baselines regardless of the backbone CNN architectures.
机译:在眼科方面,彩色眼底照相术是一种用于早期眼部疾病筛查的经济有效的工具。由于左眼和右眼高度相关,因此我们利用成对的彩色眼底照片进行自动多标签眼病检测。我们提出了一个密集相关网络(DCNet),以利用成对CFP之间的密集空间相关性。具体来说,DCNet由主干卷积神经网络(CNN),空间相关模块(SCM)和分类器组成。 SCM可以按像素方式捕获从配对的CFP中提取的特征之间的密集相关性,并融合相关的特征表示。在公共数据集上进行的实验表明,与骨干CNN架构无关,我们提出的DCNet与各自的基准相比可以实现更好的性能。

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