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Automatic Segmentation of Macular Edema in Retinal OCT Images Using Improved U-Net++

机译:使用改进的U-Net ++自动分割视网膜OCT图像中的黄斑水肿

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The number and volume of retinal macular edemas are important indicators for screening and diagnosing retinopathy. Aiming at the problem that the segmentation method of macular edemas in a retinal optical coherence tomography (OCT) image is not ideal in segmentation of diverse edemas, this paper proposes a new method of automatic segmentation of macular edema regions in retinal OCT images using the improved U-Net++. The proposed method makes full use of the U-Net++ re-designed skip pathways and dense convolution block; reduces the semantic gap of the feature maps in the encoder/decoder sub-network; and adds the improved Resnet network as the backbone, which make the extraction of features in the edema regions more accurate and improves the segmentation effect. The proposed method was trained and validated on the public dataset of Duke University, and the experiments demonstrated the proposed method can not only improve the overall segmentation effect, but also can significantly improve the segmented precision for diverse edema in multi-regions, as well as reducing the error of the number of edema regions.
机译:视网膜黄斑水肿的数量和体积是筛选和诊断视网膜病变的重要指标。针对视网膜光学相干断层扫描(OCT)图像中黄斑水肿分割方法的问题是在不同水肿的分割中的理想下,本文提出了一种使用改进的视网膜OCT图像中黄斑水肿区域的新方法的新方法U-Net ++。该方法充分利用U-Net ++重新设计的跳过途径和密集的卷积块;减少编码器/解码器子网中的特征映射的语义差距;并将改进的Reset网络添加为骨干,这使得水肿区域中的特征更准确并提高分割效果。拟议的方法在公爵大学的公共数据集上培训并验证,实验表明,所提出的方法不仅可以提高整体分割效果,还可以显着提高多个地区各种水肿的分段精度,以及减少水肿地区数量的错误。

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