Semantic Segmentation of Retinal Blood Vessels from Fundus Images by using CNN and the Random Forest Algorithm

Ayoub Skouta, Abdelali Elmoufidi, Said Jai-Andaloussi, O. Ouchetto
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引用次数: 4

Abstract

Abstract: In this paper, we present a new study to improve the automated segmentation of blood vessels in diabetic retinopathy images. Pre-processing is necessary due to the contrast between the blood vessels and the background, as well as the uneven illumination of the retinal images, in order to produce better quality data to be used in further processing. We use data augmentation techniques to increase the amount of accessible data in the dataset to overcome the data sparsity problem that deep learning requires. We then use the CNN VGG16 architecture to extract the feature from the preprocessed background images. The Random Forest method will then use the extracted attributes as input parameters. We used part of the augmented dataset to train the model (1764 images, representing the training set); the rest of the dataset will be used to test the model (196 images, representing the test set). Regarding the model validation phase, we used the dedicated part for testing the DRIVE dataset. Promising results compared to the state of the art were obtained. The method achieved an accuracy of 98.7%, a sensitivity of 97.4% and specificity of 99.5%. A comparison with some recent previous work in the literature has shown a significant advancement in our proposal.
基于CNN和随机森林算法的眼底图像视网膜血管语义分割
摘要:本文提出了一种改进糖尿病视网膜病变图像血管自动分割的新方法。由于血管和背景之间的对比度,以及视网膜图像的光照不均匀,预处理是必要的,以便产生更好质量的数据,用于进一步处理。我们使用数据增强技术来增加数据集中可访问数据的数量,以克服深度学习所需的数据稀疏性问题。然后,我们使用CNN VGG16架构从预处理的背景图像中提取特征。然后随机森林方法将使用提取的属性作为输入参数。我们使用增强数据集的一部分来训练模型(1764张图像,代表训练集);数据集的其余部分将用于测试模型(196张图像,代表测试集)。关于模型验证阶段,我们使用专用部分来测试DRIVE数据集。与目前的技术水平相比,取得了令人满意的结果。准确度为98.7%,灵敏度为97.4%,特异度为99.5%。与文献中最近的一些先前工作的比较显示了我们的建议的重大进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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