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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Electrical Engineering >Dilated Deep Neural Network for Segmentation of Retinal Blood Vessels in Fundus Images
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Dilated Deep Neural Network for Segmentation of Retinal Blood Vessels in Fundus Images

机译:扩张式深层神经网络用于眼底图像中视网膜血管的分割

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摘要

Medical diagnosis is being assisted by numerous expert systems that have been developed to increase the accuracy of such diagnoses. The development of image processing techniques along with the rapid development in areas like machine learning and computer vision help in creating such expert systems that almost nearly match the accuracy of the expert human eye. The medical condition of diabetic retinopathy is diagnosed by analyzing the retinal blood vessels for damages, abnormal new growths and ruptures. Various techniques using convolutional neural networks have been used to segment retinal blood vessels from fundus images, but these techniques often do not segment the retinal blood vessels accurately and add additional noise due to the limited receptive field of the convolutional filters. The limited receptive field of the convolutional layer prevents the convolutional neural network from getting an accurate context of objects that extend beyond the size of the filter. The proposed architecture uses a dilated convolutional filter to obtain a larger receptive field which leads to a greater accuracy in segmenting the retinal blood vessels with near human accuracy. The convolutional neural networks were trained using the popular datasets. The proposed architecture produced an area under ROC curve (AUC) of 0.9794 and an accuracy of 95.61% and required very few iterations to train the network.
机译:医学诊断得到众多专家系统的协助,这些专家系统已经开发出来,可以提高诊断的准确性。图像处理技术的发展以及机器学习和计算机视觉等领域的迅速发展,有助于创建几乎与人眼的准确性相匹配的专家系统。通过分析视网膜血管是否受损,异常新生长和破裂来诊断糖尿病性视网膜病的医疗状况。已经使用了各种使用卷积神经网络的技术来从眼底图像中分割视网膜血管,但是由于卷积滤光器的接收区域有限,这些技术通常无法准确地分割视网膜血管,并增加了额外的噪声。卷积层的有限接收场阻止了卷积神经网络获得超出滤镜大小的对象的准确上下文。所提出的架构使用膨胀的卷积滤波器来获得更大的接收场,这导致以接近人类的准确性分割视网膜血管时具有更高的准确性。使用流行的数据集训练了卷积神经网络。所提出的体系结构产生的ROC曲线下面积(AUC)为0.9794,准确度为95.61%,并且需要很少的迭代来训练网络。

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