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Exudate Detection for Diabetic Retinopathy Using Pretrained Convolutional Neural Networks

机译:使用普拉维拉卷积神经网络渗出对糖尿病视网膜病变的渗出物检测

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In the field of ophthalmology, diabetic retinopathy (DR) is a major cause of blindness. DR is based on retinal lesions including exudate. Exudates have been found to be one of the signs and serious DR anomalies, so the proper detection of these lesions and the treatment should be done immediately to prevent loss of vision. In this paper, pretrained convolutional neural network- (CNN-) based framework has been proposed for the detection of exudate. Recently, deep CNNs were individually applied to solve the specific problems. But, pretrained CNN models with transfer learning can utilize the previous knowledge to solve the other related problems. In the proposed approach, initially data preprocessing is performed for standardization of exudate patches. Furthermore, region of interest (ROI) localization is used to localize the features of exudates, and then transfer learning is performed for feature extraction using pretrained CNN models (Inception-v3, Residual Network-50, and Visual Geometry Group Network-19). Moreover, the fused features from fully connected (FC) layers are fed into the softmax classifier for exudate classification. The performance of proposed framework has been analyzed using two well-known publicly available databases such as e-Ophtha and DIARETDB1. The experimental results demonstrate that the proposed pretrained CNN-based framework outperforms the existing techniques for the detection of exudates.
机译:在眼科领域,糖尿病视网膜病变(DR)是失明的主要原因。 DR基于视网膜病变,包括渗出物。被发现渗出物是标志和严重的异常之一,因此应立即进行正确检测这些病变和治疗,以防止失去视力。在本文中,已经提出了基于预制的卷积神经网络 - (CNN-)的框架,用于检测渗出物。最近,单独应用深度CNN以解决具体问题。但是,具有转移学习的预押卡网模型可以利用以前的知识来解决其他相关问题。在所提出的方法中,初始数据预处理是针对渗出物斑块的标准化进行的。此外,利益区域(ROI)定位用于本地化渗出物的特征,然后使用掠夺的CNN模型(Inception-V3,残差网络-50和视觉几何组网络-19)对特征提取来执行转移学习。此外,从完全连接(Fc)层的熔融特征被馈送到软MAX分类器中以进行渗出物分类。已经使用两个众所周知的公知数据库(如E-Ophtha和DiaRetdB1)分析了拟议框架的表现。实验结果表明,所提出的基于CNN的框架优于检测渗出物的现有技术。

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