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Automatic Diagnosis of Glaucoma using Ensemble based Deep Learning Model

机译:基于集合的深度学习模型,自动诊断青光眼

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In both developing and developed nations, glaucoma is the primary cause of vision loss. Identifying and classifying glaucoma in the early stage will provide the patients with sufficient care and an effective way to support the eye surgeon. This is the opinion of an initiative to identify and classify glaucoma early with the use of a comprehensive learning system using fundus images. Three pre-trained convolution neural network (ConvNet) architectures are being used for the classification of glaucoma in the proposed framework: the Residual Network (ResNet), the Visual geometry group network (VGGNet), and GoogLeNet. The tests are performed in private and standard benchmark data sets to verify the performance of the proposed system. In terms of accuracy, precision, specificity, sensitivity, and F1, the proposed algorithm is compared to three various ConvNets. The findings obtained are encouraging, and the dominance in performance measurements to detect and diagnose glaucoma using fundus images in the proposed ensemble of deep learning architectures will be verified.
机译:在发展中国家和发达国家,青光眼是视力丧失的主要原因。在早期阶段鉴定和分类青光眼将为患者提供足够的护理和有效的方法来支持眼外科医生。这是一项倡议的意见,以利用使用眼底图像的综合学习系统识别和分类青光眼。三个预先训练的卷积神经网络(Convnet)架构用于在所提出的框架中进行青光眼的分类:剩余网络(Reset),视觉几何组网络(VGGNET)和Googlenet。测试是在私有和标准基准数据集中执行的,以验证所提出的系统的性能。就准确性,精度,特异性,灵敏度和F1而言,该算法将该算法与三种各种探伤进行比较。获得的发现是令人抱歉的,并且验证了在深度学习架构的建议集合中使用眼底图像检测和诊断青光眼的性能测量的优势。

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