An Efficient Model for Detection and Classification of Internal Eye Diseases using Deep Learning

Richa Gupta, V. Tripathi, A. Gupta
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引用次数: 3

Abstract

Natural eye is influenced by the distinctive eye illnesses some of them are great cause of vision loss. Many Artificial Intelligence (AI) approaches have been proposed for the identification of such diseases. The proposed method intends to plan an AI based automated network for eye illness identification and grouping to help the ophthalmologists all the more viably distinguishing and ordering of internal eye diseases like Choroid Neovascularisation (CNV), Diabetic Macular Edema (DME) and Drusen by utilizing the Optical Coherence Tomography (OCT) pictures portraying various tissues. The procedure utilized for planning this framework includes diverse deep learning convolutional neural organization (CNN) models. The proposed methodology is called efficient because it is performed on a large scale data-set which has four classes and improves the performance to a great level. The best picture subtitling model is chosen after execution investigation by looking at different picture inscribing frameworks for helping ophthalmologists to identify and order eye illnesses. The proposed methodology achieves the performance to a great level, 83.66% of accuracy for the test images when the data-set is divide in the format of 70-30 ratio.
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一种基于深度学习的内眼疾病检测与分类的高效模型
自然的眼睛受到不同的眼部疾病的影响,其中一些是导致视力丧失的主要原因。已经提出了许多人工智能(AI)方法来识别这些疾病。该方法旨在规划一个基于人工智能的眼部疾病自动识别和分组网络,以帮助眼科医生利用描绘各种组织的光学相干断层扫描(OCT)图像更有效地区分和排序脉络膜新生(CNV),糖尿病黄斑水肿(DME)和Drusen等眼部内病。用于规划该框架的过程包括各种深度学习卷积神经组织(CNN)模型。所提出的方法是高效的,因为它是在包含四个类的大规模数据集上执行的,并且在很大程度上提高了性能。通过对不同的配图框架进行执行调查,选择最佳的配图模式,以帮助眼科医生识别和排序眼疾。该方法在数据集按70-30分割的情况下,对测试图像的分割准确率达到83.66%。
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