An efficient early detection of diabetic retinopathy using dwarf mongoose optimization based deep belief network

A. Abirami, R. Kavitha
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引用次数: 7

Abstract

In general, diabetic retinopathy (DR) is a common ocular disease that causes damage to the retina due to blood leakage from the vessels. Earlier detection of DR becomes a complicated task and it is necessary to prevent complete blindness. Various physical examinations are employed in DR detection but manual diagnosis results in misclassification results. Therefore, this article proposes a novel technique to predict and classify the DR disease effectively. The significant objective of the proposed approach involves the effective classification of fundus retinal images into two namely, normal (absence of DR) and abnormal (presence of DR). The proposed DR detection utilizes three vital phases namely, the data preprocessing, image augmentation, feature extraction, and classification. Initially, the image preprocessing is done to remove unwanted noises and to enhance images. Then, the preprocessed image is augmented to enhance the size and quality of the training images. This article proposes a novel modified Gaussian convolutional deep belief network based dwarf mongoose optimization algorithm for effective extraction and classification of retinal images. In this article, an ODIR‐2019 dataset is employed in detecting and classifying DR disease. Finally, the experimentation is carried out and the proposed approach achieved 97% of accuracy. This implies that our proposed approach effectively classifies the fundus retinal images.
基于矮猫鼬优化的深度信念网络早期有效检测糖尿病视网膜病变
一般来说,糖尿病视网膜病变(DR)是一种常见的眼部疾病,由于血管渗漏导致视网膜损伤。早期发现DR是一项复杂的任务,对于防止完全失明是必要的。DR检测采用各种体检,但人工诊断会导致误分类结果。因此,本文提出了一种有效预测和分类DR疾病的新技术。该方法的主要目的是将眼底视网膜图像有效地分为正常(无DR)和异常(有DR)两类。提出的DR检测采用三个关键阶段,即数据预处理、图像增强、特征提取和分类。首先,对图像进行预处理以去除不需要的噪声并增强图像。然后对预处理后的图像进行增强,增强训练图像的大小和质量。本文提出了一种改进的基于高斯卷积深度信念网络的矮猫鼬优化算法,用于有效地提取和分类视网膜图像。本文采用ODIR - 2019数据集对DR疾病进行检测和分类。最后进行了实验,该方法的准确率达到97%。这表明我们提出的方法可以有效地对眼底视网膜图像进行分类。
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