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Automatic diagnosis of diabetic retinopathy with the aid of adaptive average filtering with optimized deep convolutional neural network

机译:用优化的深卷积神经网络借助于自适应平均滤波自动诊断糖尿病视网膜病变

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The most effective treatment for diabetic retinopathy (DR) is the early detection through regular screening, which is critical for a better prognosis. Automatic screening of the images would assist the physicians in diagnosing the condition of patients easily and accurately. This condition searches out for special importance of image processing technology in the way of processing the retinal fundus images. Accordingly, this article plans to develop an automatic DR detection model with the aid of three main stages like (a) image preprocessing, (b) blood vessel segmentation, and (c) classification. The preprocessing phase includes two steps: conversion of RGB to Lab, and contrast enhancement. The Histogram equalization process is done using the contrast enhancement of an image. To the next of preprocessing, the segmentation phase starts with a valuable procedure. It includes (a), thresholding the contrast-enhanced and filtered images, (b) thresholding the keypoints of contrast-enhanced and filtered images, and (c) adding both thresholded binary images. Here, the filtering process is performed by proposed adaptive average filtering, where the filter coefficients are tuned or optimized by an improved meta-heuristic algorithm called fitness probability-based CSO (FP-CSO). Finally, the classification part uses Deep CNN, where the improvement is exploited on the convolutional layer, which is optimized by the same improved FP-CSO. Since the conventional CSO depends on a fitness probability in the improved algorithm, the proposed algorithm termed as FP-CSO. Finally, valuable comparative and performance analysis has confirmed the effectiveness of the proposed model.
机译:糖尿病视网膜病变(DR)最有效的治疗是通过定期筛查的早期检测,这对于更好的预后至关重要。自动筛选图像将有助于医生轻松准确地诊断患者的病症。这种情况在处理视网膜眼底图像的方式寻找图像处理技术的特殊重要性。因此,本文计划借助于(a)图像预处理,(b)血管分割,(c)分类,借助于三个主要阶段开发自动DR检测模型。预处理阶段包括两个步骤:将RGB转换为实验室和对比度增强。使用图像的对比度增强来完成直方图均衡过程。在预处理的下一个预处理中,分割阶段以有价值的过程开始。它包括(a),阈值增强和滤波的图像,(b)阈值阈值,其对比增强且滤波的图像的关键点,以及(c)添加阈值的二进制图像。这里,通过所提出的自适应平均滤波来执行滤波处理,其中通过称为适合概率的CSO(FP-CSO)的改进的元启发式算法来调整或优化滤波器系数。最后,分类部分使用深CNN,其中在卷积层上利用改进,其通过相同的改进的FP-CSO优化。由于传统的CSO取决于改进算法中的适应性概率,因此所提出的算法称为FP-CSO。最后,有价值的比较和性能分析证实了拟议模型的有效性。

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