A ROBUST TECHNIQUES OF ENHANCEMENT AND SEGMENTATION BLOOD VESSELS IN RETINAL IMAGE USING DEEP LEARNING

Anita Desiani, Erwin, B. Suprihatin, Sinta Bella Agustina
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引用次数: 1

Abstract

The retina is the most important part of the eye. Early detection of retinal disease can be done through the passage of the blood vessels of the retina. Enhancement of the quality of retinal images that have both noise and noise is the first step in image processing to help improve the accuracy of the results for image segmentation and extraction. Images store a lot of information, but often there is a decrease in quality or image defects. So that images that have experienced interference or noise are easily interpreted, then the image can be manipulated into other images of better quality using image processing techniques or methods. The neural network-based method that is currently popular is deep learning. The segmentation process is currently a widely used method of deep learning that has grown rapidly used in various studies. One of the popular methods is Convolutional Neural Network (CNN). CNN can handle large-dimensional data such as images because the input to CNN is in the form of a matrix. Since the findings of retinal blood vessel segmentation are often inaccurate and there is always noise, this study will look at how to segment retinal images in blood vessels using CNN U-Net and LadderNet methods. Proper segmentation of retinal blood vessels can be the first step to detecting a disease. Segmentation and analysis of retinal blood vessels can assist medical personnel in detecting the severity of a disease. The stages of image enhancement used are Histogram Equalization and Clahe. Segmentation of blood vessels is done using CNN U-Net and LadderNet Methods. The results of the application of the enhancement and segmentation using the U-Net and LadderNet methods on training and on testing data were tested on the DRIVE dataset. The results of measurement of accuracy, specificity, sensitivity and F1 Score of blood vessel segmentation using the U-Net CNN method were 95.46%, 98.56%, 74.20%, and 80.63%, respectively. While the results of the CNN LadderNet method were 95.47%, 98.42%, 75.19%, and 80.86%, respectively. Based on the results of blood vessel segmentation from two proposed methods, the result of the CNN LaddetNet method is greater than the CNN U-Net method in accuracy, sensitivity, and F1 Score. The proposed approach will be further developed in the future, with the aim of increasing the value of the blood vessel segmentation process evaluation outcomes.
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一种基于深度学习的视网膜图像血管增强和分割鲁棒技术
视网膜是眼睛最重要的部分。视网膜疾病的早期检测可以通过视网膜血管的通道进行。提高既有噪声又有噪声的视网膜图像的质量是图像处理的第一步,有助于提高图像分割和提取结果的准确性。图像存储了大量的信息,但往往存在质量下降或图像缺陷。这样,经历过干扰或噪声的图像很容易被解释,然后可以使用图像处理技术或方法将图像处理成其他质量更好的图像。目前流行的基于神经网络的方法是深度学习。分割过程是目前广泛使用的一种深度学习方法,在各种研究中得到了迅速的应用。其中一种流行的方法是卷积神经网络(CNN)。CNN可以处理像图像这样的大维度数据,因为CNN的输入是矩阵的形式。由于视网膜血管分割的结果往往是不准确的,并且总是存在噪声,本研究将研究如何使用CNN U-Net和LadderNet方法在血管中分割视网膜图像。正确分割视网膜血管是检测疾病的第一步。视网膜血管的分割和分析可以帮助医务人员检测疾病的严重程度。图像增强使用的阶段是直方图均衡化和克拉赫。血管的分割使用CNN U-Net和LadderNet方法。在DRIVE数据集上对U-Net和LadderNet方法在训练数据和测试数据上的增强和分割结果进行了测试。U-Net CNN方法血管分割的准确度、特异度、灵敏度和F1评分分别为95.46%、98.56%、74.20%和80.63%。而CNN LadderNet方法的结果分别为95.47%、98.42%、75.19%和80.86%。从两种方法的血管分割结果来看,CNN LaddetNet方法在准确率、灵敏度和F1分数上都优于CNN U-Net方法。该方法将在未来进一步发展,旨在提高血管分割过程评估结果的价值。
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来源期刊
Biomedical Engineering: Applications, Basis and Communications
Biomedical Engineering: Applications, Basis and Communications Biochemistry, Genetics and Molecular Biology-Biophysics
CiteScore
1.50
自引率
11.10%
发文量
36
审稿时长
4 months
期刊介绍: Biomedical Engineering: Applications, Basis and Communications is an international, interdisciplinary journal aiming at publishing up-to-date contributions on original clinical and basic research in the biomedical engineering. Research of biomedical engineering has grown tremendously in the past few decades. Meanwhile, several outstanding journals in the field have emerged, with different emphases and objectives. We hope this journal will serve as a new forum for both scientists and clinicians to share their ideas and the results of their studies. Biomedical Engineering: Applications, Basis and Communications explores all facets of biomedical engineering, with emphasis on both the clinical and scientific aspects of the study. It covers the fields of bioelectronics, biomaterials, biomechanics, bioinformatics, nano-biological sciences and clinical engineering. The journal fulfils this aim by publishing regular research / clinical articles, short communications, technical notes and review papers. Papers from both basic research and clinical investigations will be considered.
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