Application of fuzzy logic on CT-scan images of COVID-19 patients
Q3 Computer Science
Fariha Noor, Md Rashad Tanjim, M. J. Rahim, Md. Naimul Islam Suvon, Faria Karim Porna, Shabbir Ahmed, Md. Abdullah Al Kaioum, R. Rahman
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Abstract
Image processing is crucial in any image analysis to determine the problem. If it is a medical area, a suitable image processing method becomes even more imperative to get as accurate results as possible. Due to the widespread outbreak of coronavirus disease 2019 (COVID-19), an infectious respiratory disease, it has become quite urgent that a reliable method for identification of the disease is sought. In this paper, we have segmented images with two different techniques, fuzzy c-means, and k-means clustering. Our images include CT-scan data and X-rays of both two categories. The first being the COVID-19 infected patients;the other being a collection of normal persons, and viral pneumonia infected persons. Among the two clustering techniques, the k-means performed better. Later, we trained our CNN model with the segmented images and raw images. Interestingly, the segmented images of CT-scan, as well as X-rays, are performing well in CNN classification rather than raw images. After applying fuzzy edge detection, the segmentation was improved. The f1-score for our model is 91% and the support is 89%. © 2021 Inderscience Enterprises Ltd.
模糊逻辑在COVID-19患者ct扫描图像中的应用
图像处理是确定任何图像分析问题的关键。如果是医疗领域,为了获得尽可能准确的结果,一种合适的图像处理方法变得更加必要。由于传染性呼吸道疾病2019冠状病毒病(COVID-19)的广泛爆发,寻找可靠的疾病识别方法变得非常紧迫。在本文中,我们使用两种不同的技术,模糊c-means和k-means聚类来分割图像。我们的图像包括ct扫描数据和两类x射线。一组是新冠肺炎感染者,另一组是正常人和病毒性肺炎感染者的集合。在两种聚类技术中,k-means表现更好。然后,我们用分割后的图像和原始图像训练CNN模型。有趣的是,与原始图像相比,ct扫描的分割图像以及x射线在CNN分类中的表现更好。应用模糊边缘检测后,对图像分割进行了改进。我们模型的f1得分为91%,支持度为89%。©2021 Inderscience Enterprises Ltd
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