基于CNN的CT图像COVID-19分类模型的实现

Atakan Kaya, Kubilay Atas, I. Myderrizi
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引用次数: 2

摘要

全球新冠肺炎患者数量日益增加。统计数据显示,即使在疫情爆发近10个月后,患者总数仍未达到峰值。病毒容易在人群中传播,同时导致大量患者。加快减少传播至关重要。为了实现这一目标,疾病的早期诊断以及经常进行的检查和扫描次数变得非常重要。本文对COVID-19诊断问题进行了全面的模型检验。使用CT图像,首先在预处理部分应用数据增强技术,然后使用预训练好的深度CNN网络进行分类。采用多种网络对模型进行了测试,VGG-16和effentnetb3网络的准确率分别达到96.5%和97.9%。
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Implementation of CNN based COVID-19 classification model from CT images
The number of COVID-19 patients around the globe is increasing day by day. Statistics show that even after almost 10 months from outbreak, number of the total patients has not reached to its peak value yet. Easy spreading of the virus among people causes high number of patients at the same time. Accelerating the reduction in spread is of vital importance. In order to achieve this reduction, early diagnosis of the disease and the number of tests and scans to be performed frequently becomes important. In this paper, a comprehensive model examination is made to overcome COVID-19 diagnosing problem. Using CT images, data augmentation technique is applied first in the pre-processing section and then pre-trained deep CNN networks perform the classification. The model is tested using various networks and high accuracy results of 96.5% and 97.9% are obtained for VGG-16 and EfficientNetB3 networks, respectively.
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