基于混合平均迁移学习模型的Covid - 19图像分类

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
Qamar Abbas, Khalid Mahmood, Saif Ur Rehman, Muhammad Imran
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引用次数: 0

摘要

2019冠状病毒(Covid-19)的爆发是对全世界的巨大威胁。至关重要的是早期发现感染covid-19的患者并对其进行治疗,以减缓这种疾病的快速传播。克服传统的筛查方法,开发准确、快速的新冠肺炎自动诊断系统是当务之急。计算机断层扫描(CT)和胸部x射线成像结合深度学习模型,开发和测试从正常图像中提取covid-19图像的计算机辅助筛查(CAS)。本文利用预先训练的卷积神经网络和提出的混合模型在现有的胸部x射线图像标准数据集上进行covid-19疾病的分类和筛选。该混合模型采用预训练卷积神经网络模型和迁移学习模型。我们提出的模型由三个阶段组成,第一阶段通过使用预训练的机器学习模型进行特征提取。在模型的第二阶段,通过注入迁移学习技术提取深度特征。第三阶段使用Flatten和Classification分层对Covid-19患者进行诊断。为了保证所提模型的一致性,通过考虑标准数据集x射线图像。利用Accuracy、F1 Score、Precision、Recall、ROC和AUC曲线以及训练和测试损失等性能指标的仿真结果,对所提出的模型与现有模型进行评估和比较。实验结果表明,混合模型改善了Covid-19疾病的筛选过程,获得了更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Covid 19 image classification using hybrid averaging transfer learning model
The outbreak of Corona Virus 2019(Covid-19) is a great threat to the whole world. It is crucial to early detect patients infected with covid-19 and treat them to mitigate the rapid spread of this disease. It is an immediate priority to overcome the traditional screening and develop an accurate as well as speedy covid-19 automatic diagnosis system. Computer Tomography (CT) and Chest X-Ray imaging coupled with deep learning models to develop and test Computer Aided Screening (CAS) of covid-19 images from the normal images. In this paper classification and screening of covid-19 disease are performed by using pre-trained convolutional neural networks and a proposed hybrid model on an available standard dataset of chest X-Ray images. The proposed hybrid model employs the pre-trained Convolutional Neural Network models and Transfer Learning models. Our proposed model consists of three stages where extraction of features is performed in first stage by using pre-trained machine learning model. Deep features are extracted by using the infusion of the Transfer Learning Technique in the second stage of the model. The third stage uses Flatten and Classification layers to diagnose of Covid-19 patients. In order to assure the consistency of the proposed model, by considering standard dataset X-Ray images. Simulation results of performance metrics of Accuracy, F1 Score, Precision, Recall, ROC, and AUC curve, and training and testing loss are used to evaluate and compare the proposed model with existing models. Experimental result demonstrates that the hybrid model improves the screening process for Covid-19 disease by achieving higher accuracy.
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