COVID-19 detection using machine learning and fusion-based deep learning models

F. R. Sultan, Manaf K. Hussein
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Abstract

The COVID-19 pandemic has been one of the most challenging crises attacking the world in the last three years. Many systems have been introduced in the field of COVID-19 detection. In this research, machine learning and deep learning models for the detection of COVID-19 with a probability of the presence of COVID-19 are proposed. In the machine learning scenario, the COVID-19 dataset is split into 70% training and 30% testing, and a segmentation process is applied to the CT images in order to get the lung ROI only. The features of CT images are then extracted using Gabor-Wavelet and deep-based features. The SVM classifier is then trained and evaluated. For the deep learning model, the CT images are fed into the model without feature extraction, and three different DL models (CNN, GoogleNet, and ResNet50) are trained and evaluated. Other scenarios are proposed in which the SVM Gabor-Wavelet and deep features are fused, and the three deep learning models are also fused to get better performance. The experiments show that the best model is the deep-based fusion model by which the system achieved 96.4156%, 96.1905%, and 96.1905% for accuracy, precision, and recall, respectively.
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使用机器学习和基于融合的深度学习模型进行COVID-19检测
COVID-19大流行是过去三年来袭击世界的最具挑战性的危机之一。在COVID-19检测领域已经引入了许多系统。本研究提出了基于COVID-19存在概率的COVID-19检测的机器学习和深度学习模型。在机器学习场景中,将COVID-19数据集分成70%的训练和30%的测试,并对CT图像进行分割处理,仅获得肺部ROI。然后利用gabor -小波和基于深度的特征提取CT图像的特征。然后对SVM分类器进行训练和评估。对于深度学习模型,在不进行特征提取的情况下将CT图像输入到模型中,并对三种不同的深度学习模型(CNN、GoogleNet和ResNet50)进行训练和评估。本文还提出了将支持向量机Gabor-Wavelet与深度特征融合的其他场景,并将三种深度学习模型进行融合以获得更好的性能。实验表明,基于深度的融合模型是最佳模型,系统的准确率、精密度和召回率分别达到96.4156%、96.1905%和96.1905%。
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