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Automatic diagnosis of coronavirus (COVID-19) using shape and texture characteristics extracted from X-Ray and CT-Scan images

机译:使用X射线和CT扫描图像提取的形状和纹理特性自动诊断冠状病毒(Covid-19)

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摘要

Automatic diagnosis of coronavirus (COVID-19) is studied in this research. Deep learning methods especially convolutional neural networks (CNNs) have shown great success in COVID-19 diagnosis in recent works. But they are efficient when the depth of network is high enough. However, the use of a deep network requires a sufficiently large training set, which is not available in practice. From the other hand, the use of a shallow CNN may not provide superior results because it is not able to rich feature extraction due to lacking enough convolutional layers. To deal with this difficulty, the contextual features reduced by convolutional filters (CFRCF) is proposed in this work. CFRCF extracts shape and textural features as contextual feature maps from the chest X-ray radiographs and abdominal computed tomography (CT) images. Morphological operators, Gabor filter banks and attribute filters are used for contextual feature extraction. Then, two convolutional filters are applied to the contextual feature cube to extract the nonlinear sub-features and hidden relationships among the contextual features. Finally, a fully connected layer is used to produce a reduced feature vector which is fed to a classifier. Support vector machine and random forest are used as classifier. The experimental results show the superior performance of the proposed method from the recognition accuracy and running time point of view using limited training samples. More than 76% and 94% overall classification accuracy is obtained by the proposed method in CT scan and X-ray images datasets, respectively.
机译:在本研究中研究了冠状病毒(Covid-19)的自动诊断。深度学习方法尤其是卷积神经网络(CNNS)在近期工程中表现出Covid-19诊断的巨大成功。但是当网络景深足够高时,它们是有效的。然而,使用深网络需要足够大的训练集,这在实践中不可用。从另一方面,使用浅CNN可能无法提供优异的结果,因为由于缺少足够的卷积层,它不能富有特征提取。为了处理这种困难,在这项工作中提出了通过卷积滤波器(CFRCF)减少的上下文特征。 CFRCF将形状和纹理特征提取为来自胸部X射线X线射线照片和腹部计算机断层扫描(CT)图像的上下文特征映射。形态操作员,Gabor滤波器组和属性过滤器用于上下文特征提取。然后,将两个卷积滤波器应用于上下文特征立方体以提取上下文特征之间的非线性子特征和隐藏的关系。最后,使用完全连接的层来产生减少的特征向量,该特征向量被馈送到分类器。支持向量机和随机森林用作分类器。实验结果显示了使用有限训练样本的识别精度和运行时间观点的提出方法的优越性。通过CT扫描和X射线图像数据集中提出的方法获得了超过76%和94%的整体分类精度。

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