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COVID-19 Detection Using Integration of Deep Learning Classifiers and Contrast-Enhanced Canny Edge Detected X-Ray Images

机译:Covid-19使用深度学习分类器的集成检测和对比度增强的Canny边缘检测到X射线图像

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摘要

COVID-19 is a deadly disease, and should be efficiently detected. COVID-19 shares similar symptoms with pneumonia, another type of lung disease, which remains a cause of morbidity and mortality. This article aims to demonstrate an ensemble deep learning approach that can differentiate COVID-19 and pneumonia based on chest X-ray images. The original X-ray images were processed to produce two sets of images with different features. The first set was images enhanced with contrast limited adaptive histogram equalization. The second set was edge images produced by contrast-enhanced canny edge detection. Convolutional neural networks were used to extract features from the images and train classifiers, which were able to classify COVID-19, pneumonia, and healthy lungs cases. Results show that the classifiers were able to differentiate X-rays of different classes, where the best performing ensemble achieved an overall accuracy of 97.90%, with a sensitivity of 99.47%, and specificity of 98.94% for COVID-19 detection.
机译:Covid-19是一种致命的疾病,应该有效地检测到。 Covid-19与肺炎的类似症状,另一种类型的肺病,仍然是发病率和死亡率的原因。本文旨在展示一种基于胸部X射线图像来区分Covid-19和肺炎的集合深度学习方法。处理原始X射线图像以产生具有不同特征的两组图像。第一组是具有对比度有限的自适应直方图均衡的图像增强的图像。第二组是通过对比度增强的罐头边缘检测产生的边缘图像。卷积神经网络用于从图像和火车分类器中提取特征,该分类器能够对Covid-19,肺炎和健康的肺病例进行分类。结果表明,分类器能够区分不同类别的X射线,其中最佳性能的整体达到97.90%的整体精度,灵敏度为99.47%,对Covid-19检测的特异性为98.94%。

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  • 来源
    《IT Professional》 |2021年第4期|51-56|共6页
  • 作者单位

    Univ Malaysia Sabah Math & Comp Graph Kota Kinabalu 88400 Sabah Malaysia;

    Univ Malaysia Sabah Fac Sci & Nat Resources Comp Graph & Image Proc Kota Kinabalu 88400 Sabah Malaysia;

    Univ Malaysia Sabah Fac Comp & Informat Kota Kinabalu 88400 Sabah Malaysia;

    Liverpool John Moores Univ Liverpool L2 2QP Merseyside England;

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  • 正文语种 eng
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