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Classification and Segmentation of COVID-19 from CT and X-ray Images using Deep Architectures

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dc.contributor.author Kha, Hafiz Muhammad Sarmad
dc.date.accessioned 2023-08-07T10:46:32Z
dc.date.available 2023-08-07T10:46:32Z
dc.date.issued 2021
dc.identifier.other 274869
dc.identifier.uri http://10.250.8.41:8080/xmlui/handle/123456789/35754
dc.description Supervisor: Dr. Arslan Shaukat en_US
dc.description.abstract COVID-19 has become a significant challenge, with numerous human beings losing their lives every day. Not only a certain country is involved with this outbreak, but even the world has suffered because of the corona virus. Computed Tomography (CT) and X-ray images of lungs are the best resources for COVID-19 screening. It is essential to quickly and accurately identify and segment COVID-19 from CT and X-rays to aid in diagnostic and patient monitoring. Technology today has revolutionized the world by using artificial intelligence to replace manual process with automated machines, which enable the system to imitate the human brain by making wise decisions based on experience. Motivated by this, our work proposes to use convolutional neural networks (CNN) based models for designing computer aided diagnosis (CAD) system which differentiates between COVID-19 and normal healthy lungs from both CT and X-ray images. An automated system has also been proposed which segments the COVID-19 disease form the radiological images of lungs using deep learning networks. For classification, two datasets of lungs X-ray and two of CT images have been utilized. Similarly, two CT lungs image datasets are used for segmentation. Various pre-trained networks are employed for classification such as VGG (16, 19), Densenet (121), Resnet (50, 50 V2, 101 V2), Mobile net (V2), Xception Inception (V3, Resnet V2), Efficient net (B0) and Nasnet (Large). For segmentation, main architectures used are: Unet, Link Net, Pyramid Scene Parsing Network (PSP Net), and Feature Pyramid Network (FPN). The pre-trained feature extraction networks used as encoders with these segmentation architectures are: Efficient Net, MobileNet V2, Seresnet 101, Densenet 121, VGG-19, and Inception Resnet V2. A thorough testing of all well-known deep architectures has been done and a comparative analysis of these architectures has also been performed. Resnet V2 and VGG-16 has proven to be effective in accurately classifying the COVID-19 from healthy images giving an average accuracy in the range of 95% to 98% on the four X-ray vi and CT image datasets. In segmentation, Unet, FPN and Link Net with backbones of MobileNet V2, Densenet 121 and Inception Resnet V2 have reported highest F1-Scores of 77% to 98.6% on the two CT image datasets. Our achieved results are competitive and higher as compared to previous reported results in literature on the four datasets of classification and two datasets of segmentation. en_US
dc.language.iso en en_US
dc.publisher College of Electrical & Mechanical Engineering (CEME), NUST en_US
dc.subject Keywords: COVID-19, Deep learning, Image Classification, Image Segmentation, CT, X-rays en_US
dc.title Classification and Segmentation of COVID-19 from CT and X-ray Images using Deep Architectures en_US
dc.type Thesis en_US


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