Author: Khan, Murtaza Ali
Title: An automated and fast system to identify COVIDâ€19 from Xâ€ray radiograph of the chest using image processing and machine learning Cord-id: zrupol5l Document date: 2021_3_1
ID: zrupol5l
Snippet: A type of coronavirus disease called COVIDâ€19 is spreading all over the globe. Researchers and scientists are endeavoring to find new and effective methods to diagnose and treat this disease. This article presents an automated and fast system that identifies COVIDâ€19 from Xâ€ray radiographs of the chest using image processing and machine learning algorithms. Initially, the system extracts the feature descriptors from the radiographs of both healthy and COVIDâ€19 affected patients using the
Document: A type of coronavirus disease called COVIDâ€19 is spreading all over the globe. Researchers and scientists are endeavoring to find new and effective methods to diagnose and treat this disease. This article presents an automated and fast system that identifies COVIDâ€19 from Xâ€ray radiographs of the chest using image processing and machine learning algorithms. Initially, the system extracts the feature descriptors from the radiographs of both healthy and COVIDâ€19 affected patients using the speeded up robust features algorithm. Then, visual vocabulary is built by reducing the number of feature descriptors via quantization of feature space using the Kâ€means clustering algorithm. The visual vocabulary train the support vector machine (SVM) classifier. During testing, an Xâ€ray radiograph's visual vocabulary is sent to the trained SVM classifier to detect the absence or presence of COVIDâ€19. The study used the dataset of 340 Xâ€ray radiographs, 170 images of each Healthy and Positive COVIDâ€19 class. During simulations, the dataset split into training and testing parts at various ratios. After training, the system does not require any human intervention and can process thousands of images with high precision in a few minutes. The performance of the system is measured using standard parameters of accuracy and confusion matrix. We compared the performance of the proposed SVMâ€based classier with the deepâ€learningâ€based convolutional neural networks (CNN). The SVM yields better results than CNN and achieves a maximum accuracy of up to 94.12%.
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