Abstract

This paper proposes a deep learning framework for Covid-19 detection by using chest X-ray images. The proposed method first enhances the image by using fuzzy logic which improvises the pixel intensity and suppresses background noise. This improvement enhances the X-ray image quality which is generally not performed in conventional methods. The pre-processing image enhancement is achieved by modeling the fuzzy membership function in terms of intensity and noise threshold. After this enhancement we use a block based method which divides the image into smooth and detailed regions which forms a feature set for feature extraction. After feature extraction we insert a hashing layer after fully connected layer in the neural network. This hash layer is advantageous in terms of improving the overall accuracy by computing the feature distances effectively. We have used a regularization parameter which minimizes the feature distance between similar samples and maximizes the feature distance between dissimilar samples. Finally, classification is done for detection of Covid-19 infection. The simulation results present a comparison of proposed model with existing methods in terms of some well-known performance indices. Various performance metrics have been analysed such as Overall Accuracy, F-measure, specificity, sensitivity and kappa statistics with values 93.53%, 93.23%, 92.74%, 92.02% and 88.70% respectively for 20:80 training to testing sample ratios; 93.84%, 93.53%, 93.04%, 92.33%, and 91.01% respectively for 50:50 training to testing sample ratios; 95.68%, 95.37%, 94.87%, 94.14%, and 90.74% respectively for 80:20 training to testing sample ratios have been obtained using proposed method and it is observed that the results using proposed method are promising as compared to the conventional methods.

Highlights

  • The usage of machine learning (ML) intends to impart intelligence by a machine in solving various real time problems

  • Various performance metrics have been analysed such as Overall Accuracy, F-measure, specificity, sensitivity and kappa statistics with values 93.53%, 93.23%, 92.74%, 92.02% and 88.70% respectively for 20:80 training to testing sample ratios; 93.84%, 93.53%, 93.04%, 92.33%, and 91.01% respectively for 50:50 training to testing sample ratios; 95.68%, 95.37%, 94.87%, 94.14%, and 90.74% respectively for 80:20 training to testing sample ratios have been obtained using proposed method and it is observed that the results using proposed method are promising as compared to the conventional methods

  • A deep learning model is proposed for Covid-19 classification from chest X-ray images

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Summary

Introduction

The usage of machine learning (ML) intends to impart intelligence by a machine in solving various real time problems. ML algorithms provide precise and accurate information by training any image data which helps to detect the particular disease in its early stage. The major requisite of ML algorithm is availability of real time data and high computational power [2, 3]. For a pandemic situation like Covid-19, ML can be used to predict the infection in patients in its early stage which can help the clinical industry to identify the effective treatment. Covid-19 disease has 2% fatality rate and most of the deaths are due to respiratory failure [4, 5]. If early detection of Covid-19 is performed the further spread of this disease can be reduced by referring the patient to quarantine. World Health Organization (WHO) is receiving data from all over the world for

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