Abstract

A newly emerged coronavirus disease affects the social and economical life of the world. This virus mainly infects the respiratory system and spreads with airborne communication. Several countries witness the serious consequences of the COVID-19 pandemic. Early detection of COVID-19 infection is the critical step to survive a patient from death. The chest radiography examination is the fast and cost-effective way for COVID-19 detection. Several researchers have been motivated to automate COVID-19 detection and diagnosis process using chest x-ray images. However, existing models employ deep networks and are suffering from high training time. This work presents transfer learning and residual separable convolution block for COVID-19 detection. The proposed model utilizes pre-trained MobileNet for binary image classification. The proposed residual separable convolution block has improved the performance of basic MobileNet. Two publicly available datasets COVID5K, and COVIDRD have considered for the evaluation of the proposed model. Our proposed model exhibits superior performance than existing state-of-art and pre-trained models with 99% accuracy on both datasets. We have achieved similar performance on noisy datasets. Moreover, the proposed model outperforms existing pre-trained models with less training time and competitive performance than basic MobileNet. Further, our model is suitable for mobile applications as it uses fewer parameters and lesser training time

Highlights

  • The newly discovered severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has triggered the latest outbreak, namely coronavirus disease (COVID-19) (Liu and Zhang 2020)

  • We have proposed a residual separable convolution (RSC) block as shown in Fig. 2b to improve MobileNet performance

  • Four popular fine-tuned models including MobileNet, InceptionResNet, GoogleNet, and ResNet have been considered for the evaluation

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Summary

Introduction

The newly discovered severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has triggered the latest outbreak, namely coronavirus disease (COVID-19) (Liu and Zhang 2020). The epidemic disease has affected the social and economical life of the world and has spread rapidly within few months. Several countries witness the serious consequences of the COVID-19 pandemic. COVID-19 has reiterated in few countries as a second wave with incremental growth. World Health Organization (WHO) has reported that globally 227,940,972 confirmed cases of COVID-19, including 4,682,899 deaths till September 2021 (epidemiological 2021). COVID-19 detection and diagnosis have received a contemporary research task

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