Comparative Analysis of State-of-the-Art Deep Learning Models for Detecting COVID-19 Lung Infection from Chest X-Ray Images
The ongoing COVID-19 pandemic has already taken millions of lives and damaged economies across the globe. Most COVID-19 deaths and economic losses are reported from densely crowded cities. It is comprehensible that the effective control and prevention of epidemic/pandemic infectious diseases is vita...
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Zusammenfassung: | The ongoing COVID-19 pandemic has already taken millions of lives and damaged
economies across the globe. Most COVID-19 deaths and economic losses are
reported from densely crowded cities. It is comprehensible that the effective
control and prevention of epidemic/pandemic infectious diseases is vital.
According to WHO, testing and diagnosis is the best strategy to control
pandemics. Scientists worldwide are attempting to develop various innovative
and cost-efficient methods to speed up the testing process. This paper
comprehensively evaluates the applicability of the recent top ten
state-of-the-art Deep Convolutional Neural Networks (CNNs) for automatically
detecting COVID-19 infection using chest X-ray images. Moreover, it provides a
comparative analysis of these models in terms of accuracy. This study
identifies the effective methodologies to control and prevent infectious
respiratory diseases. Our trained models have demonstrated outstanding results
in classifying the COVID-19 infected chest x-rays. In particular, our trained
models MobileNet, EfficentNet, and InceptionV3 achieved a classification
average accuracy of 95\%, 95\%, and 94\% test set for COVID-19 class
classification, respectively. Thus, it can be beneficial for clinical
practitioners and radiologists to speed up the testing, detection, and
follow-up of COVID-19 cases. |
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DOI: | 10.48550/arxiv.2208.01637 |