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Contribution to Book
An Intelligent Information System and Application for the Diagnosis and Analysis of COVID-19
Lecture Notes in Networks and Systems
  • Atif Mehmood, Zayed University
  • Ahed Abugabah, Zayed University
  • Ahmad A. L. Smadi, Zayed University
  • Reyad Alkhawaldeh, Zayed University
Document Type
Book Chapter
Publication Date
1-1-2022
Abstract

The novel coronavirus spread across the world at the start of 2020. Millions of people are infected due to the COVID-19. At the start, the availability of corona test kits is challenging. Researchers analyzed the current situation and produced the COVID-19 detection system on X-ray scans. Artificial intelligence (AI) based systems produce better results in terms of COVID detection. Due to the overfitting issue, many AI-based models cannot produce the best results, directly impacting model performance. In this study, we also introduced the CNN-based technique for classifying normal, pneumonia, and COVID-19. In the proposed model, we used batch normalization to regularize the mode land achieve promising results for the three binary classes. The proposed model produces 96.56% accuracy for the classification for COVID-19 vs. Normal. Finally, we compared our model with other deep learning-based approaches and discovered that our approach outperformed.

Publisher
Springer Nature
Keywords
  • COVID-19,
  • CNN,
  • Batch normalization,
  • Classification
Scopus ID
85122530730
Indexed in Scopus
Yes
Open Access
No
https://doi.org/10.1007/978-3-030-93247-3_38
Citation Information
Atif Mehmood, Ahed Abugabah, Ahmad A. L. Smadi and Reyad Alkhawaldeh. "An Intelligent Information System and Application for the Diagnosis and Analysis of COVID-19" Lecture Notes in Networks and Systems Vol. 371 (2022)
Available at: http://works.bepress.com/ahed-abugabah/36/