Deep Transfer Learning Based Classification Model for COVID-19 Disease.
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2020
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Abstract
The COVID-19 infection is increasing at a rapid rate, with the availability of limited number of testing kits. Therefore, the development of COVID-19 testing kits is still an open area of research. Recently, many studies have shown that chest Computed Tomography (CT) images can be used for COVID-19 testing, as chest CT images show a bilateral change in COVID-19 infected patients. However, the classification of COVID-19 patients from chest CT images is not an easy task as predicting the bilateral change is defined as an ill-posed problem. Therefore, in this paper, a deep transfer learning technique is used to classify COVID-19 infected patients. Additionally, a top-2 smooth loss function with cost-sensitive attributes is also utilized to handle noisy and imbalanced COVID-19 dataset kind of problems. Experimental results reveal that the proposed deep transfer learning-based COVID-19 classification model provides efficient results as compared to the other supervised learning models.
| Reference Key |
pathak2020deepingenierie
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| Authors | Pathak, Y;Shukla, P K;Tiwari, A;Stalin, S;Singh, S;Shukla, P K; |
| Journal | ingenierie et recherche biomedicale : irbm = biomedical engineering and research |
| Year | 2020 |
| DOI |
10.1016/j.irbm.2020.05.003
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