4S-DT: Self Supervised Super Sample Decomposition for Transfer learning with application to COVID-19 detection
Asmaa Abbas, Mohammed M. Abdelsamea, and Mohamed Gaber

TL;DR
This paper introduces 4S-DT, a novel self-supervised transfer learning model that enhances COVID-19 detection accuracy from chest X-ray images by addressing data irregularities and class imbalance.
Contribution
The paper proposes a new self-supervised learning mechanism with class-decomposition for robust transfer learning in medical image classification.
Findings
Achieved 99.8% accuracy in COVID-19 detection
Improved robustness against dataset irregularities
Outperformed existing methods in accuracy
Abstract
Due to the high availability of large-scale annotated image datasets, knowledge transfer from pre-trained models showed outstanding performance in medical image classification. However, building a robust image classification model for datasets with data irregularity or imbalanced classes can be a very challenging task, especially in the medical imaging domain. In this paper, we propose a novel deep convolutional neural network, we called Self Supervised Super Sample Decomposition for Transfer learning (4S-DT) model. 4S-DT encourages a coarse-to-fine transfer learning from large-scale image recognition tasks to a specific chest X-ray image classification task using a generic self-supervised sample decomposition approach. Our main contribution is a novel self-supervised learning mechanism guided by a super sample decomposition of unlabelled chest X-ray images. 4S-DT helps in improving the…
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