Boosting Automatic COVID-19 Detection Performance with Self-Supervised Learning and Batch Knowledge Ensembling
Guang Li, Ren Togo, Takahiro Ogawa, Miki Haseyama

TL;DR
This paper introduces a novel COVID-19 detection method from chest X-ray images that combines self-supervised learning and batch knowledge ensembling to improve accuracy and robustness, especially with limited labeled data.
Contribution
The paper proposes a new two-phase approach integrating self-supervised pretraining and batch knowledge ensembling for enhanced COVID-19 detection from CXR images.
Findings
High detection accuracy on public datasets
Robust performance with limited labeled data
Insensitive to hyperparameter variations
Abstract
Problem: Detecting COVID-19 from chest X-Ray (CXR) images has become one of the fastest and easiest methods for detecting COVID-19. However, the existing methods usually use supervised transfer learning from natural images as a pretraining process. These methods do not consider the unique features of COVID-19 and the similar features between COVID-19 and other pneumonia. Aim: In this paper, we want to design a novel high-accuracy COVID-19 detection method that uses CXR images, which can consider the unique features of COVID-19 and the similar features between COVID-19 and other pneumonia. Methods: Our method consists of two phases. One is self-supervised learning-based pertaining; the other is batch knowledge ensembling-based fine-tuning. Self-supervised learning-based pretraining can learn distinguished representations from CXR images without manually annotated labels. On the other…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · AI in cancer detection · Image Processing Techniques and Applications
