2023
DOI: 10.32920/22734404
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Online Unsupervised Learning for Domain Shift in Covid-19 CT Scan Datasets

Abstract: <p>Neural networks often require large amounts of expert anno- tated data to train. When changes are made in the process of medical imaging, trained networks may not perform as well, and obtaining large amounts of expert annotations for each change in the imaging process can be time consuming and expensive. Online unsupervised learning is a method that has been proposed to deal with situations where there is a domain shift in incoming data, and a lack of annotations. The aim of this study is to see wheth… Show more

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