2021
DOI: 10.48550/arxiv.2102.07726
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Detection and severity classification of COVID-19 in CT images using deep learning

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“…In general, when dealing with the COVID-19 CT segmentation problem it is usual to either completely neglect a dedicated evaluation of the impact of DA techniques or merely report using a limited set of generic DA, not optimized or specially designed for medical images, like Flip and Rotation operations, such as in [Zhao et al 2021, Qiblawey et al 2021, Raj et al 2021, Müller et al 2020, Chen et al 2020c, Xu et al 2020]. To properly measure the impact of data augmentation on the COVID-19 CT segmentation problem, we evaluated twenty data augmentation techniques.…”
Section: Methodsmentioning
confidence: 99%
“…In general, when dealing with the COVID-19 CT segmentation problem it is usual to either completely neglect a dedicated evaluation of the impact of DA techniques or merely report using a limited set of generic DA, not optimized or specially designed for medical images, like Flip and Rotation operations, such as in [Zhao et al 2021, Qiblawey et al 2021, Raj et al 2021, Müller et al 2020, Chen et al 2020c, Xu et al 2020]. To properly measure the impact of data augmentation on the COVID-19 CT segmentation problem, we evaluated twenty data augmentation techniques.…”
Section: Methodsmentioning
confidence: 99%