2021
DOI: 10.48550/arxiv.2102.12764
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Reducing Labelled Data Requirement for Pneumonia Segmentation using Image Augmentations

Abstract: Deep learning semantic segmentation algorithms can localise abnormalities or opacities from chest radiographs. However, the task of collecting and annotating training data is expensive and requires expertise which remains a bottleneck for algorithm performance. We investigate the effect of image augmentations on reducing the requirement of labelled data in the semantic segmentation of chest X-rays for pneumonia detection. We train fully convolutional network models on subsets of different sizes from the total … Show more

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