2022
DOI: 10.48550/arxiv.2209.08256
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Can segmentation models be trained with fully synthetically generated data?

Abstract: In order to achieve good performance and generalisability, medical image segmentation models should be trained on sizeable datasets with sufficient variability. Due to ethics and governance restrictions, and the costs associated with labelling data, scientific development is often stifled, with models trained and tested on limited data. Data augmentation is often used to artificially increase the variability in the data distribution and improve model generalisability. Recent works have explored deep generative… Show more

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