2021
DOI: 10.48550/arxiv.2107.05532
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Context-aware virtual adversarial training for anatomically-plausible segmentation

Abstract: Despite their outstanding accuracy, semi-supervised segmentation methods based on deep neural networks can still yield predictions that are considered anatomically impossible by clinicians, for instance, containing holes or disconnected regions.To solve this problem, we present a Context-aware Virtual Adversarial Training (CAVAT) method for generating anatomically plausible segmentation. Unlike approaches focusing solely on accuracy, our method also considers complex topological constraints like connectivity w… Show more

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