Local contrastive loss with pseudo-label based self-training for semi-supervised medical image segmentation
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Abstract
Supervised deep learning-based methods yield accurate results for medical image segmentation. However, they require large labeled datasets for this, and obtaining them is a laborious task that requires clinical expertise. Semi/self-supervised learning-based approaches address this limitation by exploiting unlabeled data along with limited annotated data. Recent self-supervised learning methods use contrastive loss to learn good global level representations from unlabeled images and achieve high performance in classification tasks on popular natural image datasets like ImageNet. In pixel-level prediction tasks such as segmentation, it is crucial to also learn good local level representations along with global…
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Keywords
- Computer science
- Artificial intelligence
- Segmentation
- Pattern recognition (psychology)
- Ground truth
- Pixel
- Representation (politics)
- Machine learning
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