Semi-supervised Organ Segmentation with Mask Propagation Refinement and Uncertainty Estimation for Data Generation

Fast and Low-Resource Semi-supervised Abdominal Organ Segmentation Lecture Notes in Computer Science(2022)

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摘要
We present a novel two-staged method that employs various 2D-based techniques to deal with the 3D segmentation task. In most of the previous challenges, it is unlikely for 2D CNNs to be comparable with other 3D CNNs since 2D models can hardly capture temporal information. In light of that, we propose using the recent state-of-the-art technique in video object segmentation, combining it with other semisupervised training techniques to leverage the extensive unlabeled data. Moreover, we introduce a way to generate pseudo-labeled data that is both plausible and consistent for further retraining by using uncertainty estimation. Our code is publicly available at Github.
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关键词
mask propagation refinement,uncertainty estimation,data generation,semi-supervised
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