A self-supervised guided knowledge distillation framework for unpaired low-dose CT image denoising
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Ming Li | Jian Zheng | Xiaodong Yang | Libing Yao | Zhongyi Wu | Qiang Du | Yufei Tang | Jiping Wang
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