2601.14180
2026-05-25
cs.CV
Progressive $\mathcal{J}$-Invariant Self-supervised Learning for Low-Dose CT Denoising
渐进式 $\mathcal{J}$-不变自监督学习用于低剂量CT去噪
Yichao Liu, Zongru Shao, Yueyang Teng, Junwen Guo
发表机构
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organization= IWR, Heidelberg University , city= Heidelberg , postcode= 69120 , state= Baden Württemberg , country= Germany
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organization= Silicon Austria Labs , city= Linz , postcode= 4040 , state= Upper Austria , country= Austria
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organization= Institute of Science Tokyo , addressline= , city= Tokyo , country= Japan
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organization= College of Medicine
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Biological Information Engineering, Northeastern University , city= Shenyang , postcode= 110169 , state= Liaoning , country= China
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organization= Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education , city= Shenyang , postcode= 110169 , state= Liaoning , country= China
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organization= Department of Epidemiology \& Global Health, Umeå University , addressline= , city= Umeå , postcode= 90187 , country= Sweden
AI总结
本文研究了低剂量CT图像去噪中的自监督学习方法,旨在减少对配对正常剂量CT数据的依赖。为了解决现有方法因感受野受限导致的训练效率低和性能不足的问题,提出了一种渐进式$\mathcal{J}$-不变自监督学习方法,通过逐步盲区去噪机制和引入控制噪声来提升去噪效果。实验表明,该方法在Mayo低剂量CT数据集上优于现有自监督方法,并达到或超越了部分监督去噪方法的性能。