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基于群体先验影像的低剂量CT影像复原

时间:2022-04-12 08:11:26 浏览次数:

工作中要将本文成像模式与投影数据的统计特性相结合进行LDCT影像统计迭代重建研究,使极低剂量CT取得更好的成像效果。

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