Chinese Journal of Liquid Crystals and Displays, Volume. 36, Issue 7, 1051(2021)
X-ray CT low-dose reconstruction via dynamic optimization implementation
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WANG Kang, ZHAO Qi, LI Ming. X-ray CT low-dose reconstruction via dynamic optimization implementation[J]. Chinese Journal of Liquid Crystals and Displays, 2021, 36(7): 1051
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Received: Jun. 17, 2020
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Published Online: Sep. 4, 2021
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