Laser Technology, Volume. 44, Issue 2, 143(2020)
complex background based on linear unmixing
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YANG Guang, TIAN Zhangnan, LI Hao, GUAN Shihao. complex background based on linear unmixing[J]. Laser Technology, 2020, 44(2): 143
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Received: May. 22, 2019
Accepted: --
Published Online: Apr. 4, 2020
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