Chinese Journal of Quantum Electronics, Volume. 41, Issue 4, 659(2024)
Research of multi‑view wood‑leaf 3D reconstruction based on hyperspectral lidar
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Zheng CAO, Hui SHAO, Long SUN, Yuxia HU, Jie CHEN, Heng XU, Chong CHEN. Research of multi‑view wood‑leaf 3D reconstruction based on hyperspectral lidar[J]. Chinese Journal of Quantum Electronics, 2024, 41(4): 659
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Received: May. 20, 2022
Accepted: --
Published Online: Jan. 8, 2025
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