Laser Technology, Volume. 48, Issue 1, 140(2024)
Automatic recognition of the number of corn plants in farmland using SLAM point cloud
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WANG Guo, WANG Cheng, WANG Hongtao, ZHANG Chenglong, YANG Fuqin. Automatic recognition of the number of corn plants in farmland using SLAM point cloud[J]. Laser Technology, 2024, 48(1): 140
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Received: Nov. 30, 2022
Accepted: --
Published Online: Jul. 1, 2024
The Author Email: WANG Guo (wg@haue.edu.cn)