Infrared and Laser Engineering, Volume. 50, Issue 12, 20210112(2021)
Conditional random field classification method based on hyperspectral-LiDAR fusion
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Leiguang Wang, Ruozheng Geng, Qinling Dai, Jun Wang, Chen Zheng, Zhitao Fu. Conditional random field classification method based on hyperspectral-LiDAR fusion[J]. Infrared and Laser Engineering, 2021, 50(12): 20210112
Category: Image processing
Received: Feb. 17, 2021
Accepted: --
Published Online: Feb. 9, 2022
The Author Email: Zheng Chen (zhengchen_data@126.com)