Remote Sensing Technology and Application, Volume. 40, Issue 1, 25(2025)
Multi-scale Scene Classification and Non-agricultural Application of Cultivated Land High-resolution Image
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Wei CHEN, Hao LI, Qihua ZHANG, Yanlan HE, Shengli WANG. Multi-scale Scene Classification and Non-agricultural Application of Cultivated Land High-resolution Image[J]. Remote Sensing Technology and Application, 2025, 40(1): 25
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Received: Oct. 26, 2023
Accepted: --
Published Online: May. 22, 2025
The Author Email: Hao LI (lihao@hhu.edu.cn)