A detection approach for late-autumn shoots of litchi based on unmanned aerial vehicle (UAV) remote sensing
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Y. Lan | Yongbing Long | Teng Long | Xinyu Tang | Xin Chen | Jing Zhao | Ming Zhou | Juntao Liang | Changjian Liang | Zhenmiao Shi
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