Apple detection during different growth stages in orchards using the improved YOLO-V3 model

Computers and Electronics in Agriculture - Tập 157 - Trang 417-426 - 2019
Yunong Tian1,2, Guodong Yang1,2, Zhe Wang1,2, Hao Wang1,2, En Li1,2, Zize Liang1,2
1Institute of Automation, Chinese Academy of Sciences No.95 ZhongGuanCun East Road, Beijing 100190, China
2University of Chinese Academy of Sciences, No.19(A) Yuquan Road, Beijing, 100049, China

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