A review on weed detection using ground-based machine vision and image processing techniques

Computers and Electronics in Agriculture - Tập 158 - Trang 226-240 - 2019
Aichen Wang1,2, Wen Zhang3, Xinhua Wei1,2
1Key Laboratory of Modern Agricultural Equipment and Technology, Ministry of Education and Jiangsu Province, PR China
2School of Agricultural Equipment Engineering, Jiangsu University, 301 Xuefu Road, Zhenjiang 212013, Jiangsu, PR China
3School of Life Science and Engineering, Southwest University of Science and Technology, Mianyang 621010, Sichuan, PR China

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