吉林大学学报(工学版) ›› 2001, Vol. ›› Issue (3): 90-94.
吕朝辉, 陈晓光, 吴文福, 赵红霞
L? Zhao-hui, CHEN Xiao-guang, WU Wen-fu, ZHAO Hong-xia
摘要: 在田间自动检测和识别植物(农作物和杂草)是对农作物进行防病、防虫和杂草控制的重要前提条件.本文综述了机器视觉田间植物检测和识别技术的国外最新研究方法和成果,以促进我国在该领域的应用和发展.
中图分类号:
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