吉林大学学报(工学版) ›› 2001, Vol. ›› Issue (3): 90-94.

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The Technique of Detecting and Identifying Field Plants by Machine Vision

L? Zhao-hui, CHEN Xiao-guang, WU Wen-fu, ZHAO Hong-xia   

  1. College of Biological & Agricultural Engineering, Jilin University, Changchun 130025
  • Received:2001-02-25 Online:2001-07-25

Abstract: Automated detection and identification of field plants(including crops and weeds) are very important to control pests,diseases,and weeds with machine vision.In order to promote the research and the application of this technique in China,the foreign research methods and advancements of application of machine vision technique in detecting and identifying field plants,the paper reviews and presents all the relevant information,which could be used for the references to the researchers who do the similar studies.

Key words: machine vision, plants, detecting, identifying

CLC Number: 

  • S37
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