Plant Recognition through the Fusion of 2D and 3D Images for Robotic Weeding
Author(s) -
Jingyao Gai,
Lie Tang,
Brian L. Steward
Publication year - 2015
Publication title -
2015 asabe international meeting
Language(s) - English
Resource type - Conference proceedings
DOI - 10.13031/aim.20152181371
Subject(s) - weed , point cloud , weed control , computer science , identification (biology) , crop , robot , artificial intelligence , row , agricultural engineering , sensor fusion , computer vision , agronomy , database , engineering , biology , botany
. In crop production systems, weed management is vitally important. But both manual weeding and herbicide-based weed controlling are problematic due to concerns in cost, operator health, emergence of herbicide-resistant weed species, and environment impact. Automated robotic weeding offers a possibility of controlling weeds in a precise fashion, particularly for weeds growing near crops or within crop rows. However, identification and localization of plants have not yet been fully automated. The goal of this reported project is to develop a high-throughput plant recognition and localization algorithm by fusing 2D color and textural data with 3D point cloud data. Plant morphological models were developed and applied for plant recognition against different weed species at different growth stages.
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