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Plants detection, localization and discrimination using 3D machine vision for robotic intra-row weed control

机译:使用3D机器视觉进行植物行杂草控制的植物检测,定位和鉴别

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摘要

Weed management is vitally important in crop production systems. However, conventional herbicide-based weed control can lead to negative environmental impacts. Manual weed control is laborious and impractical for large scale production. Robotic weeding offers a possibility of controlling weeds precisely, particularly for weeds growing close to or within crop rows. The fusion of two-dimensional textural images and three-dimensional spatial images to recognize and localize crop plants at different growth stages were investigated. Images of different crop plants at different growth stages with weeds were acquired. Feature extraction algorithms were developed, and different features were extracted and used to train plant and background classifiers, which also addressed the problems of canopy occlusion and leaf damage. Then, the efficacy and accuracy of the proposed methods in classification were demonstrated by experiments. Currently, the algorithms were only developed and tested for broccoli and lettuce. For broccoli plants, the crop plants detection true positive rate was 93.1%, and the false discover rate was 1.1%, with the average crop-plant-localization error of 15.9 mm. For lettuce plants, the crop plants detection true positive rate was 92.3%, and the false discover rate was 4.0%, with the average crop-plant-localization error of 8.5 mm. The results have shown that 3D imaging based plant recognition algorithms are effective and reliable for crop/weed differentiation.
机译:杂草管理在农作物生产系统中至关重要。但是,常规的基于除草剂的杂草控制会导致负面的环境影响。手动控制杂草对于大规模生产而言既费力又不切实际。机器人除草为精确控制杂草提供了可能,特别是对于在作物行附近或作物行内生长的杂草。研究了二维纹理图像和三维空间图像的融合以识别和定位处于不同生长阶段的农作物。获得了具有杂草的不同生长阶段的不同农作物的图像。开发了特征提取算法,并提取了不同的特征,并将其用于训练植物和背景分类器,这也解决了冠层遮挡和叶片损坏的问题。然后,通过实验证明了该方法在分类中的有效性和准确性。目前,仅针对西兰花和生菜开发和测试了该算法。对于西兰花植物,农作物检出的真实阳性率为93.1%,错误发现率为1.1%,平均农作物定位误差为15.9 mm。对于莴苣植物,农作物检出的真实阳性率为92.3%,错误发现率为4.0%,平均农作物定位误差为8.5 mm。结果表明,基于3D成像的植物识别算法对于作物/杂草的分化是有效而可靠的。

著录项

  • 作者

    Gai, Jingyao.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Engineering.;Agricultural engineering.
  • 学位 M.S.
  • 年度 2016
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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