首页> 外文期刊>Transactions of the ASAE >CLASSIFICATION ACCURACY OF DISCRIMINANT ANALYSIS, ARTIFICIAL NEURAL NETWORKS, AND DECISION TREES FOR WEED AND NITROGEN STRESS DETECTION IN CORN
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CLASSIFICATION ACCURACY OF DISCRIMINANT ANALYSIS, ARTIFICIAL NEURAL NETWORKS, AND DECISION TREES FOR WEED AND NITROGEN STRESS DETECTION IN CORN

机译:玉米杂草和氮胁迫检测的判别分析,人工神经网络和决策树的分类准确性

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摘要

Hyperspectral images of experimental plots, cropped with corn ( Zea mays L.) and to which twelve combinations of three nitrogen application rates and four weed management strategies were applied, were obtained with a 72-waveband compact airborne spectrographic imager (CASI). The images were taken at three times during the 2000 growing season: early growth, tasseling, and full maturity. Nitrogen application rates were 60, 120, and 250 kg N ha -1 . Weed controls were: none, control of grasses, control of broadleaf weeds, and full weed control. The objective of this study was to evaluate discriminant analysis as a tool for classifying images with respect to the nitrogen and weed management practices applied to the experimental plots, and to compare the classification accuracy of this technique with those obtained by artificial neural network (ANN) and decision tree (DT) algorithms on the same data. Significant wavebands were selected, among the 72 available, using the stepwise option of the STEPDISC procedure (SAS software). Classification accuracy was determined for the full set of selected wavebands and for subsets thereof, for three problems: distinguishing between the 12 combinations of factor levels, differentiating between nitrogen levels only, and separating weed controls only. Misclassification rates of images, taken at the initial growth stage, were substantially lower for each of these tasks (25%, 17%, and 13%, respectively) when discriminant analysis was used. The ANN approach was best for images taken at the tasseling and full maturity stages. However, from the precision-farming point of view, it is easier to apply site-specific remedies to weed and nitrogen stresses early in the season than when the corn crop has reached the tasseling stage, so the results obtained with the discriminant analysis are noteworthy
机译:使用72波段紧凑型机载光谱成像仪(CASI)获得了用玉米(Zea mays L.)种植的试验田的高光谱图像,并对其应用了三种氮肥施用率和四种杂草处理策略的十二种组合。这些图像是在2000年生长季节拍摄的三幅图像:早期生长,流苏和完全成熟。施氮量分别为60、120和250 kg N ha -1 。杂草防治措施为:无,除草措施,阔叶杂草控制措施和完全除草措施。这项研究的目的是评估判别分析,将其作为对用于试验区的氮和杂草管理实践进行图像分类的工具,并将该技术的分类准确性与通过人工神经网络(ANN)获得的分类准确性进行比较和相同数据上的决策树(DT)算法。使用STEPDISC程序(SAS软件)的逐步选项,从72个可用波段中选择了重要的波段。确定了全部选定波段及其子集的分类准确性,涉及三个问题:区分因子水平的12种组合,仅区分氮水平以及仅分离杂草对照。当使用判别分析时,在初始生长阶段拍摄的图像分类错误率要低得多(分别为25%,17%和13%)。 ANN方法最适合在抽雄和完全成熟阶段拍摄的图像。但是,从精耕细作的角度来看,与玉米作物达到抽穗期相比,在季节早期更容易对杂草和氮胁迫进行针对性的补救措施,因此判别分析获得的结果值得注意

著录项

  • 来源
    《Transactions of the ASAE》 |2005年第3期|p.1261-1268|共8页
  • 作者单位

    Yousef Karimi, ASAE Student Member, Research Assistant, Shiv O. Prasher, ASAE Member, James McGill Professor, Robert B. Bonnell, ASAE Member Engineer, Professor, Department of Bioresource Engineering, and Pierre Dutilleul, Professor, Department of Plant Science, McGill University, Macdonald Campus, Ste-Anne-de-Bellevue, Quebec, Canada;

    Heather McNairn, Research Scientist, Agriculture and Agri-Food Canada, Ottawa, Ontario, Canada;

    and Pradeep Kumar Goel, ASAE Member Engineer, Senior Surface Water Scientist, Environmental Monitoring and Reporting Branch, Ontario Ministry of the Environment, Etobicoke, Ontario, Canada. Corresponding author: S. O. Prasher, Agricultural and Biosystems Engineering Department, McGill University, Macdonald Campus, 21111 Lakeshore Road, Ste-Anne-de-Bellevue, Quebec, Canada, H9X 3V9;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Corn field; Multivariate discriminant analysis; Narrow wavebands; Nitrogen stress; Remote sensing; Weed stress;

    机译:玉米田;多元判别分析;窄波段;氮胁迫遥感;杂草胁迫;

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