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Hyperspectral remote sensing for advanced detection of early blight (Alternaria solani) disease in potato (Solanum tuberosum) plants.

机译:高光谱遥感技术可用于马铃薯(Solanum tuberosum)植物中的早疫病(Alternaria solani)疾病的高级检测。

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摘要

Early detection of disease and insect infestation within crops and precise application of pesticides can help reduce potential production losses, reduce environmental risk, and reduce the cost of farming. The goal of this study was the advanced detection of early blight (Alternaria solani) in potato (Solanum tuberosum) plants using hyperspectral remote sensing data captured with a handheld spectroradiometer. Hyperspectral reflectance spectra were captured 10 times over five weeks from plants grown to the vegetative and tuber bulking growth stages. The spectra were analyzed using principal component analysis (PCA), spectral change (ratio) analysis, partial least squares (PLS), cluster analysis, and vegetative indices. PCA successfully distinguished more heavily diseased plants from healthy and minimally diseased plants using two principal components. Spectral change (ratio) analysis provided wavelengths (490-510, 640, 665-670, 690, 740-750, and 935 nm) most sensitive to early blight infection followed by ANOVA results indicating a highly significant difference (p < 0.0001) between disease rating group means. In the majority of the experiments, comparisons of diseased plants with healthy plants using Fisher's LSD revealed more heavily diseased plants were significantly different from healthy plants. PLS analysis demonstrated the feasibility of detecting early blight infected plants, finding four optimal factors for raw spectra with the predictor variation explained ranging from 93.4% to 94.6% and the response variation explained ranging from 42.7% to 64.7%. Cluster analysis successfully distinguished healthy plants from all diseased plants except for the most mildly diseased plants, showing clustering analysis was an effective method for detection of early blight. Analysis of the reflectance spectra using the simple ratio (SR) and the normalized difference vegetative index (NDVI) was effective at differentiating all diseased plants from healthy plants, except for the most mildly diseased plants. Of the analysis methods attempted, cluster analysis and vegetative indices were the most promising. The results show the potential of hyperspectral remote sensing for the detection of early blight in potato plants.
机译:尽早发现农作物内的病虫害和精确施用农药可以帮助减少潜在的生产损失,降低环境风险并降低农业成本。这项研究的目的是使用手持式分光光度计捕获的高光谱遥感数据,对马铃薯(Solanum tuberosum)植物中的早疫病(Alternaria solani)进行高级检测。从植物生长到营养生长和块茎膨大生长阶段,在五周内捕获了10次高光谱反射光谱。使用主成分分析(PCA),光谱变化(比率)分析,偏最小二乘(PLS),聚类分析和营养指标对光谱进行了分析。 PCA使用两个主要成分成功地将重病重的植物与健康和病轻的植物区分开。光谱变化(比率)分析提供了对早期疫病最敏感的波长(490-510、640、665-670、690、740-750和935 nm),随后的方差分析结果表明两者之间存在显着差异(p <0.0001)疾病分级组是指。在大多数实验中,使用Fisher的LSD将患病植物与健康植物进行比较后发现,病情较重的植物与健康植物存在显着差异。 PLS分析证明了检测早疫病植物的可行性,发现了原始光谱的四个最佳因子,其预测变量的解释范围为93.4%至94.6%,响应变量的解释范围为42.7%至64.7%。聚类分析成功地将健康植物与所有患病植物区分开,除了病情最轻的植物外,这表明聚类分析是检测早疫病的有效方法。使用简单比率(SR)和归一化植物营养指数(NDVI)分析反射光谱可有效区分所有患病植物与健康植物,但最轻度患病的植物除外。在尝试的分析方法中,聚类分析和营养指标最有前途。结果表明,高光谱遥感技术可用于检测马铃薯植物中的早疫病。

著录项

  • 作者

    Atherton, Daniel.;

  • 作者单位

    Southern Illinois University at Carbondale.;

  • 授予单位 Southern Illinois University at Carbondale.;
  • 学科 Agriculture.;Remote sensing.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 196 p.
  • 总页数 196
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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