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首页> 外文期刊>American Journal of Plant Sciences >Employing Canopy Hyperspectral Narrowband Data and Random Forest Algorithm to Differentiate Palmer Amaranth from Colored Cotton
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Employing Canopy Hyperspectral Narrowband Data and Random Forest Algorithm to Differentiate Palmer Amaranth from Colored Cotton

机译:采用Canopy HypersPectral窄带数据和随机林算法来区分Palmer Amanth从彩色棉

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Palmer amaranth ( style="font-family:Verdana;">Amaranthus style="font-family:;" "=""> style="font-family:Verdana;">palmeri style="font-family:;" "=""> style="font-family:Verdana;"> S. Wats.) invasion negatively impacts cotton ( style="font-family:Verdana;">Gossypium style="font-family:;" "=""> style="font-family:Verdana;">hirsutum style="font-family:Verdana;"> L.) production systems throughout the United States. The objective of this study was to evaluate canopy hyperspectral narrowband data as input into the random forest machine learning algorithm to distinguish Palmer amaranth from cotton. The study focused on differentiating the Palmer amaranth from cotton near-isogenic lines with bronze, green, and yellow leaves. style="font-family:;" "=""> style="font-family:Verdana;">A spectroradiometer was used to acquire hyperspectral reflectance measurements of Palmer amaranth and cotton canopies for two separate dates, December 12, 2016, and May 14, 2017. Data were collected from plants that were grown in a greenhouse. The spectral data were aggregated to twenty-four hyperspectral narrowbands proposed for study of vegetation and agriculture crops. Those bands were tested by the conditional inference version of random forest (cforest) to differentiate the Palmer amaranth from cotton. Classifications were binary: Palmer amaranth and cotton bronze, Palmer amaranth and cotton green, and Palmer amaranth and cotton yellow. Classification accuracies were verified with overall, user’s, and producer’s accuracy. For the two dates combined, overall accuracy ranged from 77.8% to 88.9%. The highest overall accuracies were observed for the Palmer amaranth versus the cotton yellow classification (88.9%, December 12, 2016; 83.3%, May 14, 2017). style="font-family:;" "=""> style="font-family:Verdana;">Producer’s and user’s accuracies range was 66.7% to 94.4%. Errors were predominately attributed to cotton being misclassified as Palmer amaranth. The overall results indicated that cforest has moderate to strong potential for differentiating Palmer amaranth from cotton when it used hyperspectral narrowbands known to be useful for vegetation and agricultural surveys as input variables. style="font-family:;" "=""> style="font-family:Verdana;">This research further supports using hyperspectral narrowband data and cforest as decision support tools in cotton production systems.
机译:Palmer Amanth( style =“font-family:verdana;”> amaranthus style =“font-family :;”“=”> d style =“font-family:verdana;”> palmeri style =“font-family :;”“=”“> style = “Font-Family:Verdana;”> S. Wats。)入侵产生负面影响棉花( <跨度样式=“Font-Family:Verdana;”> Gossypium style =“font-gramiar :;”“=”“> style =”font-family:verdana;“> hirsutum style =“font-family:verdana;”> l.)在整个美国的生产系统。本研究的目的是评估Canopy高光谱窄带数据作为输入到随机林机器学习算法以区分Palmer Amaranth来自棉花。该研究侧重于将帕尔默苋菜的临近患者与青铜,绿色和黄色叶子区分开来。 style =“font-gryse :;”“=”“> SpectRoradiometer用于获得超级Palmer Amaranth和棉花檐蛋白的光谱反射率测量为两个单独的日期,2016年12月12日,并于2017年5月14日。从温室种植的植物中收集了数据。谱数据汇总到建议用于研究植被和农业作物的二十四个高光谱窄带。这些频段由随机森林(Clest)的条件推理版本测试,以区分帕尔默苋菜的棉花。分类是二元:Palmer Amanth和棉质青铜,帕尔默苋菜和棉花,帕尔默苋菜和棉花黄色。验证了分类准确性,使用总体,用户和生产者的准确性验证。对于两个日期合并,总体精度范围从77.8%到88.9%。对于Palmer Amanth而言,棉花黄色分类的最高精度(88.9%,2016年12月12日; 83.3%,2017年5月14日)。 style =“font-womain :;” “=”“> 样式=”font-family:verdana;“>制作人和用户的准确性范围为66.7%至94.4%。主要是棉花被错误分类为Palmer苋菜。表明的总体​​结果当它使用已知有用的高光谱窄带为植被和农业调查作为输入变量有用的高光谱窄带来区分Palmer Amanth,Clest的潜力很大。 style =“font-womain :;”“=”“ > style =“font-family:verdana;”>本研究进一步支持使用超光线窄带数据和C勒斯特作为棉花生产系统中的决策支持工具。

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