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首页> 外文期刊>American Journal of Plant Sciences >Testing Leaf Multispectral Reflectance Data as Input into Random Forest to Differentiate Velvetleaf from Soybean
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Testing Leaf Multispectral Reflectance Data as Input into Random Forest to Differentiate Velvetleaf from Soybean

机译:测试叶片多光谱反射率数据作为输入到随机森林中以区分Velvetleaf与大豆的差异

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摘要

Velvetleaf (Abutilon theophrasti Medic.) infestations negatively impact row crop production throughout the United States and Canada’s eastern provinces. To implement management strategies to control velvetleaf, managers need tools for differentiating it from crop plants. 5 Band, 7 Band, 8 Band, and 16 Band multispectral datasets simulating LANDSAT 3 plus a blue band, LANDSAT 8, WorldView 2, and WorldView 3 spectral bands, respectively were tested as input into the random forest algorithm for velvetleaf soybean [Glycine max L. (Merr.)] discrimination. During two separate greenhouse experiments in 2014, leaf reflectance measurements were obtained at the vegetative growth stage of velvetleaf plants and two soybean varieties. The reflectance measurements were collected with a plant contact probe attached to a hyperspectral spectroradiometer. Leaf hyperspectral reflectance measurements were convolved to the four multispectral datasets with computer software. Overall, user’s, and producer’s accuracies and kappa coefficient were employed to determine classification accuracies. Using the multispectral datasets as input, the random forest algorithm differentiated velvetleaf from the soybean varieties with accuracies ranging from 86.7% to 100%. 7 Band, 16 Band, 8 Band, and 5 Band datasets ranked or tied for the highest accuracies seventeen, sixteen, twelve, and one time, respectively. Kappa coefficients indicated an almost perfect agreement (i.e., kappa value, 0.81 - 1.0) to substantial agreement (i.e., kappa value, 0.61 - 0.80) between reference data and model predicted classes. This study was the first to demonstrate the application of the random forest machine learner and leaf multispectral reflectance data as tools to distinguish velvetleaf from soybean and to identify multispectral band combinations providing the best accuracies. Findings support further application of the random forest machine learner along with remotely-sensed multispectral data as tools for velvetleaf soybean discrimination with future implications for site-specific management of velvetleaf.
机译:Velvetleaf(Abutilon theophrasti Medic。)的侵扰对美国和加拿大东部各省的行间作物产量产生了负面影响。为了实施控制绒毛的管理策略,管理者需要工具来将其与农作物区分开。测试了分别模拟LANDSAT 3以及蓝色波段LANDSAT 8,WorldView 2和WorldView 3光谱带的5波段,7波段,8波段和16波段多光谱数据集作为草皮大豆[Glycine max L.(Merr。)]歧视。在2014年进行的两个独立温室试验中,在绒毛植物和两个大豆品种的营养生长阶段获得了叶片反射率测量值。用连接到高光谱光谱仪的植物接触探针收集反射率测量值。使用计算机软件将叶片高光谱反射率测量结果卷积为四个多光谱数据集。总体而言,使用了用户和生产者的精度和kappa系数来确定分类精度。使用多光谱数据集作为输入,随机森林算法将绒毛与大豆品种区分开,准确度范围为86.7%至100%。排名最高或排名最高的7 Band,16 Band,8 Band和5 Band数据集分别达到17、16、12和1次。 Kappa系数表示参考数据与模型预测类别之间的基本一致性(即Kappa值,0.61-0.80)几乎是完美的一致性(即Kappa值,0.81-1.0)。这项研究首次证明了随机森林机器学习者和叶片多光谱反射率数据的应用作为区分天鹅绒和大豆并确定提供最佳精度的多光谱组合的工具。研究结果支持随机森林机器学习器的进一步应用以及遥感多光谱数据作为草皮大豆鉴别的工具,对草皮特定地点的管理有未来的意义。

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