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Classifying Cannabis Sativa Flowers, Stems and Leaves using Statistical Machine Learning with Near-Infrared Hyperspectral Reflectance Imaging

机译:使用统计机器学习和近红外高光谱反射成像技术对大麻花,茎和叶进行分类

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Several jurisdictions around the world have now legalized the production of medicinal cannabis products. Consequently, Cannabis sativa start to emerge as an economically significant agricultural crop. Hyperspectral sensing tools are employed in agriculture to gather just-in-time non-contact and non-destructive health and growth information in high-value crop production. Unfortunately, no data or reports can be found in the literature on the use of hyperspectral sensing to monitor and evaluate the Cannabis sativa plants. This paper investigates the use of hyperspectral near-infrared imaging to identify the Cannabis sativa plant components such as flowers, stems and leaves on the crop. This is the first step towards developing a real-time monitoring system that would support decision-making on the optimal daily growing conditions to improve crop yield and profitability.
机译:现在,世界上几个司法管辖区已将药用大麻产品的生产合法化。因此,大麻开始成为具有重要经济意义的农业作物。农业中使用了高光谱传感工具,以收集高价值作物生产中的实时非接触式和非破坏性健康与成长信息。不幸的是,在文献中找不到有关使用高光谱感应监测和评估大麻植物的数据或报告。本文研究了使用高光谱近红外成像来识别大麻植物中的成分,例如作物上的花,茎和叶。这是开发实时监控系统的第一步,该系统将支持在最佳每日生长条件下进行决策,以提高农作物的产量和获利能力。

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