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Distinguishing One Year and Two Year Old Canes of Red Raspberry Plant using Spectral Reflectance

机译:用光谱反射区分一年和两年的红覆盆子植物罐

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Red raspberry (Rubus idaeus) is one of the important horticultural crops around the world. Various canopy management activities such as cane pruning, bundling and tying are used in this crop to improve light distribution and air-flow through plant canopies, which will reduce pest stress and improve crop yield and quality. This operation, however, is highly labor intensive, which threatens the long-term, sustainability of the red raspberry industry as labor availability is dwindling and labor cost is increasing rapidly. Mechanized or automated pruning and bundling system could be a key to ease this problem and increase returns to the growers. First step in developing an automated pruning system is to distinguish one-year-old canes (called primocanes) and two-year-old canes (called floricanes), which could then be used by a robotic system to selectively remove floricanes from the mix of primocanes and floricanes. Floricanes and primocanes look similar in terms of color, shape and size of the canes during dormant season. Hence, a non-imaging spectroscopy method was investigated in this study to utilize spectral signature of primocanes and floricanes, which can vary between two types of canes based on their difference in moisture content and chlorophyll concentration. Forty samples of each floricanes and primocanes were collected in Nov 2017 from a plot of 'Wakefield' cultivar. Optimal wavebands were selected using Principal Component Analysis (PCA) and one-way ANOVA. Wavebands with the significance level of 5% were used. With a group of wavebands in the visible spectrum (596nm, 65nm, 676 nm and 716nm), primocanes and floricanes were distinguished with an accuracy of 91.7% using linear support vector machine. With a combination of wavebands from chlorophyll absorption and water absorption region (716nm, 856nm, 996nm, 1056nm, and 1396nm), a classification accuracy of 100% was achieved. Results show a promise for developing a multispectral sensor (with a few selected bands) for distinguishing between floricane and primocane. To our knowledge, this work represents the first study to compare the reflectance spectra signature to distinguish primocanes and floricanes of red raspberry plants.
机译:红树莓(树莓)是世界各地的重要园艺作物之一。各种篷管理活动,例如甘蔗修剪,捆扎和捆扎在此作物用于改善通过植物冠层,这将减少害虫应力和提高作物产量和品质的光分布和空气流。但此操作,是高度劳动密集,威胁到长期,红树莓产业劳动力供应的可持续性日益减少和劳动力成本迅速增加。机械化或自动化的修剪和捆绑系统可以缓解这个问题,增加返回到种植者的关键。在开发一种自动修剪系统的第一步是将一个岁手杖(称为primocanes)和两个岁手杖(称为floricanes),其然后可以由机器人系统从混合用于选择性地去除floricanes primocanes和floricanes。 Floricanes和primocanes看在休眠期间季节的颜色,形状和手杖的大小方面是相似的。因此,非成像光谱方法在本研究中,研究利用primocanes和floricanes的光谱特征,这可根据它们在水分含量和叶绿素浓度差两种类型的手杖的之间变化。每个floricanes和primocanes四十样品在2017年11月从“韦克菲尔德”品种的情节收集。最佳波段,使用主成分分析(PCA)和单因素方差分析选择。使用具有5%的显着性水平波段。与一组在可见光谱(596nm,65nm的,676 nm和716nm)波段的,primocanes和floricanes使用线性支持向量机的91.7%的准确率进行了区分。与来自叶绿素吸收和水吸收区(716nm,856nm,996nm,1056nm,和1396nm)的波段的组合,100%的分类准确度达到了。结果表明用于开发多光谱传感器(少数选择的波段),用于floricane和primocane之间进行区分的承诺。据我们所知,这项工作是第一个研究,比较的反射光谱特征来区分的红树莓植物primocanes和floricanes。

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