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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Discrimination of Corn from Monocotyledonous Weeds with Ultraviolet (UV) Induced Fluorescence
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Discrimination of Corn from Monocotyledonous Weeds with Ultraviolet (UV) Induced Fluorescence

机译:紫外线诱导的单子叶杂草中玉米的荧光鉴别

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In production agriculture, savings in herbicides can be achieved if weeds can be discriminated from crop, allowing the targeting of weed control to weed-infested areas only. Previous studies demonstrated the potential of ultraviolet (UV) induced fluorescence to discriminate corn from weeds and recently, robust models have been obtained for the discrimination between monocots (including corn) and dicots. Here, we developed a new approach to achieve robust discrimination of monocot weeds from corn. To this end, four corn hybrids (Elite 60T05, Monsanto DKC 26-78, Pioneer 39Y85 (RR), and Syngenta N2555 (Bt, LL)) and four monocot weeds (Digitaria ischaemum (Schreb.) I, Echinochloa crus-galli (L.) Beauv., Panicum capillare (L.), and Setaria glauca (L.) Beauv.) were grown either in a greenhouse or in a growth cabinet and UV (327 nm) induced fluorescence spectra (400 to 755 nm) were measured under controlled or uncontrolled ambient light intensity and temperature. This resulted in three contrasting data sets suitable for testing the robustness of discrimination models. In the blue-green region (400 to 550 nm), the shape of the spectra did not contain any useful information for discrimination. Therefore, the integral of the blue-green region (415 to 455 nm) was used as a normalizing factor for the red fluorescence intensity (670 to 755 nm). The shape of the normalized red fluorescence spectra did not contribute to the discrimination and in the end, only the integral of the normalized red fluorescence intensity was left as a single discriminant variable. Applying a threshold on this variable minimizing the classification error resulted in calibration errors ranging from 14.2percent to 15.8percent, but this threshold varied largely between data sets. Therefore, to achieve robustness, a model calibration scheme was developed based on the collection of a calibration data set from 75 corn plants. From this set, a new threshold can be estimated as the 85percent quantile on the cumulative frequency curve of the integral of the normalized red fluorescence. With this approach the classification error was nearly constant (16.0percent to 18.5percent), thereby indicating the potential of UV-induced fluorescence to reliably discriminate corn from monocot weeds.
机译:在生产性农业中,如果可以将杂草与作物区分开来,则可以节省除草剂,从而仅将杂草防治的目标对准杂草侵染的地区。先前的研究证明了紫外线(UV)诱导的荧光有可能将玉米与杂草区分开,最近,已经获得了用于区分单子叶植物(包括玉米)和双子叶植物的可靠模型。在这里,我们开发了一种新方法来实现对玉米单子叶杂草的有力鉴别。为此,有四个玉米杂交种(Elite 60T05,Monsanto DKC 26-78,Pioneer 39Y85(RR)和先正达N2555(Bt,LL))和四个单子叶杂草(Digitaria ischaemum(Schreb。)I,棘皮E(Echinochloa crus-galli( L.)Beauv。,Panicum capillare(L.)和Setaria glauca(L.)Beauv。)在温室或生长柜中生长,并且UV(327 nm)诱导的荧光光谱(400至755 nm)在在受控或不受控的环境光强度和温度下测量。这产生了三个对比数据集,适用于测试判别模型的鲁棒性。在蓝绿色区域(400至550 nm)中,光谱的形状不包含任何有用的判别信息。因此,将蓝绿色区域(415至455 nm)的积分用作红色荧光强度(670至755 nm)的归一化因子。归一化的红色荧光光谱的形状无助于鉴别,最后,仅归一化的红色荧光强度的积分作为单个判别变量。在此变量上应用阈值可最大程度地减少分类误差,从而导致校准误差在14.2%至15.8%的范围内,但是此阈值在数据集之间差异很大。因此,为了获得鲁棒性,基于从75个玉米植物中收集的校准数据集,开发了模型校准方案。从这个集合中,可以将新阈值估计为归一化红色荧光积分的累积频率曲线上的85%分位数。用这种方法,分类误差几乎是恒定的(16.0%至18.5%),从而表明了紫外线诱导的荧光有可能可靠地将玉米与单子叶杂草区分开。

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