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首页> 外文期刊>Biosystems Engineering >Potential of visible and near-infrared spectroscopy to derive colour groups utilising the Munsell soil colour charts
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Potential of visible and near-infrared spectroscopy to derive colour groups utilising the Munsell soil colour charts

机译:利用Munsell土壤色图得出可见和近红外光谱的颜色组的潜力

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摘要

A study was undertaken to investigate the potential of visible (VIS) and near-infrared (NIR) spectroscopy to derive soil colour groups as a new methodology that might assist in soil type classification. A fibre-optic VIS-NIR spectrophotometer (306,5 - 1710.9 nm) was used to measure the light properties in reflectance mode of 342 dry soil samples collected from fields in Belgium and Northern France. The colour of soil samples was measured with the Munsell soil colour charts, dividing soil samples into two groups of 236 and 106 samples belonging to Hue 2.5Y and Hue 10YR, respectively. Factorial Discriminant Analysis (FDA) was performed separately on each Hue data using the first five Principal Components (PCs) of a Principal Component Analysis (PCA) carried out on colour groups defined a priori. Considering the 2.5Y Hue group, soil samples were classified successfully into four colour groups with a correct classification (CC) of 87.3% and 81.8% for the calibration and validation spectra, respectively. Lower accuracy was observed for the 10YR Hue group for classification into three groups, since 79.6% and 75.0% of samples were correctly classified for calibration and validation sample sets, respectively. Establishing four colour groups by combining both Hue groups decreased the classification accuracy considerably. In order to improve the classification accuracy, the first 5 PCs and first 2 PCs of PCA performed on soil spectra and on the total carbon (Tot-C), extractable phosphorous (Ext-P) and texture index (Ti), respectively, were pooled (concatenated) into a signal matrix and analysed newly by the FDA. This led to improvement of the classification results of four Hue 2.5Y groups (CC of 82.1% and 89.1%) and three Hue 10YR groups (CC of 84.1% and 82.4%). However, best concatenation results of four groups for the combination of both Hue groups were obtained when only Tot-C and Ext-P were considered without Ti, obtaining a CC of 84.2% of the validation data sets. This suggests that the VIS-NIR spectroscopy combined with chemometric tools has the potential of identifying different soil colour groups for a large geographical area.
机译:进行了一项研究,以调查可见光(VIS)和近红外(NIR)光谱技术推导土壤颜色组的潜力,这是一种可能有助于土壤类型分类的新方法。使用光纤VIS-NIR分光光度计(306,5-1710.9 nm),以反射模式测量从比利时和法国北部的田间采集的342个干燥土壤样品的光特性。用孟塞尔土壤色表测量土壤样品的颜色,将土壤样品分为分别属于Hue 2.5Y和Hue 10YR的236和106两个样品组。使用对先验定义的颜色组进行的主成分分析(PCA)的前五个主成分(PC),分别对每个色相数据执行析因判别分析(FDA)。考虑到2.5Y Hue组,将土壤样品成功地分为四个颜色组,其校正和验证光谱的正确分类(CC)分别为87.3%和81.8%。对于10YR Hue组,将其分为三类的准确性较低,因为分别正确地将79.6%和75.0%的样本分类为校准和验证样本集。通过组合两个色相组来建立四个颜色组会大大降低分类精度。为了提高分类准确度,分别对土壤光谱和总碳(Tot-C),可提取磷(Ext-P)和质地指数(Ti)进行了PCA的前5台PC和前2台PC。合并(连接)成信号矩阵,并由FDA重新分析。这导致四个Hue 2.5Y组(CC分别为82.1%和89.1%)和三个Hue 10YR组(CC分别为84.1%和82.4%)的分类结果得到改善。但是,当仅考虑Tot-C和Ext-P而不添加Ti时,获得了四个组对两个Hue组的最佳串联结果,CC值为验证数据集的84.2%。这表明,将VIS-NIR光谱学与化学计量学工具相结合,可以在较大的地理区域识别不同的土壤颜色组。

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