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首页> 外文期刊>Biochemical and Biophysical Research Communications >Identification of moisture content in tobacco plant leaves using outlier sample eliminating algorithms and hyperspectral data
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Identification of moisture content in tobacco plant leaves using outlier sample eliminating algorithms and hyperspectral data

机译:使用异常试样消除算法和超光谱数据鉴定烟草植物叶片中的水分含量

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Fast identification of moisture content in tobacco plant leaves plays a key role in the tobacco cultivation industry and benefits the management of tobacco plant in the farm. In order to identify moisture content of tobacco plant leaves in a fast and nondestructive way, a method involving Mahalanobis distance coupled with Monte Carlo cross validation(MD-MCCV) was proposed to eliminate outlier sample in this study. The hyperspectral data of 200 tobacco plant leaf samples of 20 moisture gradients were obtained using FieldSpc (R) 3 spectrometer. Savitzky-Golay smoothing(SG), roughness penalty smoothing(RPS), kernel smoothing(KS) and median smoothing(MS) were used to preprocess the raw spectra. In addition, Mahalanobis distance(MD), Monte Carlo cross validation(MCCV) and Mahalanobis distance coupled to Monte Carlo cross validation(MD-MCCV) were applied to select the outlier sample of the raw spectrum and four smoothing preprocessing spectra. Successive projections algorithm (SPA) was used to extract the most influential wavelengths. Multiple Linear Regression (MLR) was applied to build the prediction models based on preprocessed spectra feature in characteristic wavelengths. The results showed that the preferably four prediction model were MD-MCCV-SG (R-p(2) = 0.8401 and RMSEP = 0.1355), MD-MCCV-RPS (R-p(2) = 0.8030 and RMSEP = 0.1274), MD-MCCV-KS (R-p(2) = 0.8117 and RMSEP = 0.1433), MD-MCCV-MS (R-p(2) = 0.9132 and RMSEP = 0.1162). MD-MCCV algorithm performed best among MD algorithm, MCCV algorithm and the method without sample pretreatment algorithm in the eliminating outlier sample from 20 different moisture gradients of tobacco plant leaves and MD-MCCV can be used to eliminate outlier sample in the spectral preprocessing. (C) 2016 Elsevier Inc. All rights reserved.
机译:快速鉴定烟草植物的水分含量在烟草栽培行业中发挥着关键作用,并利用农场烟草植物的管理。为了以快速和无损方式识别烟草植物的水分含量,提出了一种涉及蒙特卡罗交叉验证(MD-MCCV)的Mahalanobis距离的方法,以消除本研究中的异常样品。使用FieldSpc(R)3光谱仪获得200个烟草植物叶样品的200个烟草植物叶样品的高光谱数据。 Savitzky-golay平滑(SG),粗糙度罚款平滑(RPS),内核平滑(KS)和中位平滑(MS)用于预处理原始光谱。此外,耦合到蒙特卡罗交叉验证(MD-MCCV)的Mahalanobis距离(MD),蒙特卡罗交叉验证(MCCV)和Mahalanobis距离选择原始频谱和四个平滑预处理光谱的异常样本。连续投影算法(SPA)用于提取最有影响力的波长。应用多个线性回归(MLR)以基于特征波长的预处理光谱特征构建预测模型。结果表明,优选四种预测模型是MD-MCCV-SG(RP(2)= 0.8401和RMSEP = 0.1355),MD-MCCV-RPS(RP(2)= 0.8030和RMSEP = 0.1274),MD-MCCV- KS(RP(2)= 0.8117和RMSEP = 0.1433),MD-MCCV-MS(RP(2)= 0.9132和RMSEP = 0.1162)。 MD-MCCV算法在MD算法,MCCV算法和没有样品预处理算法中的方法中最佳地执行,从消除异常梯度的烟草植物叶片的不同水分梯度和MD-MCCV可以使用MD-MCCV在光谱预处理中消除异常样品。 (c)2016年Elsevier Inc.保留所有权利。

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