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首页> 外文期刊>Computers and Electronics in Agriculture >Visible-near infrared spectroscopy for detection of Huanglongbing in citrus orchards.
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Visible-near infrared spectroscopy for detection of Huanglongbing in citrus orchards.

机译:可见近红外光谱法检测柑桔园中的黄龙病。

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This paper evaluates the feasibility of applying visible-near infrared spectroscopy for in-field detection of Huanglongbing (HLB) in citrus orchards. Spectral reflectance data from the wavelength range of 350-2500 nm with 989 spectral features were collected from 100 healthy and 93 HLB-infected citrus trees using a visible-near infrared spectroradiometer. During data preprocessing, the spectral data were normalized and averaged every 25 nm to reduce the spectral features from 989 to 86. Three datasets were generated from the preprocessed raw data: first derivatives, second derivatives, and a combined dataset (generated by integrating preprocessed raw data, first derivatives and second derivatives). The preprocessed datasets were analyzed using principal component analysis (PCA) to further reduce the number of features used as inputs in the classification algorithm. The dataset consisting of principal components were randomized and separated into training and testing datasets such that 75% of the dataset was used for training; while 25% of the dataset was used for testing the classification algorithms. The number of samples in the training and testing datasets was 145 and 48, respectively. The classification algorithms tested were: linear discriminant analysis, quadratic discriminant analysis (QDA), k-nearest neighbor, and soft independent modeling of classification analogies (SIMCA). The reported classification accuracies of the algorithms are an average of three runs. When the second derivatives dataset were analyzed, the QDA-based classification algorithm yielded the highest overall average classification accuracies of about 95%, with HLB-class classification accuracies of about 98%. In the combined dataset, SIMCA-based algorithms resulted in high overall classification accuracies of about 92% with low false negatives (less than 3%).
机译:本文评价了应用可见-近红外光谱技术在柑桔园中黄龙病(HLB)现场检测的可行性。使用可见光近红外光谱仪从100棵健康的和93株被HLB感染的柑橘树中收集了具有989个光谱特征的350-2500 nm波长范围内的光谱反射率数据。在数据预处理期间,将光谱数据归一化并每25 nm平均一次,以将光谱特征从989减少到86。从预处理的原始数据生成了三个数据集:一阶导数,二阶导数和组合数据集(通过对预处理的原始数据进行积分生成)数据,一阶导数和二阶导数)。使用主成分分析(PCA)对预处理后的数据集进行分析,以进一步减少在分类算法中用作输入的要素数量。由主成分组成的数据集被随机分为训练和测试数据集,以便将75%的数据用于训练;而25%的数据集用于测试分类算法。训练和测试数据集中的样本数量分别为145和48。测试的分类算法是:线性判别分析,二次判别分析(QDA),最近邻和分类法的软独立建模(SIMCA)。所报告的算法分类准确度是三个运行的平均值。当分析二阶导数数据集时,基于QDA的分类算法产生的总体平均最高分类准确度约为95%,而HLB类的分类准确度约为98%。在组合的数据集中,基于SIMCA的算法可实现约92%的较高总体分类精度,而假阴性率较低(小于3%)。

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