Hyperspectal imaging technology for phenotyping iron and boron deficiency in Brassica napus under greenhouse conditions

Hui Li, Long Wan, Chengsong Li, Lihong Wang, Shiping Zhu, Xinping Chen, Pei Wang
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Abstract

The micronutrient deficiency of iron and boron is a common issue affecting the growth of rapeseed (Brassica napus). In this study, a non-destructive diagnosis method for iron and boron deficiency in Brassica napus (genotype: Zhongshuang 11) using hyperspectral imaging technology was established.The recognition accuracy was compared using the Fisher Linear Discriminant Analysis (LDA) and Support Vector Machine (SVM) recognition models. Recognition results showed that Multiple Scattering Correction (MSC) could be applied for the full band hyperspectral data processing, while the LDA models presented better performance on establishing the leaf iron and boron deficiency symptom recognition than the SVM models.The recognition accuracy of the training set reached 96.67%, and the recognition rate of the prediction set could be 91.67%. To improve the model accuracy, the Competitive Adaptive Reweighted Sampling algorithm (CARS) was added to construct the MSC-CARS-LDA model. 33 featured wavelengths were selected via CARS. The recognition accuracy of the MSC-CARS-LDA training set was 100%, while the recognition accuracy of the MSC-CARS-LDA prediction set was 95.00%.This study indicates that, it is capable to identify the iron and boron deficiency in rapeseed using hyperspectral imaging technology.
超光谱成像技术用于温室条件下甘蓝型油菜缺铁和缺硼的表型分析
铁和硼的微量营养元素缺乏是影响油菜生长的一个常见问题。本研究利用高光谱成像技术建立了甘蓝型油菜(基因型:中双 11 号)缺铁和缺硼的非破坏性诊断方法,并使用费舍尔线性判别分析(LDA)和支持向量机(SVM)识别模型比较了识别精度。识别结果表明,多重散射校正(MSC)可用于全波段高光谱数据处理,而 LDA 模型在建立叶片缺铁和缺硼症状识别方面的性能优于 SVM 模型。为了提高模型的准确性,在构建 MSC-CARS-LDA 模型时加入了竞争性自适应重加权采样算法(CARS)。通过 CARS 选出了 33 个特征波长。这项研究表明,利用高光谱成像技术能够识别油菜籽中的缺铁和缺硼现象。
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