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QUANTITATIVE ANALYSIS OF CADMIUM CONTENT IN TOMATO LEAVES BASED ON HYPERSPECTRAL IMAGE AND FEATURE SELECTION

机译:基于高光谱图像和特征选择的番茄树叶中镉含量的定量分析

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摘要

In order to ensure that safe and healthy tomatoes can be provided to people, a method for quantitative determination of cadmium content in tomato leaves based on hyperspectral imaging technology was put forward in this study. Tomato leaves with seven cadmium stress gradients were studied. Hyperspectral images of all samples were firstly acquired by the hyperspectral imaging system, then the spectral data were extracted from the hyperspectral images. To simplify the model, three algorithms of competitive adaptive reweighted sampling (CARS), variable combination population analysis (VCPA) and bootstrapping soft shrinkage (BOSS) were used to select the feature wavelengths ranging from 431 to 962 nm. Final results showed that BOSS can improve prediction performance and greatly reduce features when compared with the other two selection methods. The BOSS model got the best accuracy in calibration and prediction with R-p(2) of 0.9907 and RNISEC of 0.4257mg/kg, R(2)c of 0.9821, and RVISEP of 0.6461 mg/kg. Hence, the method of hyperspectral technology combined with the BOSS feature selection is feasible for detecting the cadmium content of tomato leaves, which can potentially provide a new method and thought for cadmium content detection of other crops.
机译:为了确保可以向人提供安全和健康的西红柿,本研究提出了一种基于高光谱成像技术的番茄叶中锡甲含量测定的方法。研究了番茄叶,患有七个镉应激梯度。首先由高光谱成像系统获取所有样品的高光谱图像,然后从高光谱图像中提取光谱数据。为了简化模型,使用三种竞争自适应重载采样(CARS),可变组合群体分析(VCPA)和自举软收缩(BOSS)来选择范围为431至962nm的特征波长。最终结果表明,与其他两种选择方法相比,BOSS可以提高预测性能,大大降低功能。 BOSS模型在校准和预测中获得最佳精度,R-P(2)为0.9907,RNISEC为0.4257mg / kg,r(2)c为0.9821,RVISEP为0.6461mg / kg。因此,高光谱技术与凸台特征选择结合的方法是可以检测番茄叶的镉含量的可行性,这可能潜在地提供其他作物的镉含量检测的新方法和思考。

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