Tian Chenyu, Lu Yifei, Xie Hengduo, Yu Yufan, Lu Liming
Agronomy college, Sichuan Agricultural University, Chengdu, 611130, Sichuan, China.
Sci Rep. 2025 Jan 31;15(1):3895. doi: 10.1038/s41598-025-88091-4.
Cigar leaf is a special type of tobacco plant, which is the raw material for producing high-quality cigars. The content and proportion of nicotine and other composite substances of cigar leaves have a crucial impact on their quality and vary greatly with the time of harvest. Hyperspectral remote sensing technology has been widely used in the field of crop monitoring because of its advantages of large area coverage, fast information acquisition, short cycle turnover, strong real-time performance and high efficiency. Therefore, it is important to accurately monitor nicotine content of field crops in a timely manner in the production of high-quality cigar leaf. To this end, this study set out to measure crop reflectance spectra acquired by UAV drones from tobacco field crops by hyperspectral image acquisition. MSC, SG, and SNV were combined and applied to the raw data. The output of these operations was then further processed by CARS, SPA, and UVE algorithms to determine the nicotine sensitive bands. Three machine learning algorithms were then used to analyze the data: PLS, BP, RF, and the SVM. An inversion model of the content of nicotine was established, and the model was evaluated for accuracy. The main research conclusions are as follows: (1) With the increase in the rate of application of nitrogen fertilizer, the nicotine content of cigar leaves increased; (2) Processing data by the CARS, SPA, and UVE methods reduces the degree of data redundancy and information co-linearity in the screening of the content of nicotine sensitive bands; (3) The MSC-SNV-SG-CARS-BP model has the best predictive accuracy on the nicotine content. The prediction accuracy of the testing set was R = 0.797, RMSE = 0.078,RPD = 2.182.
雪茄烟叶是一种特殊类型的烟草植物,是生产高品质雪茄的原料。雪茄烟叶中尼古丁等复合物质的含量和比例对其品质有至关重要的影响,且随收获时间的不同而有很大差异。高光谱遥感技术因其具有大面积覆盖、信息获取速度快、周转周期短、实时性强和效率高等优点,已在作物监测领域得到广泛应用。因此,在高品质雪茄烟叶生产中及时准确地监测田间作物的尼古丁含量很重要。为此,本研究着手通过高光谱图像采集来测量无人机从烟草田间作物获取的作物反射光谱。将多元散射校正(MSC)、Savitzky-Golay(SG)和标准正态变量变换(SNV)相结合并应用于原始数据。然后,这些操作的输出通过竞争性自适应重加权算法(CARS)、连续投影算法(SPA)和无信息变量消除算法(UVE)进一步处理,以确定尼古丁敏感波段。接着使用三种机器学习算法对数据进行分析:偏最小二乘法(PLS)、反向传播神经网络(BP)、随机森林(RF)和支持向量机(SVM)。建立了尼古丁含量的反演模型,并对模型的准确性进行了评估。主要研究结论如下:(1)随着氮肥施用量的增加,雪茄烟叶的尼古丁含量增加;(2)通过CARS、SPA和UVE方法处理数据,在筛选尼古丁敏感波段含量时降低了数据冗余度和信息共线性程度;(3)MSC-SNV-SG-CARS-BP模型对尼古丁含量具有最佳预测精度。测试集的预测精度为R = 0.797,均方根误差(RMSE)= 0.078,相对分析误差(RPD)= 2.182。