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玉米叶片铜铅污染元素种类光谱判别的EC-PB规则
引用本文:吴 兵,杨可明,高 伟,李艳茹,韩倩倩,张建红. 玉米叶片铜铅污染元素种类光谱判别的EC-PB规则[J]. 光谱学与光谱分析, 2022, 42(10): 3256-3262. DOI: 10.3964/j.issn.1000-0593(2022)10-3256-07
作者姓名:吴 兵  杨可明  高 伟  李艳茹  韩倩倩  张建红
作者单位:中国矿业大学(北京)地球科学与测绘工程学院,北京 100083
基金项目:国家自然科学基金项目(41971401),中央高校基本科研业务费专项资金(2021YJSDC17)资助
摘    要:随着人类生活质量的提高,农产品重金属污染问题备受关注。农作物中的重金属元素会通过食物链侵害人体健康,而不同重金属元素对人体毒害差别较大,因此农作物中含有重金属元素的类别识别至关重要。传统重金属元素检测方法存在环节多、耗时长、成本高等缺点,但高光谱遥感技术具有信息使用量大,理化反演能力强,分析速度快,无损监测等优势,逐渐成为农作物重金属污染分析的重要手段之一。以不同CuSO4·5H2O和Pb(NO3)2浓度梯度土壤胁迫下典型农作物玉米生长的叶片光谱为研究对象,引入光谱包络线去除(CR)、光谱比值(SR)、分数阶微分(FOD)同时结合改进红边比值指数(MSR)构建铜铅元素识别指数(CLI);通过挑选与铜铅元素种类相关性最强的三个分数阶微分阶数的CLI值建立铜铅元素判别特征点(CLDFP);再利用欧式聚类(EC)将训练集样本分为铜污染与铅污染两类并结合圆心连线的垂直平分线(PB),建立基于EC-PB识别铜铅元素种类的二维坐标系下判别规则线(CLDRL)和三维坐标系下判别规则面(CLDRP),从而实现玉米叶...

关 键 词:光谱分析  玉米叶片  光谱变换  重金属元素识别  欧式聚类  垂直平分线
收稿时间:2021-08-22

EC-PB Rules for Spectral Discrimination of Copper and Lead Pollution Elements in Corn Leaves
WU Bing,YANG Ke-ming,GAO Wei,LI Yan-ru,HAN Qian-qian,ZHANG Jian-hong. EC-PB Rules for Spectral Discrimination of Copper and Lead Pollution Elements in Corn Leaves[J]. Spectroscopy and Spectral Analysis, 2022, 42(10): 3256-3262. DOI: 10.3964/j.issn.1000-0593(2022)10-3256-07
Authors:WU Bing  YANG Ke-ming  GAO Wei  LI Yan-ru  HAN Qian-qian  ZHANG Jian-hong
Affiliation:College of Geoscience and Surveying Engineering, China University of Mining & Technology (Beijing), Beijing 100083, China
Abstract:Heavy metal pollution of agricultural products has attracted much attention along with the improved human quality of life. The heavy metal elements in crops will harm human health through the food chain, and different heavy metal elements have a large difference in toxicity to the human body. Therefore, it is crucial to distinguish the types of heavy metal elements in crops. There are many shortcomings in the traditional methods of detecting heavy metals such as many links, long time, and high cost. However, hyperspectral remote sensing technology has the advantages of abundant information usage, strong physical and chemical inversion capabilities, fast analysis speed, non-destructive monitoring and so on. It has gradually become one of the important methods for analysing heavy metal pollution in crops.Taking the leaf spectra of a typical corn crop growing under soil stressed by different CuSO4·5H2O and Pb(NO3)2 concentration gradients as the research object, the copper (Cu) and lead (Pb) identification index (CLI) was builtbased on spectral processing results of continuum removal (CR), spectral ratio (SR)and fractional-order derivative (FOD) combining with modified red edge simple ratio index (MSR). Then the Cu and Pb element discrimination feature points (CLDFP) were established by selecting the three CLI values of fractional differential orders that have the strongest correlation with the types of Cu and Pb elements. And then, the Cu and Pb elements discriminant rule line (CLDRL) under the two-dimensional coordinate system (2D) and the discriminant rule plane (CLDRP) under the three-dimensional coordinate system (3D) were structured to identify the types of Cu and Pb elements. Based on the Euclidean cluster (EC)- the perpendicular bisector (PB) by using the EC to divide the training samples into two sets of Cu pollution and Pb pollution and combining with the PB to connect the circle enters the sets so that the types could be accurately identified on the heavy metal Cu and Pb elements in the spectral information of corn leaves. The results showed that the correlation between the spectral information of corn leaves and the types of Cu and Pb elements was enhanced because of the CR-SR-FOD spectral transformation processing. The correlation coefficients of the CLI corresponding to each order of FOD and the types of Cu and Pb elements were different. With the increase of orders, the correlation showed a trend of increasing first and then decreasing. Among them, the three values of orders of the highest correlation coefficients were 1.2, 0.7, and 1.0 respectively. The accuracy rate of the training set samples was 78.95% andthe accuracy rate of the verification set samples was 75.0% when discriminated under the 2D, and the accuracy rate of the training set samples was 76.32% and the accuracy rate of the verification set samples was 75.0% when discriminated under the 3D, it is proved that the spectral discriminant rulesof 2D CLDRL and 3D CLDRP based on EC-PB could effectively identify the types of Cu and Pb pollution elements when they polluted the corn leaves.
Keywords:Spectral analysis  Corn leaf  Spectral transformation  Identification of heavy metal elements  Euclidean cluster  Perpendicular bisector  
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