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基于PCA的土壤Cd含量高光谱反演模型对比研究
引用本文:郭飞,许镇,马宏宏,刘秀金,杨峥,唐世琪. 基于PCA的土壤Cd含量高光谱反演模型对比研究[J]. 光谱学与光谱分析, 2021, 41(5): 1625-1630. DOI: 10.3964/j.issn.1000-0593(2021)05-1625-06
作者姓名:郭飞  许镇  马宏宏  刘秀金  杨峥  唐世琪
作者单位:中国地质科学院地球物理地球化学勘查研究所,河北 廊坊 065000;中国地质调查局土地质量地球化学调查评价研究中心,河北 廊坊 065000;中国科学院空天信息创新研究院,北京 100101
基金项目:中国地质科学院地球物理地球化学勘查研究所所长基金项目(AS2019J02);国家自然科学基金项目(41503024);中国地质调查局地质调查项目(DD20190518)资助。
摘    要:土壤重金属污染对人类健康造成了极大的威胁,如何快速摸清土壤污染情况尤为重要.高光谱遥感具备光谱分辨率高,快速无损等优势,使其在土壤组分反演方面具有巨大的潜力.针对高光谱信息冗余及光谱变换对土壤镉(Cd)含量估算的影响进行分析,并利用变换前后的高光谱数据对比研究了不同高光谱模型对土壤Cd含量反演的性能.首先利用等离子体质...

关 键 词:Cd含量  高光谱  主成分分析  反演模型对比
收稿时间:2020-05-26

A Comparative Study of the Hyperspectral Inversion Models Based on the PCA for Retrieving the Cd Content in the Soil
GUO Fei,XU Zhen,MA Hong-hong,LIU Xiu-jin,YANG Zheng,TANG Shi-qi. A Comparative Study of the Hyperspectral Inversion Models Based on the PCA for Retrieving the Cd Content in the Soil[J]. Spectroscopy and Spectral Analysis, 2021, 41(5): 1625-1630. DOI: 10.3964/j.issn.1000-0593(2021)05-1625-06
Authors:GUO Fei  XU Zhen  MA Hong-hong  LIU Xiu-jin  YANG Zheng  TANG Shi-qi
Affiliation:1. Institute of Geophysical & Geochemical Exploration, Chinese Academy of Geological Sciences, Langfang 065000, China2. Research Center of Geochemical Survey and Assessment on Land Quality, China Geological Survey, Langfang 065000, China3. Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100101, China
Abstract:The soil heavy metal pollution poses a great threat to the human health,thus,it is quite important make out the contamination in the soil.There are a series of advantages in the hyperspectral remote sensing technology,such as the high spectral resolution,rapid response,non-destructive,etc.,making it a well-suited in retrieving the soil’s components.In this study,the impacts of the information redundancy in the spectral and spectral transformation on the inversion of Cd content in the soil are investigated.Further,based on the hyperspectral data before and after spectral transformation,the performance comparations of hyperspectral models are carried out in this paper,as well.By so doing,the Cd contents and the corresponding lab spectrum(350~2500 nm)of 56 soil samples are measured by the ICP-MS and ASD Fieldspec4.Then,the reciprocal and logarithm changes are performed to weaken the impacts of the light variation and soil surface roughness on the experimental results.Due to the fact that there is much redundant information in the obtained data,the Principal Component Analysis(PCA)is carried out to reduce the dimensionality of the spectral bands in the data.After this processing,only 12 principal components are selected as the input variables of the model.Regarding the hyperspectral models,the Partial Least-Squares Regression(PLSR),Support Vector Machine(SVM),Artificial Neural Network(ANN)and Random Forest(RF)are chosen to establish the relationship between the Cd content and PCA components.Finally,for evaluating the prediction capabilities of the regression models,three precision evaluation indexes are preferred to assess the accuracy of regression models in this study,they are the correlation coefficient(R2),Root Mean Squared Error(RMSE)and Residual Predictive Deviation(RPD).Analysis results show that the cumulative contribution rate of 12 principal components of the original data after processed by the PCA can be up to 99.99%.Using principal components as the inputs,all four hyperspectral models show excellent performances in predicting the Cd content in the soil.The PCA-RF,in particular,has the most accurate prediction capability regardless of whether the spectral transformation is performed or not(whose R2 before and after spectral transformation are 0.856 and 0.855,respectively,while the RPD under both conditions are 3.39).In conclusion,the PCA is used to reduce hyperspectral data’s dimensionality,this processing can effectively reduce the redundancy of hyperspectral data and guarantee the predictive capability of hyperspectral models.Also,the principal component selected by the PCA method could be excellent input variables of the hyperspectral models.Further,the hyperspectral model based on the PCA-RF shows the most excellent performance for rapid detecting the Cd element in the soil within the study area and similar regions,which could be a new supplement for the inversion of heavy metals in the soil.
Keywords:Cd content  Hyperspectral  PCA  Inversion model comparison
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