Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data

In order to assess maize growth status accurately and quickly for improving maize precise management, field experiment was conducted in Gongzhuling research station, Jilin Academy of Agricultural Sciences, Jilin province. Experimental design included 3 planting densities and 5 maize materials. The n...

Descripción completa

Guardado en:
Detalles Bibliográficos
Autores principales: SHU Meiyan, CHEN Xiangyang, WANG Xiqing, MA Yuntao
Formato: article
Lenguaje:EN
ZH
Publicado: Editorial Office of Smart Agriculture 2021
Materias:
Acceso en línea:https://doaj.org/article/1690d6b0d1744e8ab94bb35f9f879c05
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
id oai:doaj.org-article:1690d6b0d1744e8ab94bb35f9f879c05
record_format dspace
spelling oai:doaj.org-article:1690d6b0d1744e8ab94bb35f9f879c052021-11-17T07:52:00ZEstimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data2096-809410.12133/j.smartag.2021.3.1.202102-SA004https://doaj.org/article/1690d6b0d1744e8ab94bb35f9f879c052021-03-01T00:00:00Zhttp://www.smartag.net.cn/article/2021/2096-8094/2096-8094-2021-3-1-29.shtmlhttps://doaj.org/toc/2096-8094In order to assess maize growth status accurately and quickly for improving maize precise management, field experiment was conducted in Gongzhuling research station, Jilin Academy of Agricultural Sciences, Jilin province. Experimental design included 3 planting densities and 5 maize materials. The near-ground hyperspectral data and the unmanned aerial vehicle (UAV) hyperspectral images were obtained when maize were during V11-V12 stage. The application abilities of the hyperspectral data obtained from the two phenotyping platforms were compared and analyzed in the estimation of maize leaf area index (LAI) and aboveground biomass. In this study, 21 commonly used spectral vegetation indices were constructed based on ground hyperspectral data, and then the estimation models of maize LAI and aboveground biomass were established based on ground hyperspectral full-bands, UAV hyperspectral full-bands and vegetation indices and partial least square regression method, respectively. According to the variance estimation of regression coefficients, the important bands of LAI and aboveground biomass were selected, and the partial least square method was also used to establish the estimation model of maize LAI and aboveground biomass based on important bands. The results showed that the canopy spectral reflectance of the same maize material increased with the increase of planting density in the near infrared bands. Among the 5 maize materials under the same planting density, the canopy spectral reflectance of wild type material was the lowest in the visible and near infrared bands. For LAI, the model constructed based on vegetation indices had the best estimation result, with R2, RMSE and rRMSE values of 0.70, 0.92 and 15.94%. For aboveground biomass, the model constructed based on the sensitive spectral bands (839-893 nm and 1336-1348 nm) had the best estimation results, with R2, RMSE and rRMSE values of 0.71, 12.31 g and 15.89%, which showed that there was information redundancy in hyperspectral bands in the estimation of aboveground biomass, and the estimation accuracy could be improved by reducing the number of spectral bands and selecting sensitive spectral bands. In summary, the UAV hyperspectral images have a good application ability in the estimation of maize LAI and aboveground biomass, and can quickly and effectively extract the parameters information of maize growth. For specific parameters, sensitive spectral bands selected can provide reliable basis for the development and practical application of multi-spectrum in the future. The study can provide a reference for the use of hyperspectral technology in the management of precision agriculture at the community scale.SHU MeiyanCHEN XiangyangWANG XiqingMA YuntaoEditorial Office of Smart Agriculturearticlehyper-spectrummaizeleaf area indexaboveground biomasspartial least squares regressionuav remote sensingAgriculture (General)S1-972Technology (General)T1-995ENZH智慧农业, Vol 3, Iss 1, Pp 29-39 (2021)
institution DOAJ
collection DOAJ
language EN
ZH
topic hyper-spectrum
maize
leaf area index
aboveground biomass
partial least squares regression
uav remote sensing
Agriculture (General)
S1-972
Technology (General)
T1-995
spellingShingle hyper-spectrum
maize
leaf area index
aboveground biomass
partial least squares regression
uav remote sensing
Agriculture (General)
S1-972
Technology (General)
T1-995
SHU Meiyan
CHEN Xiangyang
WANG Xiqing
MA Yuntao
Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
description In order to assess maize growth status accurately and quickly for improving maize precise management, field experiment was conducted in Gongzhuling research station, Jilin Academy of Agricultural Sciences, Jilin province. Experimental design included 3 planting densities and 5 maize materials. The near-ground hyperspectral data and the unmanned aerial vehicle (UAV) hyperspectral images were obtained when maize were during V11-V12 stage. The application abilities of the hyperspectral data obtained from the two phenotyping platforms were compared and analyzed in the estimation of maize leaf area index (LAI) and aboveground biomass. In this study, 21 commonly used spectral vegetation indices were constructed based on ground hyperspectral data, and then the estimation models of maize LAI and aboveground biomass were established based on ground hyperspectral full-bands, UAV hyperspectral full-bands and vegetation indices and partial least square regression method, respectively. According to the variance estimation of regression coefficients, the important bands of LAI and aboveground biomass were selected, and the partial least square method was also used to establish the estimation model of maize LAI and aboveground biomass based on important bands. The results showed that the canopy spectral reflectance of the same maize material increased with the increase of planting density in the near infrared bands. Among the 5 maize materials under the same planting density, the canopy spectral reflectance of wild type material was the lowest in the visible and near infrared bands. For LAI, the model constructed based on vegetation indices had the best estimation result, with R2, RMSE and rRMSE values of 0.70, 0.92 and 15.94%. For aboveground biomass, the model constructed based on the sensitive spectral bands (839-893 nm and 1336-1348 nm) had the best estimation results, with R2, RMSE and rRMSE values of 0.71, 12.31 g and 15.89%, which showed that there was information redundancy in hyperspectral bands in the estimation of aboveground biomass, and the estimation accuracy could be improved by reducing the number of spectral bands and selecting sensitive spectral bands. In summary, the UAV hyperspectral images have a good application ability in the estimation of maize LAI and aboveground biomass, and can quickly and effectively extract the parameters information of maize growth. For specific parameters, sensitive spectral bands selected can provide reliable basis for the development and practical application of multi-spectrum in the future. The study can provide a reference for the use of hyperspectral technology in the management of precision agriculture at the community scale.
format article
author SHU Meiyan
CHEN Xiangyang
WANG Xiqing
MA Yuntao
author_facet SHU Meiyan
CHEN Xiangyang
WANG Xiqing
MA Yuntao
author_sort SHU Meiyan
title Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
title_short Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
title_full Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
title_fullStr Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
title_full_unstemmed Estimation of Maize Leaf Area Index and Aboveground Biomass Based on Hyperspectral Data
title_sort estimation of maize leaf area index and aboveground biomass based on hyperspectral data
publisher Editorial Office of Smart Agriculture
publishDate 2021
url https://doaj.org/article/1690d6b0d1744e8ab94bb35f9f879c05
work_keys_str_mv AT shumeiyan estimationofmaizeleafareaindexandabovegroundbiomassbasedonhyperspectraldata
AT chenxiangyang estimationofmaizeleafareaindexandabovegroundbiomassbasedonhyperspectraldata
AT wangxiqing estimationofmaizeleafareaindexandabovegroundbiomassbasedonhyperspectraldata
AT mayuntao estimationofmaizeleafareaindexandabovegroundbiomassbasedonhyperspectraldata
_version_ 1718425847040311296