Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis

Continuous wavelet analysis (CWA) has been applied to leaf-scale spectral data for quantifying leaf chlorophyll content, but its application to canopy-scale spectral data for estimating the canopy chlorophyll density (CCD) of winter wheat at different growth stages requires further analysis. This st...

Full description

Bibliographic Details
Main Author: Qingkong Cai, Erjun Li, Jiechen Pan and Chao Chen
Format: Article
Language:English
Published: Technoscience Publications 2019-12-01
Series:Nature Environment and Pollution Technology
Online Access:http://neptjournal.com/upload-images/NL-72-15-(13)G-186.pdf
id doaj-1776fe47246d47afae3940cbc2bc84ad
record_format Article
spelling doaj-1776fe47246d47afae3940cbc2bc84ad2020-11-25T03:29:03ZengTechnoscience PublicationsNature Environment and Pollution Technology0972-62682395-34542019-12-0118412111218Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet AnalysisQingkong Cai, Erjun Li, Jiechen Pan and Chao ChenContinuous wavelet analysis (CWA) has been applied to leaf-scale spectral data for quantifying leaf chlorophyll content, but its application to canopy-scale spectral data for estimating the canopy chlorophyll density (CCD) of winter wheat at different growth stages requires further analysis. This study aims to estimate CCD by applying CWA to the canopy spectra of 185 samples from Guanzhong Plain, China. The five most informative wavelet features related to CCD were identified using the CWA method. Meanwhile, 10 commonly used spectral indices were selected to compare with the CWA method. Two partial least square regression (PLSR) models based on wavelet features and spectral indices were developed and compared. Results showed that the PLSR model using wavelet features (R2 = 0.64, RMSE = 0.43 g/m2) was better than that using spectral indices (R2 = 0.57, RMSE = 0.48 g/m2) and wavelet features were less sensitive to the growth stage variation than spectral indices. This result suggested that the CWA approach can derive robust wavelet features and was more effective than spectral indices for predicting CCD from canopy-scale spectral data for an agricultural ecosystem.http://neptjournal.com/upload-images/NL-72-15-(13)G-186.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Qingkong Cai, Erjun Li, Jiechen Pan and Chao Chen
spellingShingle Qingkong Cai, Erjun Li, Jiechen Pan and Chao Chen
Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
Nature Environment and Pollution Technology
author_facet Qingkong Cai, Erjun Li, Jiechen Pan and Chao Chen
author_sort Qingkong Cai, Erjun Li, Jiechen Pan and Chao Chen
title Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
title_short Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
title_full Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
title_fullStr Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
title_full_unstemmed Retrieval of the Canopy Chlorophyll Density of Winter Wheat from Canopy Spectra Using Continuous Wavelet Analysis
title_sort retrieval of the canopy chlorophyll density of winter wheat from canopy spectra using continuous wavelet analysis
publisher Technoscience Publications
series Nature Environment and Pollution Technology
issn 0972-6268
2395-3454
publishDate 2019-12-01
description Continuous wavelet analysis (CWA) has been applied to leaf-scale spectral data for quantifying leaf chlorophyll content, but its application to canopy-scale spectral data for estimating the canopy chlorophyll density (CCD) of winter wheat at different growth stages requires further analysis. This study aims to estimate CCD by applying CWA to the canopy spectra of 185 samples from Guanzhong Plain, China. The five most informative wavelet features related to CCD were identified using the CWA method. Meanwhile, 10 commonly used spectral indices were selected to compare with the CWA method. Two partial least square regression (PLSR) models based on wavelet features and spectral indices were developed and compared. Results showed that the PLSR model using wavelet features (R2 = 0.64, RMSE = 0.43 g/m2) was better than that using spectral indices (R2 = 0.57, RMSE = 0.48 g/m2) and wavelet features were less sensitive to the growth stage variation than spectral indices. This result suggested that the CWA approach can derive robust wavelet features and was more effective than spectral indices for predicting CCD from canopy-scale spectral data for an agricultural ecosystem.
url http://neptjournal.com/upload-images/NL-72-15-(13)G-186.pdf
work_keys_str_mv AT qingkongcaierjunlijiechenpanandchaochen retrievalofthecanopychlorophylldensityofwinterwheatfromcanopyspectrausingcontinuouswaveletanalysis
_version_ 1724581084593651712