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

机译:连续小波分析从冠层光谱反演冬小麦冠层叶绿素密度

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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 (R 2 = 0.64, RMSE = 0.43 g/m 2 ) was better than that using spectral indices (R 2 = 0.57, RMSE = 0.48 g/m 2 ) 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.
机译:连续小波分析(CWA)已应用于叶尺度光谱数据以定量测定叶绿素含量,但将其应用于冠层尺度光谱数据以估算不同生育期的冬小麦冠层叶绿素密度(CCD)需要进一步分析。本研究旨在通过将CWA应用于中国关中平原185个样品的冠层光谱来估算CCD。使用CWA方法确定了与CCD相关的五个最有用的小波特征。同时,选择了10个常用光谱指数与CWA方法进行比较。建立并比较了两个基于小波特征和光谱指数的偏最小二乘回归(PLSR)模型。结果表明,使用小波特征(R 2 = 0.64,RMSE = 0.43 g / m 2)的PLSR模型要好于使用光谱指数(R 2 = 0.57,RMSE = 0.48 g / m 2)的模型,小波特征的敏感性较低到生长期比光谱指数变化大。该结果表明,CWA方法可以得出鲁棒的小波特征,并且比光谱指数更有效地从农业生态系统的冠层尺度光谱数据预测CCD。

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