2023
DOI: 10.3390/agronomy13030783
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Estimation of Winter Wheat Canopy Chlorophyll Content Based on Canopy Spectral Transformation and Machine Learning Method

Abstract: Canopy chlorophyll content (CCC) is closely related to crop nitrogen status, crop growth and productivity, detection of diseases and pests, and final yield. Thus, accurate monitoring of chlorophyll content in crops is of great significance for decision support in precision agriculture. In this study, winter wheat in the Guanzhong Plain area of the Shaanxi Province, China, was selected as the research subject to explore the feasibility of canopy spectral transformation (CST) combined with a machine learning met… Show more

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Cited by 17 publications
(9 citation statements)
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“…The research results (Tables 5, 6 and 8) demonstrate that the scale of hyperspectral imagery influences the accuracy of the inversion models, with varying accuracies at different scales, aligning with the findings of Pan [60] and Zhu [61] (overall inversion accuracy: ground > UAV). The study indicates that some PLSR models perform slightly worse than RF models, consistent with previous research [62,63]. Gao et al [64] estimated the leaf chlorophyll content of maize by extracting spectral reflectance from the leaf mesophyll region.…”
Section: Accuracy Of Chlorophyll Content Modelssupporting
confidence: 86%
“…The research results (Tables 5, 6 and 8) demonstrate that the scale of hyperspectral imagery influences the accuracy of the inversion models, with varying accuracies at different scales, aligning with the findings of Pan [60] and Zhu [61] (overall inversion accuracy: ground > UAV). The study indicates that some PLSR models perform slightly worse than RF models, consistent with previous research [62,63]. Gao et al [64] estimated the leaf chlorophyll content of maize by extracting spectral reflectance from the leaf mesophyll region.…”
Section: Accuracy Of Chlorophyll Content Modelssupporting
confidence: 86%
“…Random Forest (RF) is a bagging ensemble method based on a set of decision trees [28]. The basic principle of random forest is to utilize the self-service method resampling technique to extract a plurality of self-service sample sets from the original sample and carry out decision tree modeling for each self-service sample set.…”
Section: Modeling Methodsmentioning
confidence: 99%
“…RFR was proposed by Breiman [58] in 2001. For a detailed description of RFR, please refer to our previous work [59]. The predicted results were averaged by integrating decision trees after the samples were constantly regressed and sampled several times to generate a training set.…”
Section: Spectral Indexmentioning
confidence: 99%