Title
A Random Forest Algorithm for Retrieving Canopy Chlorophyll Content of Wheat and Soybean Trained with PROSAIL Simulations Using Adjusted Average Leaf Angle
Abstract
Canopy chlorophyll content (CCC) is an important indicator for crop-growth monitoring and crop productivity estimation. The hybrid method, involving the PROSAIL radiative transfer model and machine learning algorithms, has been widely applied for crop CCC retrieval. However, PROSAIL's homogeneous canopy hypothesis limits the ability to use the PROSAIL-based CCC estimation across different crops with a row structure. In addition to leaf area index (LAI), average leaf angle (ALA) is the most important canopy structure factor in the PROSAIL model. Under the same LAI, adjustment of the ALA can make a PROSAIL simulation obtain the same canopy gap as the heterogeneous canopy at a specific observation angle. Therefore, parameterization of an adjusted ALA (ALA(adj)) is an optimal choice to make the PROSAIL model suitable for specific row-planted crops. This paper attempted to improve PROSAIL-based CCC retrieval for different crops, using a random forest algorithm, by introducing the prior knowledge of crop-specific ALA(adj). Based on the field reflectance spectrum at nadir, leaf area index, and leaf chlorophyll content, parameterization of the ALA(adj) in the PROSAIL model for wheat and soybean was carried out. An algorithm integrating the random forest and PROSAIL simulations with prior ALA(adj) information was developed for wheat and soybean CCC retrieval. Ground-measured CCC measurements were used to validate the CCC retrieved from canopy spectra. The results showed that the ALA(adj) values (62 degrees for wheat; 45 degrees for soybean) that were parameterized for the PROSAIL model demonstrated good discrimination between the two crops. The proposed algorithm improved the CCC retrieval accuracy for wheat and soybean, regardless of whether continuous visible to near-infrared spectra with 50 bands (RMSE from 39.9 to 32.9 mu g cm(-2); R-2 from 0.67 to 0.76) or discrete spectra with 13 bands (RMSE from 43.9 to 33.7 mu g cm(-2); R-2 from 0.63 to 0.74) and nine bands (RMSE from 45.1 to 37.0 mu g cm(-2); R-2 from 0.61 to 0.71) were used. The proposed hybrid algorithm, based on PROSAIL simulations with ALA(adj), has the potential for satellite-based CCC estimation across different crop types, and it also has a good reference value for the retrieval of other crop parameters.
Year
DOI
Venue
2022
10.3390/rs14010098
REMOTE SENSING
Keywords
DocType
Volume
crop chlorophyll, average leaf angle, PROSAIL, machine learning, red edge, radiative transfer model
Journal
14
Issue
Citations 
PageRank 
1
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Quanjun Jiao100.68
Qi Sun200.34
Bing Zhang322.71
wenjiang huang41612.02
Huichun Ye523.14
Zhaoming Zhang600.34
Xiao Zhang700.34
Binxiang Qian800.34