In agricultural and remote sensing research, accurately estimating wheat’s Leaf Area Index (LAI) using unmanned aerial vehicle-based multispectral data is essential for monitoring crop health and growth. Traditionally, LAI measurement is accurate but laborious. Recent advancements have introduced hybrid methods combining radiative transfer models with machine learning, showing promise due to their efficiency and applicability. However, these methods face challenges, particularly in diverse soil backgrounds, where soil-specific models are required but lack scalability. Current research focuses on developing a “background-resistant” model for stable and accurate LAI estimation across various soil types and environmental conditions, particularly beneficial in areas with variable soil characteristics and low LAI, like dryland regions.
Credit: Plant Phenomics
In agricultural and remote sensing research, accurately estimating wheat’s Leaf Area Index (LAI) using unmanned aerial vehicle-based multispectral data is essential for monitoring crop health and growth. Traditionally, LAI measurement is accurate but laborious. Recent advancements have introduced hybrid methods combining radiative transfer models with machine learning, showing promise due to their efficiency and applicability. However, these methods face challenges, particularly in diverse soil backgrounds, where soil-specific models are required but lack scalability. Current research focuses on developing a “background-resistant” model for stable and accurate LAI estimation across various soil types and environmental conditions, particularly beneficial in areas with variable soil characteristics and low LAI, like dryland regions.
In May 2023, Plant Phenomics published a research article entitled by “A Generic Model to Estimate Wheat LAI over Growing Season Regardless of the Soil-Type Background“.
This research aimed to develop a generic machine learning-based model for predicting wheat Leaf Area Index (LAI) across diverse soil backgrounds for the entire growth season, improving upon previous soil-specific models. The model’s simulation performance was initially tested on independent synthetic data. Random Forest Regression (RFR) models trained on synthetic data showed varying performance based on soil reflectance similarity, with the baseline model achieving an R² of 0.8 on similar soil reflectance but dropping to 0.2 on dissimilar soils. Broadening the reflectance domain of the training soil background improved the model’s robustness, but enhancing canopy-spectral inputs proved more effective for stable LAI prediction across soil backgrounds. In experiments, the RFR models were tested on both synthetic and augmented data at different growth stages. The improvement of LAI prediction was more pronounced when improving canopy-spectral inputs rather than just broadening the training soil background’s reflectance domain. The defaultMulti2.VIc3 model, using an extended reflectance domain and improved canopy-spectral indicators, was selected for further evaluation due to its stability across soils and fewer input variables. It demonstrated good estimation accuracy for different soil backgrounds, but tended to overestimate LAI for values between 2 and 5 and underestimate for LAI over 5. The model was further evaluated at different growth stages throughout the growing season, showing substantial improvement in prediction accuracy, especially at early and late stages. It reliably captured the seasonal LAI dynamics under different treatments in terms of genotypes, planting densities, and water-nitrogen managements.
The research concluded that a background-resistant model can be effectively established using simulation data, providing stable and accurate GAI prediction from isolated UAV-based multispectral images over a wheat growing season with diverse soil backgrounds in field conditions. This model represents a significant advancement in predicting LAI without the need for ground calibration, making it a promising tool for agricultural monitoring and management.
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References
Authors
Qiaomin Chen1,2*, Bangyou Zheng2, Karine Chenu3, and Scott C. Chapman1
Affiliations
1School of Agriculture and Food Sciences, The University of Queensland, St Lucia, QLD, Australia.
2Agriculture and Food, CSIRO, Queensland Bioscience Precinct, St Lucia, QLD, Australia.
3The University of Queensland, Queensland Alliance for Agriculture and Food Innovation, Toowoomba, QLD, Australia.
About Qiaomin Chen
Dr. Qiaomin Chen is a postdoctoral research fellow at SAF. She is passionate about deploying and developing innovative technologies in solving practical problems in agriculture production, especially in precision agriculture and modern breeding. Her current research interests mainly lie in plant phenotyping, crop modelling, machine learning and climate adaptation, with a particular interest in using simulation analysis to provide recommendations for field experiment design, phenotyping strategies, characterization of crop growth.
Journal
Plant Phenomics
DOI
10.34133/plantphenomics.0055
Method of Research
Experimental study
Subject of Research
Not applicable
Article Title
A Generic Model to Estimate Wheat LAI over Growing Season Regardless of the Soil-Type Background
Article Publication Date
23-May-2023
COI Statement
The authors declare that they have no competing interests.