研究目的
To evaluate the performance of three different retrieval methods (parametric, non-parametric, and physical-based modeling) for winter wheat leaf nitrogen content (LNC) estimation using UAV multispectral imagery.
研究成果
The random forest (RF) non-parametric algorithm provided the most accurate and efficient method for estimating winter wheat leaf nitrogen content from UAV multispectral imagery, with high processing speed and stability across different conditions. Parametric methods using vegetation indices were fast but prone to saturation, while physical models were less accurate and slower. Future work should validate models across diverse sites and crop types.
研究不足
The study was conducted at a single site, limiting generalizability to other ecological conditions. The physical model (PROSAIL) had low accuracy for LNC estimation due to indirect retrieval via chlorophyll content and sensitivity to input parameters. Saturation effects were observed in vegetation indices at high nitrogen levels.
1:Experimental Design and Method Selection:
Field experiments were conducted over two growing seasons with different winter wheat varieties, nitrogen rates, and planting densities in a randomized complete block design. A UAV equipped with a multispectral camera was used to capture canopy images at five critical growth stages.
2:Sample Selection and Data Sources:
Plant samples were collected from each plot to measure LNC using the micro-Kjeldahl method, and spectral data were obtained from UAV images.
3:List of Experimental Equipment and Materials:
UAV (MK-Oktokopter), multispectral camera (Tetracam mini-MCA6), SPAD meter (SPAD 502), GNSS device (X900), and software (ENVI/IDL, MATLAB).
4:Experimental Procedures and Operational Workflow:
UAV flights were conducted at 150 m height during stable light conditions. Images were pre-processed for noise reduction, radiometric calibration, and georeferencing. Reflectance was extracted from regions of interest.
5:Data Analysis Methods:
Parametric models used vegetation indices with linear regression, non-parametric models employed 13 algorithms (e.g., RF, PLSR) with k-fold cross-validation, and physical models used PROSAIL radiative transfer model with LUT inversion. Performance was assessed using R2 and RMSE.
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