研究目的
To evaluate the potential of using a UAV-based remote sensing system with a low-cost RGB camera to estimate yield of cotton within season.
研究成果
The study demonstrated that UAV-based remote sensing with a low-cost RGB camera can estimate cotton yield with acceptable errors using plant height as an indicator. The row-separation method improved the correlation between yield and plant height, and the developed yield estimation model showed promising results.
研究不足
The study acknowledges the limitations in the accuracy of GPS systems used, which could affect the geo-registration accuracy. Additionally, the method's effectiveness may vary under different environmental conditions or with different crop types.
1:Experimental Design and Method Selection
The study utilized a UAV-based remote sensing system equipped with a low-cost RGB camera to capture images of a cotton field at the growth stage of first flower. The images were processed to develop a geo-referenced orthomosaic image and a digital elevation model (DEM) for plant height mapping.
2:Sample Selection and Data Sources
The experiment was conducted in a cotton research field at Fisher Delta Research Center of the University of Missouri. Cotton cultivar PHY 333WRF was planted, and yield data were collected using a cotton harvester equipped with a yield monitor system.
3:List of Experimental Equipment and Materials
UAV platform (Dji Matrice 600 Pro), RGB camera (HERO 5, GoPro), cotton harvester (Case IH 2155), yield monitor system (Ag Leader Insight), and ground control points (fence stakes topped by white polytechnic boards).
4:Experimental Procedures and Operational Workflow
The UAV system captured images at 50 m above ground level with >70% image overlap. Images were processed to generate DEM and orthomosaic images. Plant height was calculated from DEM, and yield data were registered with plant height data using a row-separation method.
5:Data Analysis Methods
Pearson correlation coefficients between yield and plant height were calculated. A non-parametric regression model was developed for yield estimation based on plant height, with performance assessed using RMSE and MAE.
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