Crop harvest scheduling and profits and losses predications require strategies that estimate crop yield. This work aimed to investigate the contribution of phenological variables using path analysis and remote sensing techniques on cotton boll yield and to generate a model using decision trees that help predict cotton boll yield. The sampling field was installed in Chapadão do Céu, in an area of 90 ha. The following phenological variables were evaluated at 30 sample points: plant height at 26, 39, 51, 68, 82, 107, 128, and 185 days after emergence (DAE); number of floral buds at 68, 81, 107, 128, and 185 DAE; number of bolls at 185 DAE; Rededge vegetation index at 23, 35, 53, 91, and 168 DAE; and cotton boll yield. The main variables that c...
This research evaluated the factors that influenced cotton producers to adopt remote sensing for var...
Cotton is the most important fibre culture in the world. In Brazil, cotton cultivation is concentrat...
Plant nitrogen status and yield potential are important factors for optimizing field management in c...
Remote sensing (RS) in agriculture has been widely used for mapping soil, plant, and atmosphere attr...
The objective of this study was the spatial identification of the NDVI index and cotton yield distri...
ABSTRACT: Satellite images and geostatistics are useful tools to assess the nutritional status of pl...
Early detection of within-field yield variability for high-value commodity crops, such as cotton (Go...
Cotton constitutes 81% of the world’s natural fibers. Accurate and rapid cotton yield estimation is ...
The availability of satellite images has generated a large number of regional and global studies on ...
Prediction of cotton yield can enable farmers to make more beneficial planning, budgeting, and inter...
Information products derived from multi-spectral remote sensing images, LIDAR elevations, or data pr...
The canopy reflectance using ground-based sensors has the potential to provide information on crop n...
The herbicide 2,4-dichlorophenoxyacetic acid (2,4-D) is one of the most successful selective herbici...
The present work assessed the usefulness of a set of spectral indices obtained from an unmanned aeri...
This study aimed to simulate the spatiotemporal variation in cotton (Gossypium hirsutum L.) growth a...
This research evaluated the factors that influenced cotton producers to adopt remote sensing for var...
Cotton is the most important fibre culture in the world. In Brazil, cotton cultivation is concentrat...
Plant nitrogen status and yield potential are important factors for optimizing field management in c...
Remote sensing (RS) in agriculture has been widely used for mapping soil, plant, and atmosphere attr...
The objective of this study was the spatial identification of the NDVI index and cotton yield distri...
ABSTRACT: Satellite images and geostatistics are useful tools to assess the nutritional status of pl...
Early detection of within-field yield variability for high-value commodity crops, such as cotton (Go...
Cotton constitutes 81% of the world’s natural fibers. Accurate and rapid cotton yield estimation is ...
The availability of satellite images has generated a large number of regional and global studies on ...
Prediction of cotton yield can enable farmers to make more beneficial planning, budgeting, and inter...
Information products derived from multi-spectral remote sensing images, LIDAR elevations, or data pr...
The canopy reflectance using ground-based sensors has the potential to provide information on crop n...
The herbicide 2,4-dichlorophenoxyacetic acid (2,4-D) is one of the most successful selective herbici...
The present work assessed the usefulness of a set of spectral indices obtained from an unmanned aeri...
This study aimed to simulate the spatiotemporal variation in cotton (Gossypium hirsutum L.) growth a...
This research evaluated the factors that influenced cotton producers to adopt remote sensing for var...
Cotton is the most important fibre culture in the world. In Brazil, cotton cultivation is concentrat...
Plant nitrogen status and yield potential are important factors for optimizing field management in c...