Monitoring and prediction of within-field crop variability can support farmers to make the right decisions in different situations. The current advances in remote sensing and the availability of high resolution, high frequency, and free Sentinel-2 images improve the implementation of Precision Agriculture (PA) for a wider range of farmers. This study investigated the possibility of using vegetation indices (VIs) derived from Sentinel-2 images and machine learning techniques to assess corn (Zea mays) grain yield spatial variability within the field scale. A 22-ha study field in North Italy was monitored between 2016 and 2018; corn yield was measured and recorded by a grain yield monitor mounted on the harvester machine recording more than 20...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Proceedings of the 11th European Conference on Precision AgricultureThis work assesses the potential...
ABSTRACTThe main objectives of this study are (1) to compare several machine learning models to pred...
Currently, there is a growing demand to apply precision agriculture (PA) management practices at agr...
Citation: Peralta, N.R.; Assefa, Y.; Du, J.; Barden, C.J.; Ciampitti, I.A. Mid-Season High-Resolutio...
Crop growth and yield monitoring are essential for food security and agricultural economic return pr...
Wheat grain yield (GY) is a crop feature of central importance affecting agricultural, environmental...
Accurate crop yield estimates are important for governments, farmers, scientists and agribusiness. T...
Wheat grain yield (GY) is a crop feature of central importance affecting agricultural, environmental...
open4siAssessing crop yield trends over years is a key step in site specific management, in view of ...
Remote sensing—the process of acquiring information about objects from remote platforms such as grou...
International audienceCrop yield monitoring is an important component in agricultural assessment. Mu...
In the U.S., corn is the most produced crop and has been an essential part of the American diet. To ...
Agriculture is the backbone and the main sector of the industry for many countries in the world. Ass...
The demand for customized farm management prescription is increasing in order to maximize crop yield...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Proceedings of the 11th European Conference on Precision AgricultureThis work assesses the potential...
ABSTRACTThe main objectives of this study are (1) to compare several machine learning models to pred...
Currently, there is a growing demand to apply precision agriculture (PA) management practices at agr...
Citation: Peralta, N.R.; Assefa, Y.; Du, J.; Barden, C.J.; Ciampitti, I.A. Mid-Season High-Resolutio...
Crop growth and yield monitoring are essential for food security and agricultural economic return pr...
Wheat grain yield (GY) is a crop feature of central importance affecting agricultural, environmental...
Accurate crop yield estimates are important for governments, farmers, scientists and agribusiness. T...
Wheat grain yield (GY) is a crop feature of central importance affecting agricultural, environmental...
open4siAssessing crop yield trends over years is a key step in site specific management, in view of ...
Remote sensing—the process of acquiring information about objects from remote platforms such as grou...
International audienceCrop yield monitoring is an important component in agricultural assessment. Mu...
In the U.S., corn is the most produced crop and has been an essential part of the American diet. To ...
Agriculture is the backbone and the main sector of the industry for many countries in the world. Ass...
The demand for customized farm management prescription is increasing in order to maximize crop yield...
Methods using remote sensing associated with artificial intelligence to forecast corn yield at the m...
Proceedings of the 11th European Conference on Precision AgricultureThis work assesses the potential...
ABSTRACTThe main objectives of this study are (1) to compare several machine learning models to pred...