In wheat (Triticum aestivum L) and other cereals, the number of ears per unit area is one of the main yield-determining components. An automatic evaluation of this parameter may contribute to the advance of wheat phenotyping and monitoring. There is no standard protocol for wheat ear counting in the field, and moreover it is time consuming. An automatic ear-counting system is proposed using machine learning techniques based on RGB (red, green, blue) images acquired from an unmanned aerial vehicle (UAV). Evaluation was performed on a set of 12 winter wheat cultivars with three nitrogen treatments during the 2017-2018 crop season. The automatic system uses a frequency filter, segmentation and feature extraction, with different classification ...
peer reviewedRecent deep learning methods have allowed important steps forward in the automatic dete...
peer reviewedOne of the most important activity of agricultural research insititutes concerns the a...
Unmanned aerial vehicles-collected (UAVs) digital red–green–blue (RGB) images provided a cost-effect...
In wheat (Triticum aestivum L) and other cereals, the number of ears per unit area is one of the mai...
Information about the yield of wheat crops makes it possible to correctly assess their productivity ...
Background The number of ears per unit ground area (ear density) is one of the main agronomic yield ...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Ear density, or the number of ears per square meter (ears/m2), is a central focus in many cereal cro...
Ear density is one of the most important agronomical yield components in wheat. Ear counting is time...
The number of wheat ears per unit area is crucial for assessing wheat yield, but automated wheat ear...
The detection and counting of wheat ears are very important for crop field management, yield estimat...
The number of wheat ears is an essential indicator for wheat production and yield estimation, but ac...
Wheat lodging is a negative factor affecting yield production. Obtaining timely and accurate wheat l...
A need to increase efficiency of plant phenotyping has arisen due to global warming, food shortage, ...
Crop yield is an essential measure for breeders, researchers and farmers and is comprised of and may...
peer reviewedRecent deep learning methods have allowed important steps forward in the automatic dete...
peer reviewedOne of the most important activity of agricultural research insititutes concerns the a...
Unmanned aerial vehicles-collected (UAVs) digital red–green–blue (RGB) images provided a cost-effect...
In wheat (Triticum aestivum L) and other cereals, the number of ears per unit area is one of the mai...
Information about the yield of wheat crops makes it possible to correctly assess their productivity ...
Background The number of ears per unit ground area (ear density) is one of the main agronomic yield ...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Ear density, or the number of ears per square meter (ears/m2), is a central focus in many cereal cro...
Ear density is one of the most important agronomical yield components in wheat. Ear counting is time...
The number of wheat ears per unit area is crucial for assessing wheat yield, but automated wheat ear...
The detection and counting of wheat ears are very important for crop field management, yield estimat...
The number of wheat ears is an essential indicator for wheat production and yield estimation, but ac...
Wheat lodging is a negative factor affecting yield production. Obtaining timely and accurate wheat l...
A need to increase efficiency of plant phenotyping has arisen due to global warming, food shortage, ...
Crop yield is an essential measure for breeders, researchers and farmers and is comprised of and may...
peer reviewedRecent deep learning methods have allowed important steps forward in the automatic dete...
peer reviewedOne of the most important activity of agricultural research insititutes concerns the a...
Unmanned aerial vehicles-collected (UAVs) digital red–green–blue (RGB) images provided a cost-effect...