Trabajo presentado en la 5th International Conference on Small Unmanned Aerial Systems for Environmental Research (UAS4Enviro2017), celebrada en Vila Real (Portugal) del 28 al 30 de junio de 2017.The availability of very high density cloud points is of increasing interest for scientists and other users involved in obtaining precise information for environmental, forestry or agronomical processes, among others. In the context of precision viticulture, UAV images are a potential way to map crop structure parameters, such as height row or vegetation cover fraction. To derive the structural information a very dense point cloud is extracted from UAV images (structure from motion). Every...
Tree condition, pruning and orchard management practices within intensive horticultural tree crop sy...
The location of trees and the individualization of their canopies are important parameters to estima...
This article belongs to the Special Issue Sensing Technology in Smart Agriculture.Yield prediction i...
Trabajo presentado en la 5th International Conference on Small Unmanned Aerial Systems for Environme...
Remote sensing applied in the digital transformation of agriculture and, more particularly, in preci...
In the context of precision viticulture, remote sensing in the optical domain offers a potential way...
Differencing between green cover and grape canopy is a challenge for vigour status evaluation in vit...
Differencing between green cover and grape canopy is a challenge for vigour status evaluation in vit...
Canopy management is one of the key aspects of vineyard management. Understanding the canopy structu...
Remote sensing techniques can be used to identify and classify vine properties such as row width, he...
In this paper, we investigate the usage of unmanned aerial vehicles (UAV) to assess the crop geometr...
The use of Unmanned Aerial Vehicles (UAVs) in viticulture permits the capture of aerial Red-Green-Bl...
Tree condition, pruning and orchard management practices within intensive horticultural tree crop sy...
This study aimed to characterize vineyard vegetation thorough multi-temporal monitoring using a comm...
Plant height can be used as an indicator to estimate crop phenology and biomass. The Unmanned Aerial...
Tree condition, pruning and orchard management practices within intensive horticultural tree crop sy...
The location of trees and the individualization of their canopies are important parameters to estima...
This article belongs to the Special Issue Sensing Technology in Smart Agriculture.Yield prediction i...
Trabajo presentado en la 5th International Conference on Small Unmanned Aerial Systems for Environme...
Remote sensing applied in the digital transformation of agriculture and, more particularly, in preci...
In the context of precision viticulture, remote sensing in the optical domain offers a potential way...
Differencing between green cover and grape canopy is a challenge for vigour status evaluation in vit...
Differencing between green cover and grape canopy is a challenge for vigour status evaluation in vit...
Canopy management is one of the key aspects of vineyard management. Understanding the canopy structu...
Remote sensing techniques can be used to identify and classify vine properties such as row width, he...
In this paper, we investigate the usage of unmanned aerial vehicles (UAV) to assess the crop geometr...
The use of Unmanned Aerial Vehicles (UAVs) in viticulture permits the capture of aerial Red-Green-Bl...
Tree condition, pruning and orchard management practices within intensive horticultural tree crop sy...
This study aimed to characterize vineyard vegetation thorough multi-temporal monitoring using a comm...
Plant height can be used as an indicator to estimate crop phenology and biomass. The Unmanned Aerial...
Tree condition, pruning and orchard management practices within intensive horticultural tree crop sy...
The location of trees and the individualization of their canopies are important parameters to estima...
This article belongs to the Special Issue Sensing Technology in Smart Agriculture.Yield prediction i...