Over the last decade, the use of unmanned aerial vehicle (UAV) technology has evolved significantly in different applications as it provides a special platform capable of combining the benefits of terrestrial and aerial remote sensing. Therefore, such technology has been established as an important source of data collection for different precision agriculture (PA) applications such as crop health monitoring and weed management. Generally, these PA applications depend on performing a vegetation segmentation process as an initial step, which aims to detect the vegetation objects in collected agriculture fields’ images. The main result of the vegetation segmentation process is a binary image, where vegetations are presented in white colo...
Unmanned Aerial Vehicles (UAVs) equipped with lightweight spectral sensors facilitate non-destructiv...
Climate change and competition among water users are increasingly leading to a reduction of water av...
The CoFly-WeedDB contains 201 RGB images (~436MB) from the attached camera of DJI Phantom Pro 4 from...
The use of Unmanned Aerial Vehicles (UAVs) in viticulture permits the capture of aerial Red-Green-Bl...
The vegetation fraction (VF) monitoring in a specific area is a very important parameter for precisi...
In precision agriculture, detecting the vegetation in herbaceous crops in early season is a first an...
In recent years digital sensors have been successfully integrated on board Unmanned Aerial Vehicles ...
Robust vegetation segmentation is required for a vision-based weed control robot in an agricultural ...
This study aimed to characterize vineyard vegetation thorough multi-temporal monitoring using a comm...
The use of Unmanned Aerial Vehicle (UAV) imagery systems for Precision Agriculture (PA) applications...
Remote estimation of flower number in oilseed rape under different nitrogen (N) treatments is impera...
Crop monitoring is essential to increase its production and to fulfill future food-demand. For maize...
Crop row detection using unmanned aerial vehicle (UAV) images is very helpful for precision agricult...
WOS: 000471131900003Remote sensing is a method of monitoring the natural heterogeneity of vegetation...
The developments in the use of unmanned aerial vehicles (UAVs) and advanced imaging sensors provide ...
Unmanned Aerial Vehicles (UAVs) equipped with lightweight spectral sensors facilitate non-destructiv...
Climate change and competition among water users are increasingly leading to a reduction of water av...
The CoFly-WeedDB contains 201 RGB images (~436MB) from the attached camera of DJI Phantom Pro 4 from...
The use of Unmanned Aerial Vehicles (UAVs) in viticulture permits the capture of aerial Red-Green-Bl...
The vegetation fraction (VF) monitoring in a specific area is a very important parameter for precisi...
In precision agriculture, detecting the vegetation in herbaceous crops in early season is a first an...
In recent years digital sensors have been successfully integrated on board Unmanned Aerial Vehicles ...
Robust vegetation segmentation is required for a vision-based weed control robot in an agricultural ...
This study aimed to characterize vineyard vegetation thorough multi-temporal monitoring using a comm...
The use of Unmanned Aerial Vehicle (UAV) imagery systems for Precision Agriculture (PA) applications...
Remote estimation of flower number in oilseed rape under different nitrogen (N) treatments is impera...
Crop monitoring is essential to increase its production and to fulfill future food-demand. For maize...
Crop row detection using unmanned aerial vehicle (UAV) images is very helpful for precision agricult...
WOS: 000471131900003Remote sensing is a method of monitoring the natural heterogeneity of vegetation...
The developments in the use of unmanned aerial vehicles (UAVs) and advanced imaging sensors provide ...
Unmanned Aerial Vehicles (UAVs) equipped with lightweight spectral sensors facilitate non-destructiv...
Climate change and competition among water users are increasingly leading to a reduction of water av...
The CoFly-WeedDB contains 201 RGB images (~436MB) from the attached camera of DJI Phantom Pro 4 from...