Mapping of wetlands (marsh vs. swamp vs. upland) is a common remote sensing application.Yet, discriminating between similar freshwater communities such as graminoid/sedge from remotely sensed imagery is more difficult. Most of this activity has been performed using medium to low resolution imagery. There are only a few studies using high spatial resolution imagery and machine learning image classification algorithms for mapping heterogeneous wetland plant communities. This study addresses this void by analyzing whether machine learning classifiers such as decision trees (DT) and artificial neural networks (ANN) can accurately classify graminoid/sedge communities using high resolution aerial imagery and image texture data in the Everglades N...
Wetland mapping at the landscape scale using remotely sensed data requires both affordable data and ...
Increased cultivation of perennial fields hardens the water demand by the agricultural sector during...
Coastal wetlands areas are heterogeneous, highly dynamic areas with complex interactions between ter...
Mapping of wetlands (marsh vs. swamp vs. upland) is a common remote sensing application.Yet, discrim...
In order to monitor natural and anthropogenic disturbance effects to wetland ecosystems, it is neces...
In order to monitor natural and anthropogenic disturbance effects to wetland ecosystems, it is neces...
High-resolution images obtained by multispectral cameras mounted on Unmanned Aerial Vehicles (UAVs) ...
Understanding the spatial patterns of plant communities is important for sustainable wetland ecosyst...
High-resolution images obtained by multispectral cameras mounted on Unmanned Aerial Vehicles (UAVs) ...
Efforts are increasingly being made to classify the world’s wetland resources, an important ecosyste...
The classification of wetland plants using unmanned aerial vehicle (UAV) and satellite synergies has...
The classification of vegetation species is a fundamental technical task, necessary for the sustaina...
Efforts are increasingly being made to classify the world’s wetland resources, an important ecosyste...
The aim of this study is to evaluate a new neural network classifier using spectrally sampled image ...
Delineation of wetlands is an important aspect of protecting of these ecologically diverse and bioco...
Wetland mapping at the landscape scale using remotely sensed data requires both affordable data and ...
Increased cultivation of perennial fields hardens the water demand by the agricultural sector during...
Coastal wetlands areas are heterogeneous, highly dynamic areas with complex interactions between ter...
Mapping of wetlands (marsh vs. swamp vs. upland) is a common remote sensing application.Yet, discrim...
In order to monitor natural and anthropogenic disturbance effects to wetland ecosystems, it is neces...
In order to monitor natural and anthropogenic disturbance effects to wetland ecosystems, it is neces...
High-resolution images obtained by multispectral cameras mounted on Unmanned Aerial Vehicles (UAVs) ...
Understanding the spatial patterns of plant communities is important for sustainable wetland ecosyst...
High-resolution images obtained by multispectral cameras mounted on Unmanned Aerial Vehicles (UAVs) ...
Efforts are increasingly being made to classify the world’s wetland resources, an important ecosyste...
The classification of wetland plants using unmanned aerial vehicle (UAV) and satellite synergies has...
The classification of vegetation species is a fundamental technical task, necessary for the sustaina...
Efforts are increasingly being made to classify the world’s wetland resources, an important ecosyste...
The aim of this study is to evaluate a new neural network classifier using spectrally sampled image ...
Delineation of wetlands is an important aspect of protecting of these ecologically diverse and bioco...
Wetland mapping at the landscape scale using remotely sensed data requires both affordable data and ...
Increased cultivation of perennial fields hardens the water demand by the agricultural sector during...
Coastal wetlands areas are heterogeneous, highly dynamic areas with complex interactions between ter...