The Andes mountain forests are sparse relict populations of tree species that grow in association with local native shrubland species. The identification of forest conditions for conservation in areas such as these is based on remote sensing techniques and classification methods. However, the classification of Andes mountain forests is difficult because of noise in the reflectance data within land cover classes. The noise is the result of variations in terrain illumination resulting from complex topography and the mixture of different land cover types occurring at the sub-pixel level. Considering these issues, the selection of an optimum classification method to obtain accurate results is very important to support conservation activities. W...
We presented a methodology to accurately classify mountainous regions in the tropics. These landscap...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
This study develops a modelling framework by utilizing multi-sensor imagery for classifying differen...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
The Volta Grande do Xingu (VGX) in the Amazon Forest of Brazil was chosen to analyze the land use an...
Land cover classification is a key research field in remote sensing and land change science as thema...
Highland Andean ecosystems sustain high levels of floral and faunal biodiversity in areas with diver...
The production of land cover maps through satellite image classification is a frequent task in remot...
Accurate maps of the spatial distribution of tropical tree species provide valuable insights for eco...
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
Recognition of the spatial variation in tree species composition is a necessary precondition for wis...
Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropo...
International audienceIn this study we produce forest cover maps of the Pyrenees Mountains (Spain, A...
International audienceIn this study we produce forest cover maps of the Pyrenees Mountains (Spain, A...
We presented a methodology to accurately classify mountainous regions in the tropics. These landscap...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
This study develops a modelling framework by utilizing multi-sensor imagery for classifying differen...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
The Volta Grande do Xingu (VGX) in the Amazon Forest of Brazil was chosen to analyze the land use an...
Land cover classification is a key research field in remote sensing and land change science as thema...
Highland Andean ecosystems sustain high levels of floral and faunal biodiversity in areas with diver...
The production of land cover maps through satellite image classification is a frequent task in remot...
Accurate maps of the spatial distribution of tropical tree species provide valuable insights for eco...
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
Recognition of the spatial variation in tree species composition is a necessary precondition for wis...
Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropo...
International audienceIn this study we produce forest cover maps of the Pyrenees Mountains (Spain, A...
International audienceIn this study we produce forest cover maps of the Pyrenees Mountains (Spain, A...
We presented a methodology to accurately classify mountainous regions in the tropics. These landscap...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
This study develops a modelling framework by utilizing multi-sensor imagery for classifying differen...