This research investigated three machine learning approaches - decision trees, random forest, and support vector machines - to classify local forest communities at the Huntington Wildlife Forest (HWF), located in the central Adirondack Mountains of New York State, and to identify forest type change over a 20-year period using multi-temporal Landsat satellite Thematic Mapper (TM) data. Because some forest species are sensitive to topographic characteristics, three terrain correction methods - C correction, statistical-empirical (SE) correction, and Variable Empirical Coefficient Algorithm (VECA) - were utilized to account for the topographic effects. Results show that the topographic correction slightly improved the classification accuracy a...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
We use freely available Sentinel-2 data and forest inventory data to evaluate the potential of diffe...
Abstract — The use of Landsat data to aid in forest sampling stratification, area estimation, and fu...
Monitoring landcover and landcover change at regional and global scales often requires Landsat data ...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
The sustainable management of forest landscapes requires an understanding of the functional relation...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
Climate change can increase the number of uprooted trees. Although there have been an increasing num...
Detection of land-cover changes through time can be complicated because of sensor-specific differenc...
Forested ecosystems in California are undergoing accelerated change due to natural and anthropogenic...
Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropo...
statewide change detection program to identify landcover change across all ownerships within five-ye...
The use of satellite-derived classification maps to improve post-stratified forest parameter estimat...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
We use freely available Sentinel-2 data and forest inventory data to evaluate the potential of diffe...
Abstract — The use of Landsat data to aid in forest sampling stratification, area estimation, and fu...
Monitoring landcover and landcover change at regional and global scales often requires Landsat data ...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
The sustainable management of forest landscapes requires an understanding of the functional relation...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
Climate change can increase the number of uprooted trees. Although there have been an increasing num...
Detection of land-cover changes through time can be complicated because of sensor-specific differenc...
Forested ecosystems in California are undergoing accelerated change due to natural and anthropogenic...
Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropo...
statewide change detection program to identify landcover change across all ownerships within five-ye...
The use of satellite-derived classification maps to improve post-stratified forest parameter estimat...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
We use freely available Sentinel-2 data and forest inventory data to evaluate the potential of diffe...
Abstract — The use of Landsat data to aid in forest sampling stratification, area estimation, and fu...