Spatio-temporal information on process-based forest loss is essential for a wide range of applications. Despite remote sensing being the only feasible means of monitoring forest change at regional or greater scales, there is no retrospectively available remote sensor that meets the demand of monitoring forests with the required spatial detail and guaranteed high temporal frequency. As an alternative, we employed the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) to produce a dense synthetic time series by fusing Landsat and Moderate Resolution Imaging Spectroradiometer (MODIS) nadir Bidirectional Reflectance Distribution Function (BRDF) adjusted reflectance. Forest loss was detected by applying a multi-temporal disturbance ...
In the species-rich and structurally complex forests of the Eastern United States, disturbance event...
The research applied new methods that integrated remote sensing and other spatial data bases to answ...
Several forest change detection algorithms are available for tracking and quantifying deforestation ...
Spatio-temporal information on process-based forest loss is essential for a wide range of applicatio...
Spatio-temporal information on process-based forest loss is essential for a wide range of applicatio...
Abstract: Spatio-temporal information on process-based forest loss is essential for a wide range of ...
High spatio-temporal resolution optical remote sensing data provide unprecedented opportunities to m...
Investigating the temporal and spatial pattern of landscape disturbances is an important requirement...
We introduce and test a new method to detect annual forest cover loss from time series estimates of ...
Current research on forest change monitoring using medium spatial resolution Landsat satellite data ...
Current research on forest change monitoring using medium spatial resolution Landsat satellite data ...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Landsat imagery with a 30Â m spatial resolution is well suited for characterizing landscape-level fo...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Automatically detecting forest disturbances as they occur can be extremely challenging for certain t...
In the species-rich and structurally complex forests of the Eastern United States, disturbance event...
The research applied new methods that integrated remote sensing and other spatial data bases to answ...
Several forest change detection algorithms are available for tracking and quantifying deforestation ...
Spatio-temporal information on process-based forest loss is essential for a wide range of applicatio...
Spatio-temporal information on process-based forest loss is essential for a wide range of applicatio...
Abstract: Spatio-temporal information on process-based forest loss is essential for a wide range of ...
High spatio-temporal resolution optical remote sensing data provide unprecedented opportunities to m...
Investigating the temporal and spatial pattern of landscape disturbances is an important requirement...
We introduce and test a new method to detect annual forest cover loss from time series estimates of ...
Current research on forest change monitoring using medium spatial resolution Landsat satellite data ...
Current research on forest change monitoring using medium spatial resolution Landsat satellite data ...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Landsat imagery with a 30Â m spatial resolution is well suited for characterizing landscape-level fo...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Automatically detecting forest disturbances as they occur can be extremely challenging for certain t...
In the species-rich and structurally complex forests of the Eastern United States, disturbance event...
The research applied new methods that integrated remote sensing and other spatial data bases to answ...
Several forest change detection algorithms are available for tracking and quantifying deforestation ...