Copernicus Sentinel-1 images are widely used for forest mapping and predicting forest growing stock volume (GSV) due to their accessibility. However, certain important aspects related to the use of Sentinel-1 time series have not been thoroughly explored in the literature. These include the impact of image time series length on prediction accuracy, the optimal feature selection approaches, and the best prediction methods. In this study, we conduct an in-depth exploration of the potential of long time series of Sentinel-1 SAR data to predict forest GSV and evaluate the temporal dynamics of the predictions using extensive reference data. Our boreal coniferous forests study site is located near the Hyytiälä forest station in central Finland an...
We want to present results of the Sentinel4REDD project. The overall aim of the Sentinel4REDD-Projec...
This study is focused on the mean characteristics derived from Sentinel-1 time series, on mountainou...
Accurate above-ground biomass (AGB) estimation across multiple spatial and temporal scales is essent...
Copernicus Sentinel-1 images are widely used for forest mapping and predicting forest growing stock ...
In this study, we assess the potential of long time series of Sentinel-1 SAR data in forest growing ...
Funding Information: This study was supported by the National Natural Science Foundation of China (G...
National Forest Inventories (NFI) are key data and tools to better understand the role of forests in...
The multitemporal acquisition of images from the Sentinel-1 satellites allows continuous monitoring ...
Methods for the estimation of forest growing stock volume (GSV) are a major topic of investigation i...
Remotely sensed assisted forest inventory has emerged in the past decade as a robust and cost effici...
Estimation of forest stand parameters using remotely sensed data has considerable significance for s...
Sustainable forest management requires accurate and up-to-date baseline data regarding forest struct...
There is a need for mapping of forest areas with young stands under regeneration in Norway, as a bas...
Clear-cutting and logging operations are the most drastic and wide-spread changes that affects the h...
We want to present results of the Sentinel4REDD project. The overall aim of the Sentinel4REDD-Projec...
This study is focused on the mean characteristics derived from Sentinel-1 time series, on mountainou...
Accurate above-ground biomass (AGB) estimation across multiple spatial and temporal scales is essent...
Copernicus Sentinel-1 images are widely used for forest mapping and predicting forest growing stock ...
In this study, we assess the potential of long time series of Sentinel-1 SAR data in forest growing ...
Funding Information: This study was supported by the National Natural Science Foundation of China (G...
National Forest Inventories (NFI) are key data and tools to better understand the role of forests in...
The multitemporal acquisition of images from the Sentinel-1 satellites allows continuous monitoring ...
Methods for the estimation of forest growing stock volume (GSV) are a major topic of investigation i...
Remotely sensed assisted forest inventory has emerged in the past decade as a robust and cost effici...
Estimation of forest stand parameters using remotely sensed data has considerable significance for s...
Sustainable forest management requires accurate and up-to-date baseline data regarding forest struct...
There is a need for mapping of forest areas with young stands under regeneration in Norway, as a bas...
Clear-cutting and logging operations are the most drastic and wide-spread changes that affects the h...
We want to present results of the Sentinel4REDD project. The overall aim of the Sentinel4REDD-Projec...
This study is focused on the mean characteristics derived from Sentinel-1 time series, on mountainou...
Accurate above-ground biomass (AGB) estimation across multiple spatial and temporal scales is essent...