Accurate monitoring of grassland biomass at high spatial and temporal resolutions is important for the effective utilization of grasslands in ecological and agricultural applications. However, current remote sensing data cannot simultaneously provide accurate monitoring of vegetation changes with fine temporal and spatial resolutions. We used a data-fusion approach, namely the spatial and temporal adaptive reflectance fusion model (STARFM), to generate synthetic normalized difference vegetation index (NDVI) data from Moderate-Resolution Imaging Spectroradiometer (MODIS) and Landsat data sets. This provided observations at fine temporal (8-d) and medium spatial (30 m) resolutions. Based on field-sampled aboveground biomass (AGB), synthetic N...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Accurate estimation of aboveground biomass of grasslands is key to sustainable grassland utilization...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Accurate regional and global information on land cover and its changes over time is crucial for envi...
Grassland monitoring is important for both global change research and regional sustainable developme...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
The satellite-derived growing season time-integrated Normalized Difference Vegetation Index (GSN) ha...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Understanding the spatial and temporal dynamics of vegetation is essential in drylands. In this pape...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Leaf area index (LAI) and normalized difference vegetation index (NDVI) are key parameters for vario...
China has abundant grassland resources (approximately 400 million ha of natural grasslands), which a...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Accurate estimation of aboveground biomass of grasslands is key to sustainable grassland utilization...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Accurate regional and global information on land cover and its changes over time is crucial for envi...
Grassland monitoring is important for both global change research and regional sustainable developme...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
The satellite-derived growing season time-integrated Normalized Difference Vegetation Index (GSN) ha...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Understanding the spatial and temporal dynamics of vegetation is essential in drylands. In this pape...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Leaf area index (LAI) and normalized difference vegetation index (NDVI) are key parameters for vario...
China has abundant grassland resources (approximately 400 million ha of natural grasslands), which a...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...