Time series vegetation indices with high spatial resolution and high temporal frequency are important for crop growth monitoring and management. However, due to technical constraints and cloud contamination, it is difficult to obtain such datasets. In this study, a spatio-temporal vegetation index image fusion model (STVIFM) was developed to generate high spatial resolution Normalized Difference Vegetation Index (NDVI) time-series images with higher accuracy, since most of the existing methods have some limitations in accurately predicting NDVI in heterogeneous regions, or rely on very computationally intensive steps and land cover maps for heterogeneous regions. The STVIFM aims to predict the fine-resolution NDVI through understanding the ...
Spatiotemporal data fusion is a key technique for generating unified time-series images from various...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical ro...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Accurate monitoring of grassland biomass at high spatial and temporal resolutions is important for t...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Leaf area index (LAI) and normalized difference vegetation index (NDVI) are key parameters for vario...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
Vegetation remote sensing has been largely focused on the utilization of the Vegetation Indices (VIs...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Accurate regional and global information on land cover and its changes over time is crucial for envi...
Temporal-related features are important for improving land cover classification accuracy using remot...
Spatiotemporal data fusion is a key technique for generating unified time-series images from various...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical ro...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
Accurate monitoring of grassland biomass at high spatial and temporal resolutions is important for t...
Due to technical limitations, it is impossible to have high resolution in both spatial and temporal ...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Leaf area index (LAI) and normalized difference vegetation index (NDVI) are key parameters for vario...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
Vegetation remote sensing has been largely focused on the utilization of the Vegetation Indices (VIs...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Accurate regional and global information on land cover and its changes over time is crucial for envi...
Temporal-related features are important for improving land cover classification accuracy using remot...
Spatiotemporal data fusion is a key technique for generating unified time-series images from various...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical ro...