Accurate regional and global information on land cover and its changes over time is crucial for environmental monitoring, land management, and planning. In this study, we selected Fengning County, in China’s Hebei Province, as a case study area. Using satellite data, we generated fused normalized-difference vegetation index (NDVI) data with high spatial and temporal resolution by utilizing the STARFM algorithm to produce a fused GF-1 and MODIS NDVI dataset. We extracted seven phenological parameters (including the start, end, and length of the growing season, base value, mid-season date, maximum NDVI, seasonal NDVI amplitude) from a fused NDVI time-series after reconstruction using the TIMESAT software. We developed four classification scen...
Assessing vegetation phenology is very important for better understanding the impact of climate chan...
The distribution and phenologies of vegetation are largely associated with climate, terrain characte...
In this study, we applied asymmetric Gaussian function fitting to reconstruct a high-qualityMODIS no...
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...
Accurate mapping of land cover on a regional scale is useful for climate and environmental modeling....
Accurate monitoring of grassland biomass at high spatial and temporal resolutions is important for t...
The normalized difference vegetation index (NDVI) time-series database, derived from NOAA/AVHRR, SPO...
With the recent launch of new satellites and the developments of spatiotemporal data fusion methods,...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
The Normalized Difference Vegetation Index (NDVI) is very important index, which often is a measure ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Accurate temporal land use mapping provides important and timely information for decision making for...
A timely and accurate understanding of land cover change has great significance in management of are...
Assessing vegetation phenology is very important for better understanding the impact of climate chan...
The distribution and phenologies of vegetation are largely associated with climate, terrain characte...
In this study, we applied asymmetric Gaussian function fitting to reconstruct a high-qualityMODIS no...
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...
Accurate mapping of land cover on a regional scale is useful for climate and environmental modeling....
Accurate monitoring of grassland biomass at high spatial and temporal resolutions is important for t...
The normalized difference vegetation index (NDVI) time-series database, derived from NOAA/AVHRR, SPO...
With the recent launch of new satellites and the developments of spatiotemporal data fusion methods,...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
The Normalized Difference Vegetation Index (NDVI) is very important index, which often is a measure ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Accurate temporal land use mapping provides important and timely information for decision making for...
A timely and accurate understanding of land cover change has great significance in management of are...
Assessing vegetation phenology is very important for better understanding the impact of climate chan...
The distribution and phenologies of vegetation are largely associated with climate, terrain characte...
In this study, we applied asymmetric Gaussian function fitting to reconstruct a high-qualityMODIS no...