Vegetation responses and ecosystem function are spatially variable and influenced by climate variability. The Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) was used to combine MODIS (Moderate Resolution Imaging Spectrometer) and Landsat TM/ETM+ (Thematic Mapper / Enhanced Thematic Mapper plus) imagery for an 8 year dataset (2000-2007) at 30m spatial resolution with 8 day intervals. This dataset allows for a functional analysis of ecosystem responses, suitable for heterogeneous landscapes. Derived vegetation index information in form of the NDVI (Normalised Difference Vegetation Index) was used to investigate the relationship between vegetation responses and gridded rainfall data for regional ecosystems. A hierarchical deco...
Variations in global vegetation activity were measured at a global scale, from 2000 to 2006, based o...
Land surface phenology (LSP), the study of the seasonal vegetation dynamics from remote sensing imag...
This study investigates temporal relationships between vegetation growth, rainfall, and soil moistur...
Vegetation responses and ecosystem function are spatially variable and influenced by climate variabi...
Within the context of climate change, it is of utmost importance to quantify the stability of ecosys...
The normalised difference vegetation index (NDVI) has evolved as a primary tool for monitoring conti...
Incremental, cyclic and periodic changes in vegetation structure and condition are complex and conti...
To evaluate human impacts on forests and other carbon-storing ecosystems, temporal patterns of veget...
Time series of images are required to extract and separate information on vegetation change due to p...
The monitoring of continental and global scale net primary production remains a major focus of satel...
Time series analysis of satellite data can be used to monitor temporal dynamics of forested environm...
The variation in grassland greenery in rainy months is a critical factor for the large farming commu...
Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical ro...
High spatio-temporal resolution optical remote sensing data provide unprecedented opportunities to m...
Cropping activity has an importance that extends beyond farming communities, to governments, private...
Variations in global vegetation activity were measured at a global scale, from 2000 to 2006, based o...
Land surface phenology (LSP), the study of the seasonal vegetation dynamics from remote sensing imag...
This study investigates temporal relationships between vegetation growth, rainfall, and soil moistur...
Vegetation responses and ecosystem function are spatially variable and influenced by climate variabi...
Within the context of climate change, it is of utmost importance to quantify the stability of ecosys...
The normalised difference vegetation index (NDVI) has evolved as a primary tool for monitoring conti...
Incremental, cyclic and periodic changes in vegetation structure and condition are complex and conti...
To evaluate human impacts on forests and other carbon-storing ecosystems, temporal patterns of veget...
Time series of images are required to extract and separate information on vegetation change due to p...
The monitoring of continental and global scale net primary production remains a major focus of satel...
Time series analysis of satellite data can be used to monitor temporal dynamics of forested environm...
The variation in grassland greenery in rainy months is a critical factor for the large farming commu...
Water-limited ecosystems encompass approximately 40% of terrestrial land mass and play a critical ro...
High spatio-temporal resolution optical remote sensing data provide unprecedented opportunities to m...
Cropping activity has an importance that extends beyond farming communities, to governments, private...
Variations in global vegetation activity were measured at a global scale, from 2000 to 2006, based o...
Land surface phenology (LSP), the study of the seasonal vegetation dynamics from remote sensing imag...
This study investigates temporal relationships between vegetation growth, rainfall, and soil moistur...