Earth observation image data are regularly used to capture surface conditions over large areas, but there is a trade-off between high (or low) spatial and low (or high) temporal resolution. The Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model (ESTARFM) overcomes this trade-off by fusing high spatial and temporal resolution multisource image data. However, ESTARFM requires additional modifications in order to provide reliable estimates of surface conditions showing large spectral differences in highly dynamic and fragmented agricultural systems. We modified ESTARFM by taking a knowledge-based approach to track maize and rice phenology in a highly dynamic and fragmented agricultural landscape in Ethiopia in 2019. The two major ...
Near real-time fine-resolution land surface phenology (LSP) prediction is essential for understandin...
Mapping cropland areas in a dynamic way is of great interest to successfully monitor agricultural ar...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
Earth observation image data are regularly used to capture surface conditions over large areas, but ...
Crop yield estimates are an important data output of agricultural monitoring systems. In sub-Saharan...
Image time series of high temporal and spatial resolution capture land surface dynamics of heterogen...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Mapping cropland areas in a dynamic way is of great interest to successfully monitor agricultural ar...
Remote sensing can be used to monitor cropland phenological characteristics; however, tradeoffs betw...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Remote sensing data are used to map the extent of croplands. They are especially useful in sub-Sahar...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Satellite data holds considerable potential as a source of information on rice crop growth which can...
Near real-time fine-resolution land surface phenology (LSP) prediction is essential for understandin...
Mapping cropland areas in a dynamic way is of great interest to successfully monitor agricultural ar...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...
Earth observation image data are regularly used to capture surface conditions over large areas, but ...
Crop yield estimates are an important data output of agricultural monitoring systems. In sub-Saharan...
Image time series of high temporal and spatial resolution capture land surface dynamics of heterogen...
Monitoring the spatio-temporal development of vegetation is a challenging task in heterogeneous and ...
Mapping cropland areas in a dynamic way is of great interest to successfully monitor agricultural ar...
Remote sensing can be used to monitor cropland phenological characteristics; however, tradeoffs betw...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
MODIS has been providing daily imagery for retrieving land surface properties with a spatial resolut...
Remote sensing data are used to map the extent of croplands. They are especially useful in sub-Sahar...
Time series vegetation indices with high spatial resolution and high temporal frequency are importan...
Since 2000, MODIS has been providing daily imagery with a fine spatial res- olution (250 m) for retr...
Satellite data holds considerable potential as a source of information on rice crop growth which can...
Near real-time fine-resolution land surface phenology (LSP) prediction is essential for understandin...
Mapping cropland areas in a dynamic way is of great interest to successfully monitor agricultural ar...
Crop condition and natural vegetation monitoring require high resolution remote sensing imagery in b...