Planet Labs (“Planet”) operate the largest fleet of active nano-satellites in orbit, offering an unprecedented monitoring capacity of daily and global RGB image capture at 3–5 m resolution. However, limitations in spectral resolution and lack of accurate radiometric sensor calibration impact the utility of this rich information source. In this study, Planet’s RGB imagery was translated into a Normalized Difference Vegetation Index (NDVI): a common metric for vegetation growth and condition. Our framework employs a data mining approach to build a set of rule-based regression models that relate RGB data to atmospherically corrected Landsat-8 NDVI. The approach was evaluated over a desert agricultural landscape in Saudi Arabia where the use of...
International audienceDecadal time-series derived from satellite observations are useful for discrim...
Constellations of CubeSats are emerging as a novel observational resource with the potential to over...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...
The satellite-derived growing season time-integrated Normalized Difference Vegetation Index (GSN) ha...
Near-earth hyperspectral big data present both huge opportunities and challenges for spurring develo...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
International audienceEstimation of Green Area Index (GAI) and fraction of Absorbed Photosynthetical...
The growth of precision agriculture has allowed farmers access to more data and greater efficiency for...
ABSTRACT: Crop monitoring is an important factor that contributes in any nation’s economy, and thei...
Long time series of satellite remotely sensed Normalized Difference Vegetation Index (NDVI) as an in...
Satellite derived vegetation indices (VIs) are broadly used in ecological research, ecosystem modeli...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
A global observation capacity is required for agricultural production forecasts and food security al...
Time series of vegetation indices (e.g. normalized difference vegetation index [NDVI]) and color ind...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
International audienceDecadal time-series derived from satellite observations are useful for discrim...
Constellations of CubeSats are emerging as a novel observational resource with the potential to over...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...
The satellite-derived growing season time-integrated Normalized Difference Vegetation Index (GSN) ha...
Near-earth hyperspectral big data present both huge opportunities and challenges for spurring develo...
The increasingly intensive and extensive coal mining activities on the Loess Plateau pose a threat t...
International audienceEstimation of Green Area Index (GAI) and fraction of Absorbed Photosynthetical...
The growth of precision agriculture has allowed farmers access to more data and greater efficiency for...
ABSTRACT: Crop monitoring is an important factor that contributes in any nation’s economy, and thei...
Long time series of satellite remotely sensed Normalized Difference Vegetation Index (NDVI) as an in...
Satellite derived vegetation indices (VIs) are broadly used in ecological research, ecosystem modeli...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
A global observation capacity is required for agricultural production forecasts and food security al...
Time series of vegetation indices (e.g. normalized difference vegetation index [NDVI]) and color ind...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
International audienceDecadal time-series derived from satellite observations are useful for discrim...
Constellations of CubeSats are emerging as a novel observational resource with the potential to over...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...