In spite of considerable efforts to monitor global vegetation, biomass quantification in drylands is still a major challenge due to low spectral resolution and considerable background effects. Hence, this study examines the potential of the space-borne hyperspectral Hyperion sensor compared to the multispectral Landsat OLI sensor in predicting dwarf shrub biomass in an arid region characterized by challenging conditions for satellite-based analysis: The Eastern Pamirs of Tajikistan. We calculated vegetation indices for all available wavelengths of both sensors, correlated these indices with field-mapped biomass while considering the multiple comparison problem, and assessed the predictive performance of single-variable linear models constru...
Hyperspectral remote sensing is a promising tool for the analysis of vegetation and soils in remote ...
In this contribution, VEGETATION based surface reflectances in RED, NIR and SWIR were successfully v...
Hyperspectral image processing is a promising tool for the analysis of vegetation in remote sensing ...
In spite of considerable efforts to monitor global vegetation, biomass quantification in drylands is...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Hyperspectral analysis of vegetation involves obtaining spectral reflectance measurements in hundred...
Biomass is an important indicator for monitoring vegetation degradation and productivity. This study...
There are now over 40 years of research in hyperspectral remote sensing (or imaging spectroscopy) o...
The impact of changes in vegetation biomass on the global ecosystem and the future evolution of poss...
There are now over 40 years of research in hyperspectral remote sensing (or imaging spectroscopy) o...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
The low spectral resolution of multispectral satellite imagery limits its capability for extracting ...
AbstractCrop biomass is increasingly being measured with surface reflectance data derived from multi...
This study was designed to determine the utility of a 1-m-resolution hyperspectral sensor to estimat...
This paper evaluates the usefulness of the hyperspectral imager (HSI) onboard Chinese HJ-1-A small s...
Hyperspectral remote sensing is a promising tool for the analysis of vegetation and soils in remote ...
In this contribution, VEGETATION based surface reflectances in RED, NIR and SWIR were successfully v...
Hyperspectral image processing is a promising tool for the analysis of vegetation in remote sensing ...
In spite of considerable efforts to monitor global vegetation, biomass quantification in drylands is...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Hyperspectral analysis of vegetation involves obtaining spectral reflectance measurements in hundred...
Biomass is an important indicator for monitoring vegetation degradation and productivity. This study...
There are now over 40 years of research in hyperspectral remote sensing (or imaging spectroscopy) o...
The impact of changes in vegetation biomass on the global ecosystem and the future evolution of poss...
There are now over 40 years of research in hyperspectral remote sensing (or imaging spectroscopy) o...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
The low spectral resolution of multispectral satellite imagery limits its capability for extracting ...
AbstractCrop biomass is increasingly being measured with surface reflectance data derived from multi...
This study was designed to determine the utility of a 1-m-resolution hyperspectral sensor to estimat...
This paper evaluates the usefulness of the hyperspectral imager (HSI) onboard Chinese HJ-1-A small s...
Hyperspectral remote sensing is a promising tool for the analysis of vegetation and soils in remote ...
In this contribution, VEGETATION based surface reflectances in RED, NIR and SWIR were successfully v...
Hyperspectral image processing is a promising tool for the analysis of vegetation in remote sensing ...