This paper examines the possibility of exploiting ground reflectance in the near-infrared (NIR) for monitoring grassland phytomass on a temporal basis. Three new spectral vegetation indices (Infrared Slope Index, ISI; Near Infrared Difference Index, NIDI; and Normalized Difference Structural Index, NDSI), which are based on the reflectance values in the H25 (863-881 nm) and the H18 (745-751 nm) Chris Proba (mode 5) bands, are proposed. Ground measurements of hyperspectral reflectance and phytomass were made at six grassland sites in the Italian and Austrian mountains using a hand-held spectroradiometer. At full canopy cover, strong saturation was observed for many traditional vegetation indices (Normalised Difference Vegetation Index, Modif...
Grasslands are a dominant land cover in many alpine regions. They vary from intensively...
Estimating biophysical parameters of native grassland enables management changes that affect ecologi...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
This paper examines the possibility of exploiting ground reflectance in the near-infrared (NIR) for ...
Abstract: Red-edge (RE) spectral vegetation indices (SVIs)\u2014combining bands on the sharp change ...
Grassland is an essential part of terrestrial ecosystems. It has a significant impact on the carbon ...
Grasslands cover up to 40% of the mountain areas globally and 23% of the European Alps and affect nu...
Red-edge (RE) spectral vegetation indices (SVIs)—combining bands on the sharp change region between...
The monitoring of pasture status often has relied on the satellite-derived quantity known as the nor...
The research objective was to determine robust hyperspectral predictors for monitoring grass/herb bi...
In this study, the suitability of spectral vegetation indexes for predicting green ratio (the percen...
Using a spectral vegetation index (VI) is an efficient approach for monitoring plant phenology from ...
In recent years, hyperspectral and multi‐angular approaches for quantifying biophysical characterist...
Operational monitoring of vegetative cover by remote sensing currently involves the utilisation of v...
After forested areas grasslands are the second largest land cover type in the Alps ranging from inte...
Grasslands are a dominant land cover in many alpine regions. They vary from intensively...
Estimating biophysical parameters of native grassland enables management changes that affect ecologi...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
This paper examines the possibility of exploiting ground reflectance in the near-infrared (NIR) for ...
Abstract: Red-edge (RE) spectral vegetation indices (SVIs)\u2014combining bands on the sharp change ...
Grassland is an essential part of terrestrial ecosystems. It has a significant impact on the carbon ...
Grasslands cover up to 40% of the mountain areas globally and 23% of the European Alps and affect nu...
Red-edge (RE) spectral vegetation indices (SVIs)—combining bands on the sharp change region between...
The monitoring of pasture status often has relied on the satellite-derived quantity known as the nor...
The research objective was to determine robust hyperspectral predictors for monitoring grass/herb bi...
In this study, the suitability of spectral vegetation indexes for predicting green ratio (the percen...
Using a spectral vegetation index (VI) is an efficient approach for monitoring plant phenology from ...
In recent years, hyperspectral and multi‐angular approaches for quantifying biophysical characterist...
Operational monitoring of vegetative cover by remote sensing currently involves the utilisation of v...
After forested areas grasslands are the second largest land cover type in the Alps ranging from inte...
Grasslands are a dominant land cover in many alpine regions. They vary from intensively...
Estimating biophysical parameters of native grassland enables management changes that affect ecologi...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...