The use of spectral data is seen as a fast and non-destructive method capable of monitoring pasture biomass. Although there is great potential in this technique, both end users and sensor manufacturers are uncertain about the necessary sensor specifications and achievable accuracies in an operational scenario. This study presents a straightforward parametric method able to accurately retrieve the hyperspectral signature of perennial ryegrass (Lolium perenne) canopies from multispectral data collected within a two-year period in Australia and the Netherlands. The retrieved hyperspectral data were employed to generate optimal indices and continuum-removed spectral features available in the scientific literature. For performance comparison, bo...
Human-induced global environmental changes are increasingly occurring at larger scales. Terrestrial ...
Remote sensing of grass quantity is important for providing information about the productivity and f...
The main objective was to determine whether partial least squares (PLS) regression improves grass/he...
The use of spectral data is seen as a fast and non-destructive method capable of monitoringpasture b...
Pastures are the cornerstone of grazing-based livestock production systems, allowing for sustainable...
Pasture management is highly dependent on accurate biomass estimation. Usually, such activity is neg...
Pastures are the cornerstone of grazing-based livestock production systems, allowing for sustainable...
Pasture management is highly dependent on accurate biomass estimation. Usually, such activity is neg...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Grassland is an essential part of terrestrial ecosystems. It has a significant impact on the carbon ...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
Classification Hyperspectral National vegetation classification (NVC) Plant species composition Spec...
Accurate estimation of grassland biomass at their peak productivity can provide crucial information ...
In this paper, the potential of a band shaving algorithm based on support vector machines (SVM) appl...
The accurate and timely assessment of pasture quantity and quality (i.e., nutritive characteristics)...
Human-induced global environmental changes are increasingly occurring at larger scales. Terrestrial ...
Remote sensing of grass quantity is important for providing information about the productivity and f...
The main objective was to determine whether partial least squares (PLS) regression improves grass/he...
The use of spectral data is seen as a fast and non-destructive method capable of monitoringpasture b...
Pastures are the cornerstone of grazing-based livestock production systems, allowing for sustainable...
Pasture management is highly dependent on accurate biomass estimation. Usually, such activity is neg...
Pastures are the cornerstone of grazing-based livestock production systems, allowing for sustainable...
Pasture management is highly dependent on accurate biomass estimation. Usually, such activity is neg...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Grassland is an essential part of terrestrial ecosystems. It has a significant impact on the carbon ...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
Classification Hyperspectral National vegetation classification (NVC) Plant species composition Spec...
Accurate estimation of grassland biomass at their peak productivity can provide crucial information ...
In this paper, the potential of a band shaving algorithm based on support vector machines (SVM) appl...
The accurate and timely assessment of pasture quantity and quality (i.e., nutritive characteristics)...
Human-induced global environmental changes are increasingly occurring at larger scales. Terrestrial ...
Remote sensing of grass quantity is important for providing information about the productivity and f...
The main objective was to determine whether partial least squares (PLS) regression improves grass/he...