The potential of field hyperspectral remote sensing data for non-destructive assessment of hay meadow biomass and vascular plant diversity has been investigated. Spectrometric and agronomic data were acquired at peak biomass over 34 sites distributed at diverse elevation and slopes over an area of 220 km 2 in the Central Alps (Valtellina, Northern Italy). Different modelling approaches were tested to evaluate the predictive performance of spectral measurements: (i) the use of two band ratios of reflectance as input in ordinary least square regression models and (ii) the use of all reflectance bands as input in multivariate partial least square regression models. Each model was subjected to leave-one-out cross-validation and evaluated using ...
The study shows that leaf area index (LAI), leaf chlorophyll content (LCC) and canopy chlorophyll co...
Vegetation, through its condition, reflects the properties of the environment. Heterogeneous alpine ...
Agri-environmental measures (AEM) are now compulsory and consolidated in many rural development plan...
The research objective was to determine robust hyperspectral predictors for monitoring grass/herb bi...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Classification Hyperspectral National vegetation classification (NVC) Plant species composition Spec...
In recent years, hyperspectral and multi‐angular approaches for quantifying biophysical characterist...
Dry grassland sites are amongst the most species rich habitats of Central Europe. In Switzerland, th...
Three years of summer field studies (2002-2004) were conducted at two sites in the Central Italian A...
The study shows that leaf area index (LAI) and canopy chlorophyll content can be mapped in a heterog...
Remote sensing of vegetation provides important information for ecological applications and environm...
Semi-natural grasslands with grazing management are characterized by high fine-scale species richnes...
Linking optical remote sensing with carbon fluxes and biophysical parameters is critical to exploit ...
Plant biodiversity is an important feature of grassland ecosystems, as it is related to the provisio...
Aims: Imaging spectroscopy enables measurement of vegetation optical properties to predict vegetatio...
The study shows that leaf area index (LAI), leaf chlorophyll content (LCC) and canopy chlorophyll co...
Vegetation, through its condition, reflects the properties of the environment. Heterogeneous alpine ...
Agri-environmental measures (AEM) are now compulsory and consolidated in many rural development plan...
The research objective was to determine robust hyperspectral predictors for monitoring grass/herb bi...
In Switzerland, they are home to a large number of plant and animal species that are classified as e...
Classification Hyperspectral National vegetation classification (NVC) Plant species composition Spec...
In recent years, hyperspectral and multi‐angular approaches for quantifying biophysical characterist...
Dry grassland sites are amongst the most species rich habitats of Central Europe. In Switzerland, th...
Three years of summer field studies (2002-2004) were conducted at two sites in the Central Italian A...
The study shows that leaf area index (LAI) and canopy chlorophyll content can be mapped in a heterog...
Remote sensing of vegetation provides important information for ecological applications and environm...
Semi-natural grasslands with grazing management are characterized by high fine-scale species richnes...
Linking optical remote sensing with carbon fluxes and biophysical parameters is critical to exploit ...
Plant biodiversity is an important feature of grassland ecosystems, as it is related to the provisio...
Aims: Imaging spectroscopy enables measurement of vegetation optical properties to predict vegetatio...
The study shows that leaf area index (LAI), leaf chlorophyll content (LCC) and canopy chlorophyll co...
Vegetation, through its condition, reflects the properties of the environment. Heterogeneous alpine ...
Agri-environmental measures (AEM) are now compulsory and consolidated in many rural development plan...