Hyperspectral remotely sensed data are useful for studying ecosystem processes and patterns. However, spatial characterization of such remotely sensed images is needed to optimize sampling procedures and address scaling issues. We have investigated spatial scaling in ground-based and airborne hyperspectral data for canopy- to watershed-level ecosystem studies of southern California chaparral and grassland vegetation. Three optical reflectance indices, namely, Normalized Difference Vegetation Index (NDVI), Water Band Index (WBI) and Photochemical Reflectance Index (PRI) were used as indicators of biomass, plant water content and photosynthetic activity, respectively. Two geostatistical procedures, the semivariogram and local variance, were u...
The Bessey Unit of the Nebraska National Forest is a planted ponderosa pine forest located in the Ne...
Hyperspectral remote sensing is increasingly being recognized as a powerful tool to map ecosystem pr...
Airborne remote sensing using imaging spectroscopy and LiDAR (Light Detection and Ranging) measureme...
Hyperspectral image processing is a promising tool for the analysis of vegetation in remote sensing ...
Relationships of plant species richness with spectral indices derived from airborne hyperspectral im...
Hyperspectral analysis of vegetation involves obtaining spectral reflectance measurements in hundred...
Specific leaf area (SLA), which is defined as the leaf area per unit of dry leaf mass is an importan...
Spatial structure information characterized from remotely sensed imagery can be used in various appl...
Estimating biophysical parameters of native grassland enables management changes that affect ecologi...
Hyperspectral remote sensing imagery was collected over a soybean field in central Illinois in mid-J...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
Information on the amount and spatial distribution of canopy chlorophyll content is of importance fo...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
A grazing gradient in Grand Staircase-Escalante National Monument, UT was identified with field meas...
The monitoring of agronomic parameters like biomass, water stress, and plant health can benefit from...
The Bessey Unit of the Nebraska National Forest is a planted ponderosa pine forest located in the Ne...
Hyperspectral remote sensing is increasingly being recognized as a powerful tool to map ecosystem pr...
Airborne remote sensing using imaging spectroscopy and LiDAR (Light Detection and Ranging) measureme...
Hyperspectral image processing is a promising tool for the analysis of vegetation in remote sensing ...
Relationships of plant species richness with spectral indices derived from airborne hyperspectral im...
Hyperspectral analysis of vegetation involves obtaining spectral reflectance measurements in hundred...
Specific leaf area (SLA), which is defined as the leaf area per unit of dry leaf mass is an importan...
Spatial structure information characterized from remotely sensed imagery can be used in various appl...
Estimating biophysical parameters of native grassland enables management changes that affect ecologi...
Hyperspectral remote sensing imagery was collected over a soybean field in central Illinois in mid-J...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
Information on the amount and spatial distribution of canopy chlorophyll content is of importance fo...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
A grazing gradient in Grand Staircase-Escalante National Monument, UT was identified with field meas...
The monitoring of agronomic parameters like biomass, water stress, and plant health can benefit from...
The Bessey Unit of the Nebraska National Forest is a planted ponderosa pine forest located in the Ne...
Hyperspectral remote sensing is increasingly being recognized as a powerful tool to map ecosystem pr...
Airborne remote sensing using imaging spectroscopy and LiDAR (Light Detection and Ranging) measureme...