Predictive modeling with remotely sensed data requires an accurate representation of spatial variability by ground truth data. In this study, we assessed the reliability of the size and location of ground truth data in capturing the landscape spatial variability embedded in the Airborne Visible Infrared Imaging Spectrometer-Next Generation (AVIRIS-NG) hyperspectral image in an agricultural region in Anand, India. We derived simulated spectral vegetation and soil indices using Gaussian simulation from AVIRIS-NG image for two point-location datasets, (1) ground truth points from adaptive sampling and (2) points from conditional Latin Hypercube Sampling (cLHS). We compared values of the simulated image indices against the actual image indices ...
Prior to acquiring remotely sensed imagery with which to map land cover investigators may wish to se...
Remotely-sensed data have been used for assessment of land cover since remote sensing originated, bu...
Remote sensing data is used in a broad range of applications in agriculture as a tool to describe th...
International audienceIt has long been acknowledged that the soil spatial samplings used as inputs t...
The characterization of land surface conditions such as senescent plant materials, soils, green vege...
Airborne remote sensing using imaging spectroscopy and LiDAR (Light Detection and Ranging) measureme...
Hyperspectral imagery allows investigators to identify remote sensing opportunities for farmers and ...
The spatial nature of remote sensing data presents an opportunity to characterise soils in the lands...
It has long been acknowledged that the soil spatial samplings used as inputs to DSM models are stron...
The monitoring of earth surface processes at a global scale requires high temporal frequency remote ...
Airborne and Landsat remote sensing are promising technologies for measuring the response of agricul...
161 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.Unsupervised clustering of co...
The spatial structures displayed by remote sensing imagery are essential information characterizing ...
AbstractThe spatial variability of remotely sensed image values provides important information about...
Accurate digital mapping of soil organic carbon (SOC) is important in understanding the global carbo...
Prior to acquiring remotely sensed imagery with which to map land cover investigators may wish to se...
Remotely-sensed data have been used for assessment of land cover since remote sensing originated, bu...
Remote sensing data is used in a broad range of applications in agriculture as a tool to describe th...
International audienceIt has long been acknowledged that the soil spatial samplings used as inputs t...
The characterization of land surface conditions such as senescent plant materials, soils, green vege...
Airborne remote sensing using imaging spectroscopy and LiDAR (Light Detection and Ranging) measureme...
Hyperspectral imagery allows investigators to identify remote sensing opportunities for farmers and ...
The spatial nature of remote sensing data presents an opportunity to characterise soils in the lands...
It has long been acknowledged that the soil spatial samplings used as inputs to DSM models are stron...
The monitoring of earth surface processes at a global scale requires high temporal frequency remote ...
Airborne and Landsat remote sensing are promising technologies for measuring the response of agricul...
161 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.Unsupervised clustering of co...
The spatial structures displayed by remote sensing imagery are essential information characterizing ...
AbstractThe spatial variability of remotely sensed image values provides important information about...
Accurate digital mapping of soil organic carbon (SOC) is important in understanding the global carbo...
Prior to acquiring remotely sensed imagery with which to map land cover investigators may wish to se...
Remotely-sensed data have been used for assessment of land cover since remote sensing originated, bu...
Remote sensing data is used in a broad range of applications in agriculture as a tool to describe th...