Discrimination and classification are integral processes for interpreting remotely sensed data. Many spectral vegetation indices have been proposed for discriminating between vegetation, soil, and other ground cover categories. Classical remote sensing show that reflectance in the red (R) and near infrared (NIR) bands of the electromagnetic spectrum have been successful in differentiating between vegetation and other ground cover classes and they are commonly used for this purpose. Here we demonstrate how Fisher’s classical statistics can be applied to develop discriminant functions for commonly used vegetation indices simply using the R and NIR bands. We derive a new vegetation index, the Log-Ratio Vegetation Index (LRVI) and demonstrate i...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...
Surface reflectance data acquired in red and near-infrared spectra by remote sensing sensors are tra...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...
Discrimination and classification are integral processes for interpreting remotely sensed data. Many...
Operational monitoring of vegetative cover by remote sensing currently involves the utilisation of v...
This paper examines the possibility of exploiting ground reflectance in the near-infrared (NIR) for ...
Leaf Area Index (LAI) is a crucial biophysical variable for agroecosystems monitoring. Conventional ...
Leaf area index (LAI) is a crucial biophysical variable for agroecosystems monitoring. Conventional ...
Remotely sensed, angle-based vegetation indices that measure vegetation amounts by the angle between...
A new moisture adjusted vegetation index (MAVI) is proposed using the red, near infrared, and shortw...
Over the past decades, the discipline of remote sensing has become an essential tool in earth scienc...
This paper describes a rational approach to the design of an optimal index to estimate vegetation pr...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
The leaf area index (LAI) is one of the most important Earth surface parameters used in the modeling...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...
Surface reflectance data acquired in red and near-infrared spectra by remote sensing sensors are tra...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...
Discrimination and classification are integral processes for interpreting remotely sensed data. Many...
Operational monitoring of vegetative cover by remote sensing currently involves the utilisation of v...
This paper examines the possibility of exploiting ground reflectance in the near-infrared (NIR) for ...
Leaf Area Index (LAI) is a crucial biophysical variable for agroecosystems monitoring. Conventional ...
Leaf area index (LAI) is a crucial biophysical variable for agroecosystems monitoring. Conventional ...
Remotely sensed, angle-based vegetation indices that measure vegetation amounts by the angle between...
A new moisture adjusted vegetation index (MAVI) is proposed using the red, near infrared, and shortw...
Over the past decades, the discipline of remote sensing has become an essential tool in earth scienc...
This paper describes a rational approach to the design of an optimal index to estimate vegetation pr...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
The retrieval of canopy biophysical variables is known to be affected by confounding factors such as...
The leaf area index (LAI) is one of the most important Earth surface parameters used in the modeling...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...
Surface reflectance data acquired in red and near-infrared spectra by remote sensing sensors are tra...
Remote sensing data is very useful for many important applications. Mono spectral consistsof single ...