In recent years, a number of alternative methods have been proposed to predict forest canopy density from remotely sensed data. To date, however, it remains difficult to decide which method to use, since their relative performance has never been evaluated. In this study the performance of: (1) an artificial neural network, (2) a multiple linear regression, (3) the forest canopy density mapper and (4) a maximum likelihood classification method was compared for prediction of forest canopy density using a Landsat ETM+ image. Comparison of confusion matrices revealed that the regression model performed significantly worse than the three other methods. These results were based on a z-test for comparison of weighted kappa statistics, which is an ...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
AbstractThe optical remote sensing data is often providing two-dimensional spectral information, but...
Detailed maps derived from geographical data are becoming increasingly desirable for use in forest m...
In recent years, a number of alternative methods have been proposed to predict forest canopy density...
Studying and modeling quantitative characteristics of forest to develop and direct the ecosystem tow...
In the remote sensing of forests, point cloud data from airborne laser scanning contains high-value ...
Information pertaining to forest timber volume is crucial for sustainable forest management. Remotel...
Environmental Impact Assessment (EIA) is well-known as a basic tool for environmental management and...
The transformation of land cover, in particular coniferous forest, constitutes one of the most notab...
Identification of a tree canopy density information may use remote sensing data such as Landsat-8 im...
AbstractEstimation of forest attributes using remotely sensed data has being as a new potential for ...
The demand for cost-efficient forest aboveground biomass (AGB) prediction methods is growing worldwi...
Traditional field surveys are expensive, time-consuming, laborious, and difficult to perform, especi...
The demand for cost-efficient forest aboveground biomass (AGB) prediction methods is growing worldwi...
Canopy cover is an important forest structure parameter for many applications in ecology, hydrology,...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
AbstractThe optical remote sensing data is often providing two-dimensional spectral information, but...
Detailed maps derived from geographical data are becoming increasingly desirable for use in forest m...
In recent years, a number of alternative methods have been proposed to predict forest canopy density...
Studying and modeling quantitative characteristics of forest to develop and direct the ecosystem tow...
In the remote sensing of forests, point cloud data from airborne laser scanning contains high-value ...
Information pertaining to forest timber volume is crucial for sustainable forest management. Remotel...
Environmental Impact Assessment (EIA) is well-known as a basic tool for environmental management and...
The transformation of land cover, in particular coniferous forest, constitutes one of the most notab...
Identification of a tree canopy density information may use remote sensing data such as Landsat-8 im...
AbstractEstimation of forest attributes using remotely sensed data has being as a new potential for ...
The demand for cost-efficient forest aboveground biomass (AGB) prediction methods is growing worldwi...
Traditional field surveys are expensive, time-consuming, laborious, and difficult to perform, especi...
The demand for cost-efficient forest aboveground biomass (AGB) prediction methods is growing worldwi...
Canopy cover is an important forest structure parameter for many applications in ecology, hydrology,...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
AbstractThe optical remote sensing data is often providing two-dimensional spectral information, but...
Detailed maps derived from geographical data are becoming increasingly desirable for use in forest m...