Two types of neural network were used to derive measures of biodiversity from Landsat TM data of a tropical rainforest. A feedforward neural network was used to estimate species richness while a Kohonen neural network was used to provide information on species composition. The results indicate the potential of remote sensing as a source of maps of biodiversity.</p
Over the past decade there have been considerable increases in both the quantity of remotely sensed ...
The use of Artificial Neural Networks (ANNs) for the classification of remotely sensed imagery offer...
This research is motivated by the global warming problem, which is likely influenced by human activi...
Two types of neural network were used to derive measures of biodiversity from Landsat TM data of a t...
Two types of neural network were used to derive measures of biodiversity from Landsat TM data of a t...
The understanding and management of biodiversity is often limited by a lack of data. Remote sensing ...
Aim Conservation activities have increasingly focused on issues at the level of the landscape but ar...
The biomass and biomass dynamics of forests are major uncertainties in our understanding of tropical...
Forest biophysical properties are typically estimated and mapped from remotely sensed data through t...
The use of remote sensing to estimate biomass in tropical forests has met with varying degrees of su...
Abstract This study classified forest types using neural network data from a forest inventory provid...
Aims: Remote sensing approaches could be beneficial for monitoring and compiling essential biodivers...
Forest inventory forms the foundation of forest management. Remote sensing (RS) is an efficient mean...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
Abstract. Over the past decade there have been considerable increases in both the quantity of remote...
Over the past decade there have been considerable increases in both the quantity of remotely sensed ...
The use of Artificial Neural Networks (ANNs) for the classification of remotely sensed imagery offer...
This research is motivated by the global warming problem, which is likely influenced by human activi...
Two types of neural network were used to derive measures of biodiversity from Landsat TM data of a t...
Two types of neural network were used to derive measures of biodiversity from Landsat TM data of a t...
The understanding and management of biodiversity is often limited by a lack of data. Remote sensing ...
Aim Conservation activities have increasingly focused on issues at the level of the landscape but ar...
The biomass and biomass dynamics of forests are major uncertainties in our understanding of tropical...
Forest biophysical properties are typically estimated and mapped from remotely sensed data through t...
The use of remote sensing to estimate biomass in tropical forests has met with varying degrees of su...
Abstract This study classified forest types using neural network data from a forest inventory provid...
Aims: Remote sensing approaches could be beneficial for monitoring and compiling essential biodivers...
Forest inventory forms the foundation of forest management. Remote sensing (RS) is an efficient mean...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
Abstract. Over the past decade there have been considerable increases in both the quantity of remote...
Over the past decade there have been considerable increases in both the quantity of remotely sensed ...
The use of Artificial Neural Networks (ANNs) for the classification of remotely sensed imagery offer...
This research is motivated by the global warming problem, which is likely influenced by human activi...