This paper presents a hybrid ensemble method that is comprised of a sequential and a parallel architecture for the classification of tree genus using LiDAR (Light Detection and Ranging) data. The two classifiers use different sets of features: (1) features derived from geometric information, and (2) features derived from vertical profiles using Random Forests as the base classifier. This classification result is also compared with that obtained by replacing the base classifier by LDA (Linear Discriminant Analysis), kNN (k Nearest Neighbor) and SVM (Support Vector Machine). The uniqueness of this research is in the development, implementation and application of three main ideas: (1) the hybrid ensemble method, which aims to improve classifi...
ABSTRACTAccurately identifying tree species is crucial in digital forestry. Several airborne LiDAR-b...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requ...
Although remotely sensed data have been widely explored for forest applications, passive remote sens...
This paper presents a hybrid ensemble method that is comprised of a sequential and a parallel archit...
Tree genera information is useful in environmental applications such as forest management, forestry,...
Recent research into improving the effectiveness of forest inventory management using airborne LiDAR...
We present a comparative study between two different approaches for tree genera classification using...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
Tree species information is crucial for accurate forest parameter estimation. Small footprint high d...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
The knowledge about the species of trees is essential for precision forest management practices. Mod...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
Tree species identification is critical for sustainable forest management and native forest conserva...
ABSTRACTAccurately identifying tree species is crucial in digital forestry. Several airborne LiDAR-b...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requ...
Although remotely sensed data have been widely explored for forest applications, passive remote sens...
This paper presents a hybrid ensemble method that is comprised of a sequential and a parallel archit...
Tree genera information is useful in environmental applications such as forest management, forestry,...
Recent research into improving the effectiveness of forest inventory management using airborne LiDAR...
We present a comparative study between two different approaches for tree genera classification using...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
Tree species information is crucial for accurate forest parameter estimation. Small footprint high d...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
The knowledge about the species of trees is essential for precision forest management practices. Mod...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
Tree species identification is critical for sustainable forest management and native forest conserva...
ABSTRACTAccurately identifying tree species is crucial in digital forestry. Several airborne LiDAR-b...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requ...
Although remotely sensed data have been widely explored for forest applications, passive remote sens...