Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requires the availability of a sufficient number of reliable reference samples (i.e., training samples) to be used in the learning phase of the classifier. The classification performance of the tree species is mainly affected by two main issues: (i) an imbalanced distribution of the tree species classes, and (ii) the presence of unreliable samples due to field collection errors, coordinate misalignments, and ITCs delineation errors. To address these problems, in this paper, we present a weighted Support Vector Machine (wSVM)-based approach for the detection of tree species at ITC level. The proposed approach initially extracts (i) different...
To accelerate scientific progress on remote tree classification—as well as biodiversity and ecology ...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requ...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requi...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Tree species classification at individual tree crowns (ITCs) level using remote sensing data require...
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 ...
Tree species identification and forest type classification are critical for sustainable forest manag...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
The knowledge on the species of individual trees is ineluctable for accurate forest parameter estima...
An international data science challenge, called National Ecological Observatory Network—National Ins...
This work intends to lay the foundations for identifying the prevailing forest types and the delinea...
Explicit information of tree species composition provides valuable materials for the management of f...
To accelerate scientific progress on remote tree classification—as well as biodiversity and ecology ...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requ...
Tree species classification at individual tree crowns (ITCs) level, using remote-sensing data, requi...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Tree species classification at individual tree crowns (ITCs) level using remote sensing data require...
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 ...
Tree species identification and forest type classification are critical for sustainable forest manag...
It has been recognised that airborne LiDAR (light detection and ranging) offers advantages over the ...
The knowledge on the species of individual trees is ineluctable for accurate forest parameter estima...
An international data science challenge, called National Ecological Observatory Network—National Ins...
This work intends to lay the foundations for identifying the prevailing forest types and the delinea...
Explicit information of tree species composition provides valuable materials for the management of f...
To accelerate scientific progress on remote tree classification—as well as biodiversity and ecology ...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...