The classification of savanna woodland tree species from high-resolution Remotely Piloted Aircraft Systems (RPAS) imagery is a complex and challenging task. Difficulties for both traditional remote sensing algorithms and human observers arise due to low interspecies variability (species difficult to discriminate because they are morphologically similar) and high intraspecies variability (individuals of the same species varying to the extent that they can be misclassified), and the loss of some taxonomic features commonly used for identification when observing trees from above. Deep neural networks are increasingly being used to overcome challenges in image recognition tasks. However, supervised deep learning algorithms require high-quality ...
Plant species identification and mapping based on remotely-sensed spectral signatures is a challengi...
Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captu...
The fast and accurate identification of forest species is critical to support their sustainable mana...
We present a baseline deep learning dataset of 2547 polygons for 36 tree species in Northern Austral...
Information on tree species and changes in forest composition is necessary to understand species-spe...
Abstract Conventional forest inventories are labour-intensive. This limits the spatial extent and te...
Identifying tree species from the air has long been desired for forest management. Recently, combina...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Tree species identification at the individual tree level is crucial for forest operations and manage...
Abstract Remote sensing of forested landscapes can transform the speed, scale and cost of forest res...
Remote sensing of forested landscapes can transform the speed, scale and cost of forest research. Th...
Airborne remote sensing offers unprecedented opportunities to efficiently monitor vegetation, but me...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
Mapping forest types and tree species at regional scales to provide information for ecologists and f...
Plant species identification and mapping based on remotely-sensed spectral signatures is a challengi...
Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captu...
The fast and accurate identification of forest species is critical to support their sustainable mana...
We present a baseline deep learning dataset of 2547 polygons for 36 tree species in Northern Austral...
Information on tree species and changes in forest composition is necessary to understand species-spe...
Abstract Conventional forest inventories are labour-intensive. This limits the spatial extent and te...
Identifying tree species from the air has long been desired for forest management. Recently, combina...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Tree species identification at the individual tree level is crucial for forest operations and manage...
Abstract Remote sensing of forested landscapes can transform the speed, scale and cost of forest res...
Remote sensing of forested landscapes can transform the speed, scale and cost of forest research. Th...
Airborne remote sensing offers unprecedented opportunities to efficiently monitor vegetation, but me...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
Mapping forest types and tree species at regional scales to provide information for ecologists and f...
Plant species identification and mapping based on remotely-sensed spectral signatures is a challengi...
Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captu...
The fast and accurate identification of forest species is critical to support their sustainable mana...