Crown features derived from high-density airborne laser scanning (ALS) data have proven to be effective for forest species classification at the individual tree level. Most of the general state-of-the-art (SoA) techniques rely on coarse-level crown features extracted from ALS data and under-utilize both the spatial and the spectral information available in the point clouds, Moreover, they are designed on the expected properties of the specific analyzed forest. We present a novel species classification approach, based on quantization of the entire 3-D tree crown into smaller elementary crown volumes (ECVs) that effectively captures the spatial distribution of filled (i.e., stem, branch, and foliage) and empty volumes of crowns. In the first ...
Tree species classification accuracy at the individual tree crown (ITC) level depends on many factor...
To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spa...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Tree species information is crucial for accurate forest parameter estimation. Small footprint high d...
The knowledge about the species of trees is essential for precision forest management practices. Mod...
The knowledge about individual trees in forest is highly beneficial in forest management. High densi...
Individual tree delineation using remotely sensed data plays a very important role in precision fore...
The knowledge of the tree species is a crucial information that governs the success of precision for...
The knowledge on the species of individual trees is ineluctable for accurate forest parameter estima...
Knowledge of the spatial distribution of tree species is important for efficiently managing and moni...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
Forest structural properties are traditionally acquired during extensive fieldwork campaigns. A grea...
Airborne laser scanning (ALS) has recently gained increasing attention in forestry, as ALS data may ...
Individual tree crowns can be delineated from dense airborne laser scanning (ALS) data and their spe...
Species identification is a critical factor for obtaining accurate forest inventories. This paper co...
Tree species classification accuracy at the individual tree crown (ITC) level depends on many factor...
To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spa...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...
Tree species information is crucial for accurate forest parameter estimation. Small footprint high d...
The knowledge about the species of trees is essential for precision forest management practices. Mod...
The knowledge about individual trees in forest is highly beneficial in forest management. High densi...
Individual tree delineation using remotely sensed data plays a very important role in precision fore...
The knowledge of the tree species is a crucial information that governs the success of precision for...
The knowledge on the species of individual trees is ineluctable for accurate forest parameter estima...
Knowledge of the spatial distribution of tree species is important for efficiently managing and moni...
Tree species information is crucial for digital forestry, and efficient techniques for classifying t...
Forest structural properties are traditionally acquired during extensive fieldwork campaigns. A grea...
Airborne laser scanning (ALS) has recently gained increasing attention in forestry, as ALS data may ...
Individual tree crowns can be delineated from dense airborne laser scanning (ALS) data and their spe...
Species identification is a critical factor for obtaining accurate forest inventories. This paper co...
Tree species classification accuracy at the individual tree crown (ITC) level depends on many factor...
To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spa...
We propose the Point Cloud Tree Species Classification Network (PCTSCN) to overcome challenges in cl...