This paper describes a new method for detecting individual tree stems that was designed to perform well in the challenging hardwood-dominated, mixed-species forests common to the northeastern U.S., where canopy height-based methods have proven unreliable. Most prior research in individual tree detection has been performed in homogenous coniferous or conifer-dominated forests with limited hardwood presence. The study area in central Pennsylvania, United States, includes 17+ tree species and contains over 90% hardwoods. Existing methods have shown reduced performance as the proportion of hardwood species increases, due in large part to the crown-focused approaches they have employed. Top-down approaches are not reliable in deciduous stands du...
Airborne laser scanning (ALS) has recently gained increasing attention in forestry, as ALS data may ...
Precise tree inventory plays a critical role in sustainable forest planting, restoration, and manage...
Numerous semi- and fully-automatic algorithms have been developed for individual tree detection from...
Accurate estimates of tree and forest biomass are essential for a wide range of applications. Automa...
Sustainable forest management requires forest inventory information at the individual tree level. Li...
Classifying and modelling tree stem characteristics such as tree height and diameter is a major chal...
Individual Tree Detection (ITD) algorithms that use Airborne Laser Scanning (ALS) data can provide a...
Unmanned aerial vehicle-based LiDAR survey provides very-high-density point clouds, which involve ve...
The present study introduces a method to identify tree stems from terrestrial laser scanning (TLS) d...
Accurate crown detection and delineation of dominant and subdominant trees are crucial for accurate ...
Individual tree level inventory performed using high density multi-return airborne Light Detection a...
Due to expected climate change and increased focus on forests as a potential carbon sink, it is of i...
Characterization of forest structure is important for management-related decision making, monitoring...
The retrieval of individual tree location from Airborne LiDAR has focused largely on utilizing canop...
This study proposes a multi-step method (the COTH method) to delineate individual tree crowns in den...
Airborne laser scanning (ALS) has recently gained increasing attention in forestry, as ALS data may ...
Precise tree inventory plays a critical role in sustainable forest planting, restoration, and manage...
Numerous semi- and fully-automatic algorithms have been developed for individual tree detection from...
Accurate estimates of tree and forest biomass are essential for a wide range of applications. Automa...
Sustainable forest management requires forest inventory information at the individual tree level. Li...
Classifying and modelling tree stem characteristics such as tree height and diameter is a major chal...
Individual Tree Detection (ITD) algorithms that use Airborne Laser Scanning (ALS) data can provide a...
Unmanned aerial vehicle-based LiDAR survey provides very-high-density point clouds, which involve ve...
The present study introduces a method to identify tree stems from terrestrial laser scanning (TLS) d...
Accurate crown detection and delineation of dominant and subdominant trees are crucial for accurate ...
Individual tree level inventory performed using high density multi-return airborne Light Detection a...
Due to expected climate change and increased focus on forests as a potential carbon sink, it is of i...
Characterization of forest structure is important for management-related decision making, monitoring...
The retrieval of individual tree location from Airborne LiDAR has focused largely on utilizing canop...
This study proposes a multi-step method (the COTH method) to delineate individual tree crowns in den...
Airborne laser scanning (ALS) has recently gained increasing attention in forestry, as ALS data may ...
Precise tree inventory plays a critical role in sustainable forest planting, restoration, and manage...
Numerous semi- and fully-automatic algorithms have been developed for individual tree detection from...