We will work smarter, more efficiently and with more precision in forestry
METHODS AND DATASETS
METHODS AND DATASETS
Methods and Datasets
BranchPoseNet (2024): Characterizing tree branching with a deep learning-based pose estimation approach
ForAINET(2024): Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning
NIBIO_MLS (2024): a forest point cloud panoptic segmentation dataset from mobile laser scanning (Geoslam Horizon)
FOR-species20K dataset (2024): FOR-species20K dataset, for benchmarking tree species classification from proximally-sensed laser scanning data.
FOR-instance(2023): FOR-instance: a UAV laser scanning benchmark dataset for semantic and instance segmentation of individual trees.
Point2tree(2023): Instance and semantic segmentation of dense laser scanning point clouds from terrestrial platforms (TLS/MLS).
taperNOR (2023): Taper models for spruce, pine and birch in Norway and helper functions.
optBuck (2022): An R package for handling single-grip forest harvester data and bucking optimization
YOLOv5-whorlDetector (2022): This repo contains the R scripts to detect whorls from dense drone laser scanning point clouds.
wheelRuts_semanticSegmentation(2022): This repo includes the scripts to replicate the methods developed in Bhatnagar et al. (2022) to perform a semantic segmentation of wheel-ruts caused by forestry machinery based on drone RGB imagery.