Skip to content
forked from prs-eth/ForAINet

official source code for paper entitled "Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning"

Notifications You must be signed in to change notification settings

Evamino/ForAINet

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning

This repository represents the official code for paper entitled "Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning".

Set up environment

Please refer to our previous repo:

https://github.com/prs-eth/PanopticSegForLargeScalePointCloud

It includes the detailed steps and issues that might happen but already resolved.

FOR-Instance dataset

Please replace the old raw files with our new raw files:

For example, data_set1_5classes contains the data for "basic setting" in Table 4 in our paper.

  1. dataset for settings "basic setting", "+ binary semantic loss", "+ class weights", "+ height weights", "+ region weights", "+ elastic distortion and subsampling", "+ TreeMix"

You can download it: DOI

  1. For other setting to be added here.

Commands for running point cloud segmentation experiments based on different settings:

cd /$YOURPATH$/ForAINet/PointCloudSegmentation
  1. Experiment for "basic setting" in the paper.
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1 models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1 job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ binary semantic loss" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1 models=panoptic/FORpartseg_3heads_BiLoss model_name=PointGroup-PAPER training=treeins_set1_addBiLoss job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ class weights" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_classweight models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_nw8_classweight job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ height weights" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_classweight models=panoptic/FORpartseg_3heads_heightweight model_name=PointGroup-PAPER training=treeins_set1_heightweight job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ region weights" setting in the paper
# Command for training

# To be added
  1. Experiment for "+ intensity" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_add_intensity models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_intensity job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ return number" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_add_return_num models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_return_num job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ scan angle rank" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_add_scan_angle_rank models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_scan_angle_rank job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ hand-crafted features" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_add_all_20010 models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_addallFea_20010 job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ elastic distortion and subsampling" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_curved_subsam models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_addCurvedSubsample job_name=#YOUR_JOB_NAME#
  1. Experiment for "+ TreeMix" setting in the paper
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_treemix3d models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=treeins_set1_mixtree job_name=#YOUR_JOB_NAME#
  1. Experiments for data with different point density
# Command for training
python train.py task=panoptic data=panoptic/treeins_set1_treemix3d_pd#POINT_DENSITY# models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=mixtree_#POINT_DENSITY# job_name=#YOUR_JOB_NAME#

# take point density=10 as an example
python train.py task=panoptic data=panoptic/treeins_set1_treemix3d_pd10 models=panoptic/FORpartseg_3heads model_name=PointGroup-PAPER training=mixtree_10 job_name=#YOUR_JOB_NAME#
  1. Commands for testing. Remember to change "checkpoint_dir" parameter to your path.
# Command for test
# remember to change the following 2 parameters in eval.yaml:
# 1. "checkpoint_dir" to your log files path
# 2. "data" is the paths for your test files
python eval.py

# Command for output the final evaluation file
# replace parameter "test_sem_path" by your path
python evaluation_stats_FOR.py

Commands for running tree parameters extraction code:

cd /$YOURPATH$/ForAINet/tree_metrics
# remember to adjust parameters based on your dataset
python measurement.py

Commands for running code for extracting manually extracted geometric features:

# Please note that our code is based on the Superpoint Graphs repository, which can be found at https://github.com/loicland/superpoint_graph. We have included our custom partition_FORdata.py file.
cd /$YOURPATH$/ForAINet/superpoint_graph/partition
python partition_FORdata.py

Citing

If you find our work useful, please do not hesitate to cite it:

@article{
  xiang2024automated,
  title={Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning},
  author={Binbin Xiang, Maciej Wielgosz, Theodora Kontogianni, Torben Peters, Stefano Puliti, Rasmus Astrup, Konrad Schindler},
  journal={Remote Sensing of Environment},
  volume={305},
  pages={114078},
  year={2024},
  publisher={Elsevier}
}

About

official source code for paper entitled "Automated forest inventory: analysis of high-density airborne LiDAR point clouds with 3D deep learning"

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 81.4%
  • Makefile 11.6%
  • C++ 5.5%
  • C 0.5%
  • Shell 0.5%
  • CMake 0.4%
  • Other 0.1%