You need to have conda!
Create the ign_pdal_tools conda environment using the environment.yml
file
to be able to run the compilation in this environment.
run ci/build.sh
Set the PDAL_DRIVER_PATH
environment variable to point to ${THIS REPO}/install/lib
in order for pdal to find the plugins.
one day, maybe...
The code is structured as:
├── src
│ ├── plugin folder
│ │ ├── pluginFilter.cpp
│ │ ├── pluginFilter.h
│ │ ├── CMakeLists.txt
├── doc
│ ├── pluginFilter.md
├── examples # examples of usage of the code or the docker image
├── ci
├── macro # Python module with ready-to-use filters combinations
│ ├── __init__.py
│ ├── macro.py
│ ├── version.py
│ └── *.py # Example scripts to use the plugin filters + the filters combinations contained in `macro`
├── test
├── CMakeLists.txt
├── environment*.yml
├── Dockerfile
├── pyproject.toml # Setup file to install the `macro` python module with pip
├── .github
└── .gitignore
Each plugin should have his own test. To run all tests:
python -m pytest -s
grid decimation [Deprecated: use the gridDecimation filter from the pdal repository]
In order to add a filter, you have to add a new folder in the src directory :
├── src
│ ├── filter_my_new_PI
│ │ ├── my_new_PI_Filter.cpp
│ │ ├── my_new_PI_Filter.h
│ │ ├── CMakeLists.txt
The name of the folder informs of the plugIN nature (reader, writer, filter).
The code should respect the documentation proposed by pdal: build a pdal plugin. Be careful to change if the plugIn is a reader, a writer or a filter.
The CMakeList should contain:
file( GLOB_RECURSE GD_SRCS ${CMAKE_SOURCE_DIR} *)
PDAL_CREATE_PLUGIN(
TYPE filter
NAME my_new_PI
VERSION 1.0
SOURCES ${GD_SRCS}
)
install(TARGETS pdal_plugin_filter_my_new_PI)
You should complete the main CMakeList by adding the new plugIN:
add_subdirectory(src/filter_my_new_PI)
Each plugIN has his own md file in the doc directory, structured as the model.
Don't forget to update the list with a link to the documentation.
The macro
python module is installed in the project docker image so that it can be imported from anywhere in the
docker image.
from pdal_ign_macro import macro
marco.my_macro(...)
See the scripts
folder for example usages of this module.
If you have a python script on your computer, you can mount its containing folder as a volume in order to run it in the docker image.
Example:
docker run \
-v /my/data/folder:/data \
-v /my/output/folder:/output \
-v /my/script/folder:/scripts \
pdal_ign_plugin \
python /scripts/my_script.py --input /data/my_data_file.las -o /output/my_output.las
Another example can be found in the ./example folder:
Run the following command to run the demo_script python script which copies an input las file into the output folder as a las1.4 file :
./examples/run_custom_script_in_docker_image.sh -i ./test/data/mnx/input/bat.laz -o ./tmp/demo -s ./examples/demo_script.py