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CircleCI Doxygen

Motion Planning Benchmark

Benchmarking motion planners for wheeled mobile robots in cluttered environments on scenarios close to real-world autonomous driving settings.

Dependencies

The following boost libraries (version 1.58+) need to be installed:

  • boost_serialization
  • boost_filesystem
  • boost_system
  • boost_program_options

The provided CHOMP implementation requires, GLUT and other OpenGL libraries to be present, which can be installed through the freeglut3-dev package. PNG via libpng-dev, expat via libexpat1-dev.

Optionally, to support visual debugging, Qt5 with the Charts and Svg modules needs to be installed.

The Python front-end dependencies are defined in python/requirements.txt which can be installed through

pip install -r python/requirements.txt

Using Docker

  1. Build the Docker image

    docker build -t mpb .
  2. Run the image to be able to access the Jupyter Lab instance on port 8888 in your browser from where you can run and evaluate benchmarks:

    docker run -p 8888:8888 -it mpb

    Optionally, you can mount your local mpb copy to its respective folder inside the docker via

    docker run -p 8888:8888 -v $(pwd):/root/code/mpb -it mpb
    # use %cd% in place of $(pwd) on Windows

    Now you can edit files from outside the docker and use this container to build and run the experiments.

    You can connect multiple times to this same running docker, for example if you want to access it from multiple shell instances via

    docker exec -it $(docker ps -qf "ancestor=mpb") bash

    Alternatively, run the provided script ./docker_connect.sh that executes this command.

Build instructions

  1. Check out the submodules

    git submodule init && git submodule update
  2. Create build and log folders

    mkdir build
  3. Build project

    cd build
    cmake ..
    cmake --build . -- -j4

    If you see an error during the cmake .. command that Qt or one of the Qt modules could not be found, you can ignore this message as this dependency is optional.

Getting started

This project contains several build targets in the experiments/ folder. The main application for benchmarking is the benchmark executable that gets built in the bin/ folder in the project directory.

Running a benchmark

It is recommended to run the benchmarks from the Jupyter front-end.

Run jupyter lab from the project folder and navigate to the python/ directory where you can find several notebooks that can execute experiments and allow you to plot and analyze the benchmark results.

Alternatively, you have the option to manually run benchmarks via JSON configuration files that define which planners to execute, and many other settings concerning environments, steer functions, etc.

In the bin/ folder, start a benchmark via

./benchmark configuration.json

where configuration.json is any of the json files in the benchmarks/ folder.

Optionally, if multiple CPUs are available, multiple benchmarks can be run in parallel using GNU Parallel, e.g., via

parallel -k ./benchmark ::: ../benchmarks/corridor_radius_*

This command will execute the experiments with varying corridor sizes in parallel. For more information, consult the GNU Parallel tutorial.

This will eventually output a line similar to

Info:    Saved path statistics log file <...>

The resulting JSON log file can be used for visualizing the planning results and plotting the statistics. To get started, check out the Jupyter notebooks inside the python/ folder where all the plotting tools are provided.

Third-party libraries

This project uses forks from some of the following repositories:

Besides the above contributions, the authors thank Nathan Sturtevant's Moving AI Lab for providing the 2D Pathfinding "MovingAI" Datasets.

Developers

  • Eric Heiden (University of Southern California, Los Angeles, USA)
  • Luigi Palmieri (Robert Bosch GmbH, Corporate Research, Stuttgart, Germany)
  • Leonard Bruns (KTH Royal Institute of Technology, Stockholm, Sweden)
  • Ziang Liu (University of Southern California, Los Angeles, USA)

Citation

Please consider citing our corresponding article:

@article{heiden2021benchmr,
  author={Heiden, Eric and Palmieri, Luigi and Bruns, Leonard and Arras, Kai O. and Sukhatme, Gaurav S. and Koenig, Sven},
  journal={IEEE Robotics and Automation Letters}, 
  title={Bench-MR: A Motion Planning Benchmark for Wheeled Mobile Robots}, 
  year={2021},
  volume={6},
  number={3},
  pages={4536-4543},
  doi={10.1109/LRA.2021.3068913}}