You can download/install MAD-ICP using pip
pip install mad-icp
We provide a Python launcher for Rosbag1, Rosbag2, and KITTI binary formats. The dataset configuration is important for the sensor characteristics and extrinsic information (typically, ground truths are not expressed in the LiDAR frame). In configurations/datasets/dataset_configurations.py
we provide configurations for many datasets.
The internal parameters (used by default) are stored in configurations/mad_params.py
. All the experiments have been run with this same set.
You can specify a new set in configurations/mad_params.py
and use it with the option --mad-icp-params
.
Both the options --dataset-config
and --mad-icp-params
also accept .cfg
files like those in configurations
.
To run the pipeline, choose the appropriate dataset configuration (kitti
for this example) and type:
mad_icp --data-path /input_dir/ \
--estimate-path /output_dir/ \
--dataset-config kitti
Our runner directly saves the odometry estimate file in KITTI format (homogenous matrix row-major 12 scalars); soon, we will provide more available formats like TUM.
Our pipeline is anytime realtime
! You can play with parameters num_keyframes
and num_cores
and, if you have enough computation capacity, we suggest increasing these (we run demo/experiments with num_keyframes=16
and num_cores=16
).
If you want to use our MAD-tree to perform nearest neighbor or use MAD-ICP to perform registration between two point clouds, here few easy examples.
Building is tested by our CI/CD pipeline for Ubuntu 20.04 and Ubuntu 22.04 (using g++).
The following external dependencies are required.
Dependency | Version(s) known to work |
---|---|
Eigen | 3.3 |
OpenMP | |
pybind11 | |
yaml (optional for C++ apps) |
If your system lacks any dependency (except for OpenMP
) we download local copies using FetchContent
.
If you want to build and install the package, assuming you're inside the repository, you can use pip
as follows:
pip install .
Moreover, you can build the C++ library (along with the pybinds) by typing:
mkdir build && cd build && cmake ../mad_icp && make -j
If you want to avoid Python, we provide the bin_runner
C++ executable (located in mad_icp/apps/cpp_runners/bin_runner.cpp
) that accepts binary cloud format (KITTI, Mulran, etc.).
You can build the executable using
mkdir build && cd build && cmake -DCOMPILE_CPP_APPS=ON ../mad_icp && make -j
And run
cd build/apps/cpp_runners
./bin_runner -data_path /path_to_bag_folder/ \
-estimate_path /path_to_estimate_folder/ \
-dataset_config ../../../mad_icp/configurations/datasets/kitti.cfg \
-mad_icp_config ../../../mad_icp/configurations/default.cfg
Important
If running on the KITTI dataset, enable the flag -kitti
for KITTI scan correction (not documented anywhere). We do not (currently) provide a viewer for this executable.
- ROS/ROS2 optional dependencies
If you use any of this code, please cite our paper:
@article{ferrari2024mad,
title={MAD-ICP: It Is All About Matching Data--Robust and Informed LiDAR Odometry},
author={Ferrari, Simone and Di Giammarino, Luca and Brizi, Leonardo and Grisetti, Giorgio},
journal={IEEE Robotics and Automation Letters},
year={2024},
doi={10.1109/LRA.2024.3456509}
}