This project provides a ROS package for localization of an autonomous vehicle. The localization is based on a map consisting of ORB features. The mapping and localization module is taken from the ORB-SLAM2 implementation. Our project builds on top of the ROS-enabled version. In this extensions the map of ORB-features be saved to the disk as a reference for future runs along the same track. At high speeds, a map-based localization, may be prefered over a full SLAM due to better localization accuracy and global positioning reference. The use-case for the presented system is a closed circuit racing scenario. In a first step, we create a map at low speeds with a full SLAM. In further runs at higher speeds, we localize on the previously saved map to increase the localization accuracy. The usage is demonstrated with an example from the KITTI dataset. The flow chart of the extended functionality is shown in Figure 1.
The system is tested on Ubuntu 16.04. The system is depended on the following libraries as used by the original ORB-SLAM2 implementation:
We use OpenCV to manipulate images and features. Dowload and install instructions can be found at: http://opencv.org. Required at leat 2.4.3. Tested with OpenCV 2.4.11 and OpenCV 3.2.
Required by g2o. Download and install instructions can be found at: http://eigen.tuxfamily.org. Required at least 3.1.0.
ROS is required with this extended version since it offers the ORB-SLAM2 functionality in form of a ROS package and uses topic broadcasts to publish information for the camera position as a TransformationFrame
, map points as PointCloud
and the tracking state as String
. Tested with ROS Kinetic Kame
The Map save/load extension uses the boost serialization library libboost_serialization
. Install via:
sudo apt install libboost-serialization-dev
Install the octomap ROS package via:
sudo apt-get install ros-kinetic-octomap ros-kinetic-octomap-mapping ros-kinetic-octomap-msgs ros-kinetic-octomap-ros ros-kinetic-octomap-rviz-plugins ros-kinetic-octomap-server
- Clone this repository in the src folder of a catkin workspace. For example:
cd catkin_ws/src
git clone https://gitlab.lrz.de/perception/orbslam-map-saving-extension
- Build the package
cd ..
catkin_make
- Source the workspace
source devel/setup.bash
- Extract the ORBVoc.txt file in orb_slam2_lib/Vocabulary
cd src/orbslam-map-saving-extension/orb_slam2_lib/Vocabulary
tar -xf ORBvoc.txt.tar.gz
- Transform the vocabulary file ORBvoc from
.txt
to.bin
for faster loading
./bin_vocabulary
We demonstrate the usage of the package with example data from the KITTI dataset. This example consists of four steps. 1 - Download and convert Kitti data to compatible format 2 - Save an ORB feature map of the Kitti data 3 - Load the ORB map and perform localization at higher speeds. 4 - Visualize the mapping and localization trajectories:
- Install kitti2bag for transforming RAW Kitti data to ROS bags.
pip install kitti2bag
- Download the synced+rectified and calibration data of a KITTI RAW sequence. We choose the data 2011_09_30_drive_0027 of the Residential category:
$ wget https://s3.eu-central-1.amazonaws.com/avg-kitti/raw_data/2011_09_30_drive_0027/2011_09_30_drive_0027_sync.zip
$ wget https://s3.eu-central-1.amazonaws.com/avg-kitti/raw_data/2011_09_30_calib.zip
$ unzip 2011_09_30_drive_0027_sync.zip
$ unzip 2011_09_30_calib.zip
- Transform the RAW data to a ROS bag
kitti2bag -t 2011_09_30 -r 0027 raw_synced
The rosbag should be located at $(env HOME)/datasets/KITTI/kitti_2011_09_30_drive_0027_synced.bag
to smoothly follow the example.
Befor you launch the SLAM system, make sure the corresponding ROS workspace is sourced:
source devel/setup.bash
The SLAM is then started via:
roslaunch orb_slam2_ros orb_slam_kitti_from_bag.launch
After starting the launch file, the ORB vocabulary is loaded. Press the SPACE key to start the replay of the bag file and the mapping process.
When the bag data replay is finished, press Ctrl-C to shutdown the system and the map saving process is executed. The resulting ORB map file map.bin
is saved in the current ros workspace at: catkin_ws/devel/lib/orb_slam2_ros/
. The SLAM trajectory frame data FrameTrajectory_TUM_Format.txt
is saved in the same folder.
Rename the trajectory frame data file to slam_FrameTrajectory_TUM_Format.txt
, so it is not overwritten in the consecutive localization run.
Optional:
Change the data path in the launch file to match the bagfile location on your system. The default data path in the launch file is:
$(env HOME)/datasets/KITTI/kitti_2011_09_30_drive_0027_synced.bag
The default ORB-SLAM settings file is configured to work with the KITTI example bag file. The mapping from the setting file numbers to futher KITTI sequences can be found in the Readme.
The map loading and saving settings are found at the bottom of the ORB settings file. Edit the ORB settings file at orbslam-map-saving-extension/orb_slam2_ros/settings/KITTI04-12.yaml
by setting Map.load_map: 1
to load the previously created map when the system is initialized. Additionally deactivate the map saving: Map.save_map: 0
.
In the ROS launch file, we set the replay speed of the rosbag to 2x by changing -r 1
to -r 2
to simulate a faster run for the localization on the example data.
Now, re-run the launch file to start the localiation run:
roslaunch orb_slam2_ros orb_slam_kitti_from_bag.launch
The command line output confirms the successful loading of the map file map.bin
. Press the SPACE key to start the replay of the bag file and the localization process.
When the bag data replay is finished, press Ctrl-C to shutdown the system. Now only the trajectory files are saved.
Rename the trajectory frame data to localization_FrameTrajectory_TUM_Format.txt
, so it is not overwritten in consecutive localization runs.
For the visualization additional packages are needed:
pip install matplotlib
pip install evo
To visualize the trajectories of the SLAM and localization runs, a basic plotting script is provided in the main folder. For the example, simply run
python example_trajectory_plots.py
The ouput should be as follows:
We see that the localization visually matches with the mapping trajectory even at higher speeds. Note: If you run the example bag with 2x speed in SLAM mode, the mapping process will eventually fail due to failed feature matching.
During the SLAM or localization process you can visualize the matching of the ORB features. Therefore start rqt_image_view
and listen to the
/orb_slam2/frame
topic. An example frame output for the localization mode is shown here:
The following table maps the setting file number to the name, start frame and end frame of each sequence that has been used to extract the visual odometry / SLAM training set:
Nr. Sequence name Start End
---------------------------------------
00: 2011_10_03_drive_0027 000000 004540
01: 2011_10_03_drive_0042 000000 001100
02: 2011_10_03_drive_0034 000000 004660
03: 2011_09_26_drive_0067 000000 000800
04: 2011_09_30_drive_0016 000000 000270
05: 2011_09_30_drive_0018 000000 002760
06: 2011_09_30_drive_0020 000000 001100
07: 2011_09_30_drive_0027 000000 001100
08: 2011_09_30_drive_0028 001100 005170
09: 2011_09_30_drive_0033 000000 001590
10: 2011_09_30_drive_0034 000000 001200
Based on this table, for the example sequence 2011_09_30_drive_0027, the settings file KITTI04-12.yaml is the correct one.
This implementation is created during the Interdisciplinary Project (IDP) of Odysseas Papanikolaou at the Institute of Automotive Technology of the Technical University of Munich. Contact: [email protected]
If you find our work useful in your research, please consider citing:
@INPROCEEDINGS{nobis20loc,
author={Felix Nobis, Odysseas Papanikolaou, Johannes Betz and Markus Lienkamp},
title={Persistent Map Saving for Visual Localization for Autonomous Vehicles: An ORB-SLAM\,2 Extension},
booktitle={2020 Fifteenth International Conference on Ecological Vehicles and Renewable Energies (EVER)},
year={2020}
}