SE(2)-Constrained Localization and Mapping by Fusing Odometry and Vision
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Fan Zheng, Hengbo Tang, Yun-Hui Liu. "Odometry-Vision-Based Ground Vehicle Motion Estimation With SE(2)-Constrained SE(3) Poses". IEEE Transactions on Cybernetics, vol. 49, no. 7, 2019
To cite it in bib:
@article{fzheng2018tcyb, author = {Fan Zheng and Hengbo Tang and Yun-Hui Liu}, journal = {IEEE Trans. Cybernetics}, title = "{Odometry-Vision-Based Ground Vehicle Motion Estimation With SE(2)-Constrained SE(3) Poses}", volume = {49}, number = {7}, year = {2019}, }
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ROS (tested on Kinetic/Melodic)
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OpenCV 2.4.x / 3.1 above
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g2o (2016 version)
Build this project as a ROS package
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Download DatasetRoom.zip, and extract it. In a terminal,
cd
intoDatasetRoom/
.We prepare two packages of odometry measurement data, one is more accurate (
odo_raw_accu.txt
), the other less accurate (odo_raw_roug.txt
). To use either one of them, copy it toodo_raw.txt
inDatasetRoom/
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Download ORBvoc.bin.
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Run rviz:
roscd se2clam rosrun rviz rviz -d rviz.rviz
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Run se2clam:
rosrun se2clam test_vn PATH_TO_DatasetRoom PATH_TO_ORBvoc.bin