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Low drift 2D lidar slam with scan-to-scan match and scan-to-map match.

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1. slam2d

  • scan match
  • correspondence
  • scan-to-map match
  • map update

gif

1.1 scan-to-scan match

ICP/PLICP method is used for scan-to-scan match, and ceres is used as the nonlinear solver with point-to-line contraints.

1.2 correspondence

KNN method of pcl lib is used to find point correspondence

1.3 scan-to-map match

find local optimal with random search

1.4 map update

OpenCV function line and circle is used to update grid map.

slam2d

2. Building and Running

2.1 Building

cd catkin_ws/src
git clone git@github.com:libing64/slam2d.git
cd ..
catkin_make -DCATKIN_WHITELIST_PACKAGES="slam2d"

2.2 Running

soure devel/setup.bash
roslaunch slam2d slam2d.launch

play your rosbag

rosbag play youbag

cartographer dataset:

https://google-cartographer-ros.readthedocs.io/en/latest/data.html

rosgraph

2.3 Enviroment

  • Ubuntu20.04
  • ros noetic
  • OpenCV
  • pcl
  • Eigen
  • ceres

3. TODO

  • how to reduce the drift
  • how to improve the mapping accurcy
  • scan-to-map match
  • keyframe selection to reduce drift
  • dynamic range 2d map
  • search local optimal
  • record gif with byzana-record
  • sparse pose adjust
  • loop closure

4. Comparison of 2D SLAM

4.1 Hector SLAM

  • scan-to-scan match and scan-to-map match, Gaussian-Newton
  • need high rate scan data
  • 2.5D SLAM
  • multi-resolution map to avoid local minima

4.2 GMapping

  • Rao-Blackwellized Particle filter approach

4.3 Karto SLAM

  • graph-based approach
  • landmark based
  • Cholesky decomposition for solving sparse linar system
  • loop closure
  • sparse pose adjustment(just like bundle adjustment)

4.4 CoreSLAM

  • ros wrapper of tinySLAM(200 lines-of-code)
  • partical filter based approach

4.5 LagoSLAM

  • Graph optimization -> Linear approximation of Graph optimization
  • linear so no initial value needed

5. map comparision

6. Reference

  • An ICP variant using a point-to-line metric
  • A flexible and Scalable SLAM System with Full 3D motion Estimation
  • Real-Time Loop Closure in 2D LIDAR SLAM
  • Grid-based Scan-to-Map Matching for Accurate 2D Map Building

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Low drift 2D lidar slam with scan-to-scan match and scan-to-map match.

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