This package builds a semantic 3D grid map using stereo or RGBD input. It is suitable for large scale online mapping. The grid semantic label is optimized through hierarchical CRF.
Authors: Shichao Yang, Yulan Huang
Related Paper:
- Semantic 3D Occupancy Mapping through Efficient High Order CRFs, IROS 2017, S. Yang, Y. Huang, S. Scherer PDF
This code contains several ros packages. We have test in ROS indigo/kinect. Create or use existing a ros workspace.
mkdir -p ~/mapping_3d/src
cd ~/mapping_3d/src
catkin_init_workspace
git clone [email protected]:shichaoy/semantic_3d_mapping.git
cd semantic_3d_mapping/grid_sensor
sh download_data.sh
if the download link breaks, please download here and follow sh file to process it. Will fix it later.
If wget
not installed, sudo apt-get install wget
cd ~/mapping_3d
catkin_make
source devel/setup.bash
roslaunch grid_sensor grid_imgs.launch
You will see point cloud in Rviz. It also projects 3D grid onto 2D image for evaluation, stored at grid_sensor/dataset/crf_3d_reproj
.
-
Some mode parameters can be changed in
grid_sensor/params/kitti_crf_3d.yaml
andgrid_imgs.launch
if
use_crf_optimize = false
, no 3D CRF optimization, 2D label is directly transferred to 3D.if
use_crf_optimize = true, use_high_order = false
dense 3D CRF optimization runs.if
use_crf_optimize = true, use_high_order = true
High order 3D CRF optimization runs. Superpixel data needs to be provided -
This package only contains grid mapping, all the pre-processing steps are not included. See
preprocess_data/README.md
for details.Elas is used for computing dense disparity/depth. Dilation CNN is used for 2D semantic segmentation.
SLIC is used for generating superpixel. ORB SLAM is used to estimate camera pose.
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If Grid sensor memory is not initialized properly, delete
/dev/shm/sem.shared_grid_map...
-
Our used ground truth image annotations are in
preprocess_data/gt_label/
Refer to paper experiments for more details.