Skip to content

PointNetGPD is an end-to-end grasp evaluation model to address the challenging problem of localizing robot grasp configurations directly from the point cloud.

License

Notifications You must be signed in to change notification settings

lianghongzhuo/PointNetGPD

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

67 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PointNetGPD: Detecting Grasp Configurations from Point Sets

PointNetGPD (ICRA 2019, arXiv) is an end-to-end grasp evaluation model to address the challenging problem of localizing robot grasp configurations directly from the point cloud.

PointNetGPD is light-weighted and can directly process the 3D point cloud that locates within the gripper for grasp evaluation. Taking the raw point cloud as input, our proposed grasp evaluation network can capture the complex geometric structure of the contact area between the gripper and the object even if the point cloud is very sparse.

To further improve our proposed model, we generate a larger-scale grasp dataset with 350k real point cloud and grasps with the YCB objects Dataset for training.

grasp_pipeline

Video

Video for PointNetGPD

Before Install

  • All the code should be installed in the following directory:
mkdir -p $HOME/code/
cd $HOME/code/
  • Set environment variable PointNetGPD_FOLDER in your $HOME/.bashrc file.
export PointNetGPD_FOLDER=$HOME/code/PointNetGPD

Install all the requirements (Using a virtual environment is recommended)

  1. Install pcl-tools via sudo apt install pcl-tools.

  2. An example for create a virtual environment: conda create -n pointnetgpd python=3.10 numpy ipython matplotlib opencv mayavi -c conda-forge

  3. Make sure in your Python environment do not have same package named meshpy or dexnet.

  4. Install PyTorch: https://pytorch.org/get-started/locally/

  5. Clone this repository:

    cd $HOME/code
    git clone https://github.com/lianghongzhuo/PointNetGPD.git
  6. Install our requirements in requirements.txt

    cd $PointNetGPD_FOLDER
    pip install -r requirements.txt
  7. Install our modified meshpy (Modify from Berkeley Automation Lab: meshpy)

    cd $PointNetGPD_FOLDER/meshpy
    python setup.py develop
  8. Install our modified dex-net (Modify from Berkeley Automation Lab: dex-net)

    cd $PointNetGPD_FOLDER/dex-net
    python setup.py develop
  9. Modify the gripper configurations to your own gripper

    vim $PointNetGPD_FOLDER/dex-net/data/grippers/robotiq_85/params.json

    These parameters are used for dataset generation:

    "min_width":
    "force_limit":
    "max_width":
    "finger_radius":
    "max_depth":

    These parameters are used for grasp pose generation at experiment:

    "finger_width":
    "real_finger_width":
    "hand_height":
    "hand_height_two_finger_side":
    "hand_outer_diameter":
    "hand_depth":
    "real_hand_depth":
    "init_bite":

Generated Grasp Dataset Download

Generate Your Own Grasp Dataset

  1. Download YCB object set from YCB Dataset. A command line tool for download ycb dataset can be found at: ycb-tools.
    cd $PointNetGPD_FOLDER/data
    git clone https://github.com/lianghongzhuo/ycb-tools
    cd ycb-tools
    python download_ycb_dataset.py rgbd_512
    # or
    python download_ycb_dataset.py google_16k
  2. Manage your dataset at: $PointNetGPD_FOLDER/PointNetGPD/data Every object should have a folder, structure like this:
    ├002_master_chef_can
    |└── google_512k
    |    ├── nontextured.obj (generated by pcl-tools)
    |    ├── nontextured.ply
    |    ├── nontextured.sdf (generated by SDFGen)
    |└── rgbd
    |    ├── *.jpg
    |    ├── *.h5
    |    ├── ...
    ├003_cracker_box
    └004_sugar_box
    ...
    
  3. Install SDFGen from GitHub:
    cd $PointNetGPD_FOLDER
    git clone https://github.com/jeffmahler/SDFGen.git
    cd SDFGen && mkdir build && cd build && cmake .. && make
  4. Install Open3D
    pip install open3d
  5. Generate nontextured.sdf file and nontextured.obj file using pcl-tools and SDFGen by running:
    cd $PointNetGPD_FOLDER/dex-net/apps
    python read_file_sdf.py
  6. Generate dataset by running the code:
    cd $PointNetGPD_FOLDER/dex-net/apps
    python generate-dataset-canny.py [prefix]
    where [prefix] is optional, it will add a prefix on the generated files.

Visualization tools

  • Visualization grasps

    cd $PointNetGPD_FOLDER/dex-net/apps
    python read_grasps_from_file.py

    Note:

    • This file will visualize the grasps in $PointNetGPD_FOLDER/PointNetGPD/data/ycb_grasp/ folder
  • Visualization object normal

    cd $PointNetGPD_FOLDER/dex-net/apps
    python Cal_norm.py

This code will check the norm calculated by meshpy and pcl library.

Training the network

  1. Data prepare:

    cd $PointNetGPD_FOLDER/PointNetGPD/data

    Make sure you have the following files, The links to the dataset directory should add by yourself:

    ├── google2cloud.csv  (Transform from google_ycb model to ycb_rgbd model)
    ├── google2cloud.pkl  (Transform from google_ycb model to ycb_rgbd model)
    └── ycb_grasp  (generated grasps)
    

    Generate point cloud from RGB-D image, you may change the number of process running in parallel if you use a shared host with others

    cd $PointNetGPD_FOLDER/PointNetGPD
    python ycb_cloud_generate.py

    Note: Estimated running time at our Intel(R) Xeon(R) CPU E5-2690 v4 @ 2.60GHz dual CPU with 56 Threads is 36 hours. Please also remove objects beyond the capacity of the gripper.

  2. Run the experiments:

    cd $PointNetGPD_FOLDER/PointNetGPD

    Launch a tensorboard for monitoring

    tensorboard --log-dir ./assets/log --port 8080

    and run an experiment for 200 epoch

    python main_1v.py --epoch 200 --mode train --batch-size x (x>=16)
    

    File name and corresponding experiment:

    main_1v.py        --- 1-viewed point cloud, 2 class
    main_1v_mc.py     --- 1-viewed point cloud, 3 class
    main_1v_gpd.py    --- 1-viewed point cloud, GPD
    main_fullv.py     --- Full point cloud, 2 class
    main_fullv_mc.py  --- Full point cloud, 3 class
    main_fullv_gpd.py --- Full point cloud, GPD
    

    For GPD experiments, you may change the input channel number by modifying input_chann in the experiment scripts(only 3 and 12 channels are available)

Using the trained network

  1. Get UR5 robot state:

    Goal of this step is to publish a ROS parameter tell the environment whether the UR5 robot is at home position or not.

    cd $PointNetGPD_FOLDER/dex-net/apps
    python get_ur5_robot_state.py
  2. Run perception code: This code will take depth camera ROS info as input, and gives a set of good grasp candidates as output. All the input, output messages are using ROS messages.

    cd $PointNetGPD_FOLDER/dex-net/apps
    python kinect2grasp.py
    arguments:
    -h, --help                 show this help message and exit
    --cuda                     using cuda for get the network result
    --gpu GPU                  set GPU number
    --load-model LOAD_MODEL    set witch model you want to use (rewrite by model_type, do not use this arg)
    --show_final_grasp         show final grasp using mayavi, only for debug, not working on multi processing
    --tray_grasp               not finished grasp type
    --using_mp                 using multi processing to sample grasps
    --model_type MODEL_TYPE    selet a model type from 3 existing models
    

Citation

If you found PointNetGPD useful in your research, please consider citing:

@inproceedings{liang2019pointnetgpd,
  title={{PointNetGPD}: Detecting Grasp Configurations from Point Sets},
  author={Liang, Hongzhuo and Ma, Xiaojian and Li, Shuang and G{\"o}rner, Michael and Tang, Song and Fang, Bin and Sun, Fuchun and Zhang, Jianwei},
  booktitle={IEEE International Conference on Robotics and Automation (ICRA)},
  year={2019}
}

Acknowledgement

About

PointNetGPD is an end-to-end grasp evaluation model to address the challenging problem of localizing robot grasp configurations directly from the point cloud.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages