Official implementation of "Learning Forward Dynamics Model and Informed Trajectory Sampler for Safe Quadruped Navigation" (RSS 2022)

Overview

Intro

Official implementation of "Learning Forward Dynamics Model and Informed Trajectory Sampler for Safe Quadruped Navigation" Robotics:Science and Systems (RSS 2022)

[Project page] [Paper]

Dependencies

Set conda environment

conda create -n quadruped_nav python=3.8
conda activate quadruped_nav

Install torch(1.10.1), numpy(1.21.2), matplotlib, scipy, ruamel.yaml

conda install pytorch==1.10.1 torchvision==0.11.2 torchaudio==0.10.1 cudatoolkit=11.3 -c pytorch -c conda-forge
conda install numpy=1.21.2
conda install matplotlib
conda install scipy
pip install ruamel.yaml

Install wandb and login. 'wandb' is a logging system similar to 'tensorboard'.

pip install wandb
wandb login

Install required python packages to compute Dynamic Time Warping in Parallel

pip install dtw-python
pip install fastdtw
pip install joblib

Install OMPL (Open Motion Planning Library). Python binding version of OMPL is used.

Download OMPL installation script in https://ompl.kavrakilab.org/installation.html.
chmod u+x install-ompl-ubuntu.sh
./install-ompl-ubuntu.sh --python

Simulator setup

RaiSim is used. Install it following the installation guide.

Then, set up RaisimGymTorch as following.

cd /RAISIM_DIRECTORY_PATH/raisimLib
git clone [email protected]:awesomericky/complex-env-navigation.git
cd complex-env-navigation
python setup.py develop

Path setup

Configure following paths. Parts that should be configured is set with TODO: PATH_SETUP_REQUIRED flag.

  1. Project directory
    • cfg['path']['home'] in /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/raisimGymTorch/env/envs/test/cfg.yaml
  2. OMPL Python binding
    • OMPL_PYBIND_PATH in /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/raisimGymTorch/env/envs/train/global_planner.py

Train model

Set logging: True in /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/raisimGymTorch/env/envs/train/cfg.yaml, if you want to enable wandb logging.

Train Forward Dynamics Model (FDM).

  • Click 'c' to continue when pdb stops the code
  • To quit the training, click 'Ctrl + c' to call pdb. Then click 'q'.
  • Path of the trained velocity command tracking controller should be given with -tw flag.
  • Evaluations of FDM are visualized in /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/trajectory_prediction_plot.
python raisimGymTorch/env/envs/train/FDM_train.py -tw /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/data/command_tracking_flat/final/full_16200.pt

Download data to train Informed Trajectory Sampler (386MB) [link]

# Unzip the downloaded zip file and move it to required path.
unzip analytic_planner_data.zip
mv analytic_planner_data /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/.

Train Informed Trajectory Sampler (ITS)

  • Click 'c' to continue when pdb stops the code.
  • To quit the training, click 'Ctrl + c' to call pdb. Then click 'q'.
  • Path of the trained Forward Dynamics Model should be given with -fw flag.
python raisimGymTorch/env/envs/train/ITS_train.py -fw /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/data/FDM_train/XXX/full_XXX.pt

Run demo

Configure the trained weight paths (cfg['path']['FDM'] and cfg['path']['ITS']) in /RAISIM_DIRECTORY_PATH/raisimLib/complex-env-navigation/raisimGymTorch/env/envs/test/cfg.yaml. Parts that should be configured is set with TODO: WEIGHT_PATH_SETUP_REQUIRED flag.

Open RaiSim Unity to see the visualized simulation.

Run point-goal navigation with trained weight (click 'c' to continue when pdb stops the code)

python raisimGymTorch/env/envs/test/pgn_runner.py

Run safety-remote control with trained weight (click 'c' to continue when pdb stops the code)

python raisimGymTorch/env/envs/test/src_runner.py

To quit running the demo, click 'Ctrl + c' to call pdb. Then click 'q'.

Extra notes

  • This repository is not maintained anymore. If you have a question, send an email to [email protected].
  • We don't take questions regarding installation. If you install the dependencies successfully, you can easily run this.
  • For the codes in rsc/, ANYbotics' license is applied. MIT license otherwise.
  • More details of the provided velocity command tracking controller for quadruped robots in flat terrain can be found in this paper and repository.

Cite

@INPROCEEDINGS{Kim-RSS-22, 
    AUTHOR    = {Yunho Kim AND Chanyoung Kim AND Jemin Hwangbo}, 
    TITLE     = {Learning Forward Dynamics Model and Informed Trajectory Sampler for Safe Quadruped Navigation}, 
    BOOKTITLE = {Proceedings of Robotics: Science and Systems}, 
    YEAR      = {2022}, 
    ADDRESS   = {New York, USA}, 
    MONTH     = {June}
} 
Owner
Yunho Kim
Yunho Kim
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