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FetchBench Benchmark Environments

About this repository

This repository contains Isaac-Gym environments for the FetchBench benchmark (https://arxiv.org/abs/2406.11793) .

To clone the project

git clone --recursive [email protected]:princeton-vl/FetchBench-CORL2024.git

1. Installation

Please follow the steps below to perform the installation:

Create Virtual Env

We suggest using python=3.8 and numpy=1.23.5.

conda create -n FetchBench python=3.8 numpy=1.23.5
conda activate FetchBench

Install Pytorch

We suggest using pytorch=1.13.0. Please ref: https://pytorch.org/get-started/previous-versions/ .

conda install pytorch==1.13.0 torchvision==0.14.0 torchaudio==0.13.0 pytorch-cuda=11.7 -c pytorch -c nvidia

Install Python Dependencies

pip install -r requirement.txt

Download Assets

Please download environment asset (asset_release.zip) from https://drive.google.com/file/d/1DJwa6lDaGN5_NhjL7liOBOGBWRJHowyB/view?usp=sharing.

The assets include procedural assets generated from Infinigen (https://github.com/princeton-vl/infinigen) and third-party asset from Acronym dataset (https://github.com/NVlabs/acronym, The dataset is released under CC BY-NC 4.0.).

Install Thirdy-party Packages

Download third_party files (3rd_parties.zip) from https://drive.google.com/file/d/1LbtApHYUcOByw5odPebwcUG71J_tolgy/view?usp=sharing and put it under FetchBench/ . The packages under thirdy_party contain third-party codes from the following sources.

Install Isaac-Gym

We provide a copy of IsaacGym 4.0.0 (https://developer.nvidia.com/isaac-gym/download).

cd third_party/isaac-gym/python
pip install -e .

Install Curobo

We provide an adapted version of CuRobo 0.6.2 (https://curobo.org/).

cd third_party/curobo
pip install -e . --no-build-isolation

For cuda version mismatch issue, one can install the cudatoolkit-dev as follows

conda install conda-forge::cudatoolkit-dev

(Optional) Install Contact-GraspNet-Pytorch

If you want to run methods using contact-graspnet, we provide a copy of contact-graspnet-pytorch (https://github.com/elchun/contact_graspnet_pytorch).

cd third_party/contact_graspnet_pytorch
pip install -e .

(Optional) Install OMPL Packages

If you want to run methods using ompl motion planning packages, please follow the step in (https://github.com/lyfkyle/pybullet_ompl?tab=readme-ov-file), and add the ompl python-bindings to the conda environment.

(Optional) Install Cabinet and SceneCollisionNet

If you want to run methods using cabinet, we provide a copy of scenecollisionnet (https://github.com/NVlabs/SceneCollisionNet) and cabinet (https://github.com/NVlabs/cabi_net).

conda install pytorch-scatter -c pyg
cd third_party/SceneCollisionNet
pip install -e .
cd third_party/cabinet
pip install -e .
cd third_party/cabinet/pointnet2
pip install -e .

(Optional) Download Imitation Learning Models

If you want to run imitation learning models, please download the checkpoints (imit_ckpts.zip) from (https://drive.google.com/file/d/1wN9rDux3xXzcazWpbtYOi0Pe_240eDyu/view?usp=sharing).

FAQ:

  1. What if I want to test some baselines but do not want to install other additional packages, e.g., OMPL?

One can modify the code in InfiniGym/isaacgymenvs/tasks/init.py to comment out the corresponding methods' import to prevent explicitly loading these uninstalled packages. For example, if one does not install OMPL python-bindings, one should comment out all methods with Pyompl keywords. In this way, one can still test other methods with cabinet or contact-graspnet-pytorch.

2. Run

Add Env variables.

Please add the ASSET_PATH environment variable to specify the path to the asset directory.

export ASSET_PATH=/path/to/the/assets

Minimal installation Test

For minimal installation of isaacgym and curobo, one can run:

cd InfiniGym

python isaacgymenvs/eval.py task=FetchMeshCurobo scene=benchmark_eval/RigidObjDesk_0

Benchmark Test

The overall command to test each method is

python isaacgymenvs/eval.py task=${METHOD} scene=bechmark_eval/${TASK} task.solution.XXX=YYY (Overwrite configs)...

The list of ${METHOD} is shown in isaacgymenvs/config/task and the list of benchmark ${TASK} are shown in isaacgymenvs/config/scene/benchmark_eval .

To be specific, to run the imitation learning models with a specific checkpoint, run:

python isaacgymenvs/eval.py task=FetchPtdImit${TYPE} scene=${TASK} task.solution.ckpt_path=/path/to/checkpoint/folder

where ${TYPE} in {E2E, TwoStage, CuroboCGN}.

Reference Code

  1. We provide reference code to generate infinite training tasks in InfiniGym/isaacgymenvs/tasks/fetch/infini_scene/infini_scenes.py.

  2. We provide reference code to generate infinite expert fetching trajectories in InfiniGym/isaacgymenvs/data_gen.py and InfiniGym/isaacgymenvs/tasks/fetch/fetch_mesh_curobo_datagen.py .

  3. We provide reference code to train the imitation learning models in InfiniGym/isaacgymenvs/train_imit.py. The code submodule (https://github.com/princeton-vl/FetchBench-Imit.git) is adapted from Optimus (https://github.com/NVlabs/Optimus?tab=readme-ov-file) under Nvidia License.

  4. We provide reference code to summarize the results of all benchmark tasks in InfiniGym/isaacgymenvs/result.py .

  5. We will release the baseline dataset and the data generation pipeline soon. Please contact us if you would like to have these asap.

Citing

If you find our code useful, please cite:

@article{han2024fetchbench,
  title={FetchBench: A Simulation Benchmark for Robot Fetching},
  author={Han, Beining and Parakh, Meenal and Geng, Derek and Defay, Jack A and Gan, Luyang and Deng, Jia},
  journal={arXiv preprint arXiv:2406.11793},
  year={2024}
}