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Official codes for paper: Stackelberg Driver Model for Continual Policy Improvement in Scenario-Based Closed-Loop Autonomous Driving

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SDM

SDM (Stackelberg Driver Model) (https://arxiv.org/abs/2309.14235) is a novel approach that aligns with the hierarchical nature of interactions between autonomous vehicle (AV) and background vehicles (BVs), facilitating AV performance improvement in a leader-follower order of play. We empirically demonstrate that AV and BV agents can both achieve better performance during the game with SDM. Essentially, SDM outperforms those competing baselines with simple adversarial training paradigms, non-game modeling and other game modeling approaches, especially in higher dimensional scenarios. SDM

Installation and Setups

Before getting started, first you should install SUMO properly following the sumo documentation.

Then, to install the dependencies, run the command:

conda env create -f environment.yml
conda activate SDM
pip install -e .

Then, download our pre-processed dataset from here, and unzip it using

unzip dataset.zip

Run Experiments

We run experiments on SDM, Non-Game, SimGM, NSD and I-SDM. To begin with, enter the folder Scripts:

cd Scripts

Then you can run SDM and baselines using following example commands.

Train AV and BV using SDM

python main_spg_ac_inv.py --r_ego stackelberg --r_adv stackelberg --is_save True --save_model True --adv_policy sumo --num_agents 5

If you want to run all ablation experiments (which is relatively time consuming), simply use

bash run.sh

Train AV and BV using NSG

python main_NSG.py --r_adv stackelberg3 --r_ego stackelberg --is_save True --save_model True --pretrain_ego True --adv_policy sumo --num_agents 5

Train AV and BV using SimGM

python main_SimGM.py --r_adv stackelberg2 --r_ego stackelberg --is_save True --save_model True --pretrain_ego True --adv_policy sumo --num_agents 5

Visualization of Learning Curves

You can resort to wandb to login your personal account with your wandb API key.

export WANDB_API_KEY=YOUR_WANDB_API_KEY

and using --used_wandb True to turn on the online syncronization.

Acknowledgement

Our codebase structure mainly derives from (Re)2H2O. Many thanks to them!

Citation

If you are using SDM framework or code for your project development, please cite the following paper:

@article{niu2023stackelberg,
  title={Stackelberg Driver Model for Continual Policy Improvement in Scenario-Based Closed-Loop Autonomous Driving},
  author={Niu, Haoyi and Chen, Qimao and Li, Yingyue and Zhang, Yi and Hu, Jianming},
  journal={NeurIPS Machine Learning for Autonomous Driving Symposium},
  year={2023}
}

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Official codes for paper: Stackelberg Driver Model for Continual Policy Improvement in Scenario-Based Closed-Loop Autonomous Driving

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