distracting_control
extends dm_control
with static or dynamic visual
distractions in the form of changing colors, backgrounds, and camera poses.
Details and experimental results can be found in our
paper.
- Clone this repository
sh run.sh
- Follow the instructions and install dm_control. Make sure you setup your MuJoCo keys correctly.
- Download the DAVIS 2017 dataset. Make sure to select the 2017 TrainVal - Images and Annotations (480p). The training images will be used as distracting backgrounds.
-
You can run the
distracting_control_demo
to generate sample images of the different tasks at different difficulties:python distracting_control_demo --davis_path=$HOME/DAVIS/JPEGImages/480p/ --output_dir=/tmp/distrtacting_control_demo
-
As seen from the demo to generate an instance of the environment you simply need to import the suite and use
suite.load
while specifying thedm_control
domain and task, then choosing a difficulty and providing the dataset_path. -
Note the environment follows the dm_control environment APIs.
If you use this code, please cite the accompanying paper as:
@article{stone2021distracting,
title={The Distracting Control Suite -- A Challenging Benchmark for Reinforcement Learning from Pixels},
author={Austin Stone and Oscar Ramirez and Kurt Konolige and Rico Jonschkowski},
year={2021},
journal={arXiv preprint arXiv:2101.02722},
}
This is not an official Google product.