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MarioNette | Webpage | Paper | Video

MarioNette

MarioNette: Self-Supervised Sprite Learning
Dmitriy Smirnov, Michaël Gharbi, Matthew Fisher, Vitor Guizilini, Alexei A. Efros, Justin Solomon
NeurIPS 2021

Set-up

To install the neecssary dependencies, run:

conda env create -f environment.yml
conda activate MarioNette

Also, be sure to execute export PYTHONPATH=:$PYTHONPATH prior to running any of the scripts.

Training

To train a MarioNette model, run:

python scripts/train.py --checkpoint_dir out_dir --data data_dir

Your dataset should be stored in data_dir, with each input frame named #.png. If the images are not 128x128 pixels, specify the resolution using the --canvas_size flag. Optionally, pass a --layer_size flag to specify the anchor grid resolution, --num_layers to specify the number of layers, or --num_classes to specify the size of the spirte dictionary.

To monitor the training, launch a TensorBoard instance with --logdir out_dir.

BibTeX

@article{smirnov2021marionette,
  title={{MarioNette}: Self-Supervised Sprite Learning},
  author={Smirnov, Dmitriy and Gharbi, Michael and Fisher, Matthew and Guizilini, Vitor and Efros, Alexei A. and Solomon, Justin},
  year={2021},
  journal={Conference on Neural Information Processing Systems}
}

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marionette's Issues

Game datasets used in the paper?

Hi, Dmitriy,

Congrats on the nice work !!!
Could you share the game datasets used in the paper? (Fighting Hero (one level, 5,330 frames); Nintendo Super Mario Bros. (one level, 2,220 frames) and ATARI Space Invaders (5,000 frames))

Best,

Xi

Guidance with SpaceInvaders

Hi folks,

I trained MarioNette with a data set of 2^15 128x128 scenes of SpaceInvaders, but only the background is reconstructed. Do you have some ideas, about which kind of parameters I should modify to reach the results described in the paper?

image

image

Thanks a lot for your insights!

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