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Critic Guided Segmentation of Rewarding Objects in First-Person Views

Segmentation masks learned from sparse reward signal image

Figure: The trained Hourglass model segments different instances of rewarding objects (white and brown tree trunks). The left column shows the input images, the right column shows the masks created by the Hourglass model, and the middle column shows the overlay of the input images and the output masks. The Hourglass model was trained on the MineRLTreechop-v0 imitation learning dataset, without any label information, but only on the sparce reward signals provided by the environment.

Video & PDF

Video presentation: https://youtu.be/8by_5TKDvvE

arXiv: https://arxiv.org/abs/2107.09540

How to run our model

  1. Create a conda env with the fitting packages with conda create --name ENV_NAME --file requirements.txt -c conda-forge -c pytorch and activate the environment with conda activate ENV_NAME. Then install ffmpeg and minerl separatly with pip install ffmpeg gym==0.19.0 minerl==0.3.6.

  2. Train the model on the MineRLTreechop-v0 dataset. Training images and reward values are automatically downloaded the first time. The trained model is saved in FOLDER_MODEL.

    python main.py -train --model FOLDER_MODEL

  3. Process source images from FOLDER_SOURCE using a trained model from FOLDER_MODEL and save mask images (no flag) or concatenated images (flag -concatenated) [orig_rgb, mask] in FOLDER_RESULT. The RGB source images should have a resolution of 64x64. Grayscale mask images or concatenated images are stored in FOLDER_RESULT. The default output folder is results.

    python main.py -process --model FOLDER_MODEL --source-imgs FOLDER_SOURCE --mask-output-imgs FOLDER_RESULT

    python main.py -process -concatenated --model FOLDER_MODEL --source-imgs FOLDER_SOURCE --mask-output-imgs FOLDER_RESULT

    python main.py -process -concatenated --binarymaskthreshold 0.1 --model FOLDER_MODEL --source-imgs FOLDER_SOURCE --mask-output-imgs FOLDER_RESULT

    python main.py -process -concatenated -CRF --binarymaskthreshold 0.1 --model FOLDER_MODEL --source-imgs FOLDER_SOURCE --mask-output-imgs FOLDER_RESULT

  4. Reproduce the example evaluation video from the paper.

    python main.py -test --model FOLDER_MODEL --output-video FOLDER_VIDEO

  5. Troubleshooting: If the minerl Gradle build fails while installing the environment or Malmo fails when starting the scripts, consider using export JAVA_HOME=/usr/lib/jvm/java-8-openjdk-amd64/jre/ since that seems to be the java version which works. Also consider looking at the minerl installation page, note that we used minerl version 0.3.6 minerl==0.3.6

Citation

@inproceedings{melnik2021critic,
  title={Critic Guided Segmentation of Rewarding Objects in First-Person Views},
  author={Melnik, Andrew and Harter, Augustin and Limberg, Christian and Rana, Krishan and Sünderhauf, Niko and Ritter, Helge},
  booktitle={Proceedings of the German Conference on Artificial Intelligence},
  year={2021}
}

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Critic Guided Segmentation of Rewarding Objects in First-Person Views. Explanatory video:

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