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Mask Selection and Propagation for Unsupervised Video Object Segmentation

Introduction

[WACV] [CVPRW]

Prerequisites

pytorch >= 1.4

python 3.6

Inferencing

To run the code you will be needing masks from Mask R-CNN and DAVIS dataset. The pre-trained weights of STM can be downloaded from here and selector_net from here. The output masks of Mask R-CNN should be numbered sequentially starting from 0 representing background. Select top 10 masks from the masks whose confidence score is more than 0.1.

  1. Place the masks in path_to_data_dir/Annotations/480p and the DAVIS frames in path_to_data_dir/JPEGImages/480p.
  2. Place the downloaded weights of STM and selecto_net in checkpoint folder. There are 3 parts of the method criterion 1, criteria 2, stage 3.
  3. Evaluate using criterion 1 by executing run.sh(change the datapath).
  4. Change the python script name in run.sh to eval_DAVIS_crit2.py to evaluate using criterion 2.
  5. Finally, run eval_stage_3.py using command below by giving relavent paths of masks generated using criterion 1 and criterion 2.
python eval_stage_3.py -m1 results/STM_DAVIS_2019challenge -m2 results/STM_DAVIS_2019challenge2/ -r data/DAVIS/JPEGImages/480p/ -f set_file.txt

Note

Selector net has been trained using Mask R-CNN outputs and the output masks of Mask R-CNN can highly vary depending on various implementations and even different hyperparameter in the same implementation. Hence, to get the true results of the method it is desirable to train the selector_net using the object detection and segmentation network that you are using. Training selector_net should not take more than 1hr. Training details are given below.

To run the code on other datasets, change the structure of datafiles to that of DAVIS dataset then the same scripts can be used.

Training

The training dataset needs to generated using DAVIS TrainVal before training selector net. Follow the steps to generate dataset

  1. Generate masks using Mask R-CNN for each frames in the dataset.

  2. Generate masks using vanilla STM for each frames in the dataset.

    a) Pass the ground truth frame as first frame

    b) Use ground truth frames instead of criterion1/2 to compare Mask R-CNN ouput and STM output and then propogate frames.

    c) The scripts eval_DAVIS_crit1.py can be used by replacing the selection criterion as explained b).

  3. Use the hungarian algorithm to assign the generated masks to the corresponding ground truth in the dataset(similar to this code)

Run the following script

python train.py --train_dataset_path #path_to_davis_data --maskrcnn_dataset_path #path_to_maskrcnn_masks --stm_dataset_path #path_to_STM_masks

Precomputed Results

The pre-computed for DAVIS 2019 dev unsupervised dataset coloured results after stage 3 can be found here

Citations

Please cite the following papers if the work was helpful.

@inproceedings{garg2021mask,
  title={Mask Selection and Propagation for Unsupervised Video Object Segmentation},
  author={Garg, Shubhika and Goel, Vidit},
  booktitle={Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision},
  pages={1680--1690},
  year={2021}
}
@article{DAVIS2020-Unsupervised-1st,
              author = {S. Garg, V. Goel, S. Kumar},
              title = {Unsupervised Video Object Segmentation using Online Mask Selection and Space-time Memory Networks},
              journal = {The 2020 DAVIS Challenge on Video Object Segmentation - CVPR Workshops},
              year = {2020}
}

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Winning team in DAVIS, CVPR 2020 on challenge dataset in unsupervised scenario

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