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RVOS: End-to-End Recurrent Net for Video Object Segmentation

See our project website here.

In order to develop this code, we used RSIS (Recurrent Semantic Instance Segmentation), which can be found here, and modified it to suit it to video object segmentation task.

One shot visual results

RVOS One shot

Zero shot visual results

RVOS Zero shot

License

This code cannot be used for commercial purposes. Please contact the authors if interested in licensing this software.

Installation

git clone https://github.com/imatge-upc/rvos.git
pip3 install https://download.pytorch.org/whl/cu100/torch-1.0.1.post2-cp36-cp36m-linux_x86_64.whl
pip3 install torchvision

Data

YouTube-VOS

Download the YouTube-VOS dataset from their website. You will need to register to codalab to download the dataset. Create a folder named databasesin the parent folder of the root directory of this project and put there the database in a folder named YouTubeVOS. The root directory (rvosfolder) and the databases folder should be in the same directory.

The training of the RVOS model for YouTube-VOS has been implemented using a split of the train set into two subsets: train-train and train-val. The model is trained on the train-train subset and validated on the train-val subset to decide whether the model should be saved or not. To train the model according to this split, the code requires that there are two json files in the databases/YouTubeVOS/train/folder named train-train-meta.jsonand train-val-meta.json with the same format as the meta.jsonincluded when downloading the dataset. You can also download the partition used in our experiments in the following links:

DAVIS 2017

Download the DAVIS 2017 dataset from their website at 480p resolution. Create a folder named databasesin the parent folder of the root directory of this project and put there the database in a folder named DAVIS2017. The root directory (rvosfolder) and the databases folder should be in the same directory.

LMDB data indexing

To highly speed the data loading we recommend to generate an LMDB indexing of it by doing:

python dataset_lmdb_generator.py -dataset=youtube

or

python dataset_lmdb_generator.py -dataset=davis2017

depending on the dataset you are using.

Training

Evaluation

We provide bash scripts to evaluate models for the YouTube-VOS and DAVIS 2017 datasets. You can find them under the scripts folder. On the one hand, eval_one_shot_youtube.shand eval_zero_shot_youtube.sh generate the results for YouTube-VOS dataset on one-shot video object segmentation and zero-shot video object segmentation respectively. On the other hand, eval_one_shot_davis.shand eval_zero_shot_davis.sh generate the results for DAVIS 2017 dataset on one-shot video object segmentation and zero-shot video object segmentation respectively.

Furthermore, in the src folder, prepare_results_submission.pyand prepare_results_submission_davis can be applied to change the format of the results in the appropiate format to use the official evaluation servers of YouTube-VOS and DAVIS respectively.

Demo

You can run demo.py to do generate the segmentation masks of a video. Just do:

python demo.py -model_name one-shot-model-davis --overlay_masks

and it will generate the resulting masks.

To run the demo for your own videos:

  1. extract the frames to a folder (make sure their names are in order, e.g. 00000.jpg, 00001.jpg, ...)
  2. Have the initial mask corresponding to the first frame (e.g. 00000.png).
  3. run python demo.py -model_name one-shot-model-davis -frames_path path-to-your-frames -mask_path path-to-initial-mask --overlay_masks

to do it for zero-shot (i.e. without initial mask) run python demo.py -model_name zero-shot-model-davis -frames_path path-to-your-frames --zero_shot --overlay_masks

Also you can use the argument -results_path to save the results to the folder you prefer.

Pretrained models

Download weights for models trained with:

The same files are also available in this folder in Google Drive.

Extract and place the obtained folder under models directory. You can then run evaluation scripts with the downloaded model by setting args.model_name to the name of the folder.

Contact

For questions and suggestions use the issues section or send an e-mail to cventuraroy@uoc.edu