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Jamie Watson, Oisin Mac Aodha, Daniyar Turmukhambetov, Gabriel J. Brostow and Michael Firman – ECCV 2020 (Oral presentation)

Link to paper

2 minute ECCV presentation video link

10 minute ECCV presentation video link

Training data and results qualitative comparison

Supervised deep networks are among the best methods for finding correspondences in stereo image pairs. Like all supervised approaches, these networks require ground truth data during training. However, collecting large quantities of accurate dense correspondence data is very challenging. We propose that it is unnecessary to have such a high reliance on ground truth depths or even corresponding stereo pairs.

Overview of our stereo data generation approach

Inspired by recent progress in monocular depth estimation, we generate plausible disparity maps from single images. In turn, we use those flawed disparity maps in a carefully designed pipeline to generate stereo training pairs. Training in this manner makes it possible to convert any collection of single RGB images into stereo training data. This results in a significant reduction in human effort, with no need to collect real depths or to hand-design synthetic data. We can consequently train a stereo matching network from scratch on datasets like COCO, which were previously hard to exploit for stereo.

Depth maps produced by stereo networks trained with Sceneflow and our method

Through extensive experiments we show that our approach outperforms stereo networks trained with standard synthetic datasets, when evaluated on KITTI, ETH3D, and Middlebury.

Quantitative comparison of stereo networks trained with Sceneflow and our method

✏️ 📄 Citation

If you find our work useful or interesting, please consider citing our paper:

@inproceedings{watson-2020-stereo-from-mono,
 title   = {Learning Stereo from Single Images},
 author  = {Jamie Watson and
            Oisin Mac Aodha and
            Daniyar Turmukhambetov and
            Gabriel J. Brostow and
            Michael Firman
           },
 booktitle = {European Conference on Computer Vision ({ECCV})},
 year = {2020}
}

📊 Evaluation

We evaluate our performance on several datasets: KITTI (2015 and 2012), Middlebury (full resolution) and ETH3D (Low res two view). To run inference on these datasets first download them, and update paths_config.yaml to point to these locations.

Note that we report scores on the training sets of each dataset since we never see these images during training.

Run evaluation using:

CUDA_VISIBLE_DEVICES=X  python main.py \
  --mode inference \
  --load_path <downloaded_model_path> 

optionally setting --test_data_types and --save_disparities.

A trained model can be found HERE.

🎯 Training

To train a new model, you will need to download several datasets: ADE20K, DIODE, Depth in the Wild, Mapillary and COCO. After doing so, update paths_config.yaml to point to these directories.

Additionally you will need some precomputed monocular depth estimates for these images. We provide these for MiDaS: ADE20K, DIODE, Depth in the Wild, Mapillary and COCO. Download these and put them in the corresponding data paths (i.e. your paths specified in paths_config.yaml).

Now you can train a new model using:

CUDA_VISIBLE_DEVICES=X  python  main.py --mode train \
 --log_path <where_to_save_your_model> \
 --model_name <name_of_your_model>

Please see options.py for full list of training options.

👩‍⚖️ License

Copyright © Niantic, Inc. 2020. Patent Pending. All rights reserved. Please see the license file for terms.