Code accompanying the paper: AutoDispNet: Improving Disparity Estimation with AutoML (ICCV 2019). Parts of this codebase is inspired from DARTS.
Note: We provide deployment code only.
- tf 1.12
- Compile and install lmbspecialops.
- Install netdef_slim.
- Clone this repository.
-
Change your directory to the network directory (
autodispnet/nets
). -
Download pre-trained weights with
download_weights.sh
. Pre-trained weights are provided for networks trained on FlyingThings (CSS
,css
) and fine-tuned on KITTI (CSS-KITTI
).css
is a network with smaller memory footprint (see paper for details). -
Go to a network directory (Eg: autodispnet/nets/CSS) and use the following command to test the network on an image pair:
python3 controller.py eval image0_path image1_path out_dir
-
The output is stored in a binary format with
.float3
extension (Information on reading the output is here).
If you use the code or parts of it in your research, you should cite the aforementioned paper:
@InProceedings{SMB19,
author = "T. Saikia and Y. Marrakchi and A. Zela and F. Hutter and T. Brox",
title = "AutoDispNet: Improving Disparity Estimation With AutoML",
booktitle = "IEEE International Conference on Computer Vision (ICCV)",
month = "October",
year = "2019",
url = "http://lmb.informatik.uni-freiburg.de/Publications/2019/SMB19"
}
Tonmoy Saikia ([email protected])