Skip to content

TensorFlow implementation of the CVPR 2018 spotlight paper, Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs

License

Notifications You must be signed in to change notification settings

mikesager/Deep-Photo-Enhancer

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

19 Commits
 
 
 
 
 
 

Repository files navigation

Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs

TensorFlow implementation of the CVPR 2018 spotlight paper, Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs. If you use any code or data from our work, please cite our paper.

[Update Jun. 05, 2019] Rename Model script

I add the rename_model.py to the download link below.

[Update Mar. 31, 2019] Inference Models (Supervsied and Unsupervised).

Download link: here. The code is exactly the same I used in my demo website. (Sorry, I do not have time to polish it...) Simplified tutorial: Using the function getInputPhoto and processImg in the TF.py

[Update Dec. 18, 2018] Data and Code (Supervsied and Unsupervised).

There are too many people asked me to release the code even the code is not polished and is ugly as me. Therefore, I put my ugly code and the data here. I also provide the supervised code. There are a lot of unnecessary parts in the code. I will refactor the code ASAP. Regarding the data, I put the name of the images we used on MIT-Adobe FiveK dataset. I directly used Lightroom to decode the images to TIF format and used Lightroom to resize the long side of the images to 512 resolution (The label images are from retoucher C). I am not sure whether I have right to release the HDR dataset we collected from Flickr so I put the ID of them. You can download the images according to the IDs. (The code was run on 0.12 version of TensorFlow. The A-WGAN part in the code did not implement decreasing the lambda since the initial lambda was relatively small in that case.)

Some useful issues: #6, #16, #18, #24, #27, #38, #39

Results

Method Description
Label Retouched by photographer from MIT-Adobe 5K dataset [1]
Our (HDR) Our model trained on our HDR dataset with unpaired data
Our (SL) Our model trained on MIT-Adobe 5K dataset with paired data (supervised learning)
Our (UL) Our model trained on MIT-Adobe 5K dataset with unpaired data
CycleGAN (HDR) CycleGAN's model [2] trained on our HDR dataset with unpaired data
DPED_device DPED's model [3] trained on a specified device with paired data (supervised learning)
CLHE Heuristic method from [4]
NPEA Heuristic method from [5]
FLLF Heuristic method from [6]

Input Label Our (HDR)
Our (SL) Our (UL) CycleGAN (HDR)
DPED_iPhone6 DPED_iPhone7 DPED_Nexus5x
CLHE NPEA FLLF
Input (MIT-Adobe) Our (HDR) DPED_iPhone7 CLHE
Input (Internet) Our (HDR) DPED_iPhone7 CLHE

User study

Preference Matrix
(20 participants and 20 images using pairwise comparisons)
CycleGAN DPED NPEA CLHE Ours Total
CycleGAN - 32 27 23 11 93
DPED 368 - 141 119 29 657
NPEA 373 259 - 142 50 824
CLHE 377 281 258 - 77 993
Ours 389 371 350 323 - 1433
Our model trained on HDR images ranked the first and CLHE was the runner-up. When comparing our model with CLHE, 81% of users (323 among 400) preferred our results.

Other applications of global U-Net, A-WGAN and iBN

This paper proposes three improvements: global U-Net, adaptive WGAN (A-WGAN) and individual batch normalization (iBN). They generally improve results; and for some applications, the improvement is sufficient for crossing the bar and leading to success. We have applied them to some other applications.

Input Ground truth global U-Net U-Net
For global U-Net, we applied it to trimap segmentation for pets using the Oxford-IIIT Pet dataset. The accuracies of U-Net and global U-Net are 0.8759 and 0.8905 respectively.
λ = 0.1 λ = 10 λ = 1000
WGAN-GP
A-WGAN
With different λ values, WGAN-GP could succeed or fail. The proposed A-WGAN is less dependent with λ and succeeded with all three λ values.
Male -> Female Female -> Male
Input with iBN w/o iBN Input with iBN w/o iBN
We applied the 2-way GAN to gender change of face images. As shown in the figure, the 2-way GAN failed on the task but succeeded after employing the proposed iBN.

Architecture

Generator
Discriminator
1-way GAN 2-way GAN

Publication

Yu-Sheng Chen, Yu-Ching Wang, Man-Hsin Kao and Yung-Yu Chuang.

National Taiwan University

Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs. Proceedings of IEEE International Conference on Computer Vision and Pattern Recognition 2018 (CVPR 2018), to appear, June 2018, Salt Lake City, USA.

Citation

@INPROCEEDINGS{Chen:2018:DPE,
	AUTHOR    = {Yu-Sheng Chen and Yu-Ching Wang and Man-Hsin Kao and Yung-Yu Chuang},
	TITLE     = {Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs},
	YEAR      = {2018},
	MONTH     = {June},
	BOOKTITLE = {Proceedings of IEEE International Conference on Computer Vision and Pattern Recognition (CVPR 2018)},
	PAGES     = {6306--6314},
	LOCATION  = {Salt Lake City},
}

Reference

  1. Bychkovsky, V., Paris, S., Chan, E., Durand, F.: Learning photographic global tonal adjustment with a database of input/output image pairs. In: Proceedings of the 2011 IEEE Conference on Computer Vision and Pattern Recognition. pp. 97-104. CVPR'11 (2011)
  2. Zhu, J. Y., Park, T., Isola, P., Efros, A. A.: Unpaired image-to-image translation using cycle-consistent adversarial networks. In: Proceedings of the 2017 IEEE International Conference on Computer Vision. pp. 2242-2251. ICCV'17 (2017)
  3. Ignatov, A., Kobyshev, N., Vanhoey, K., Timofte, R., Van Gool, L.: DSLR-quality photos on mobile devices with deep convolutional networks. In: Proceedings of the 2017 IEEE International Conference on Computer Vision. pp. 3277-3285. ICCV'17 (2017)
  4. Wang, S., Cho, W., Jang, J., Abidi, M. A., Paik, J.: Contrast-dependent saturation adjustment for outdoor image enhancement. JOSA A. pp. 2532-2542. (2017)
  5. Wang, S., Zheng, J., Hu, H. M., Li, B.: Naturalness preserved enhancement algorithm for non-uniform illumination images. IEEE Transactions on Image Processing. pp. 3538-3548. TIP'13 (2013)
  6. Aubry, M., Paris, S., Hasinoff, S. W., Kautz, J., Durand, F.: Fast local laplacian filters: Theory and applications. ACM Transactions on Graphics. Article 167. TOG'14 (2014)

Contact

Feel free to contact me if there is any questions (Yu-Sheng Chen [email protected]).

About

TensorFlow implementation of the CVPR 2018 spotlight paper, Deep Photo Enhancer: Unpaired Learning for Image Enhancement from Photographs with GANs

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published