Code for Dual Contrastive Learning for Unsupervised Image-to-Image Translation, NTIRE, CVPRW 2021.

Overview

arXiv

Dual Contrastive Learning Adversarial Generative Networks (DCLGAN)

We provide our PyTorch implementation of DCLGAN, which is a simple yet powerful model for unsupervised Image-to-image translation. Compared to CycleGAN, DCLGAN performs geometry changes with more realistic results. Compared to CUT, DCLGAN is usually more robust and achieves better performance. A viriant, SimDCL (Similarity DCLGAN) also avoids mode collapse using a new similarity loss.

DCLGAN is a general model performing all kinds of Image-to-Image translation tasks. It achieves SOTA performances in most tasks that we have tested.

Dual Contrastive Learning for Unsupervised Image-to-Image Translation
Junlin Han, Mehrdad Shoeiby, Lars Petersson, Mohammad Ali Armin
DATA61-CSIRO and Australian National University
In NTIRE, CVPRW 2021.

Our pipeline is quite straightforward. The main idea is a dual setting with two encoders to capture the variability in two distinctive domains.

Example Results

Unpaired Image-to-Image Translation

Qualitative results:

Quantitative results:

More visual results:

Prerequisites

Python 3.6 or above.

For packages, see requirements.txt.

Getting started

  • Clone this repo:
git clone https://github.com/JunlinHan/DCLGAN.git
  • Install PyTorch 1.4 or above and other dependencies (e.g., torchvision, visdom, dominate, gputil).

    For pip users, please type the command pip install -r requirements.txt.

    For Conda users, you can create a new Conda environment using conda env create -f environment.yml.

DCLGAN and SimDCL Training and Test

  • Download the grumpifycat dataset
bash ./datasets/download_cut_dataset.sh grumpifycat

The dataset is downloaded and unzipped at ./datasets/grumpifycat/.

  • To view training results and loss plots, run python -m visdom.server and click the URL http://localhost:8097.

Train the DCL model:

python train.py --dataroot ./datasets/grumpifycat --name grumpycat_DCL 

Or train the SimDCL model:

python train.py --dataroot ./datasets/grumpifycat --name grumpycat_SimDCL --model simdcl

We also support CUT:

python train.py --dataroot ./datasets/grumpifycat --name grumpycat_cut --model cut

and fastCUT:

python train.py --dataroot ./datasets/grumpifycat --name grumpycat_fastcut --model fastcut

and CycleGAN:

python train.py --dataroot ./datasets/grumpifycat --name grumpycat_cyclegan --model cycle_gan

The checkpoints will be stored at ./checkpoints/grumpycat_DCL/.

  • Test the DCL model:
python test.py --dataroot ./datasets/grumpifycat --name grumpycat_DCL

The test results will be saved to an html file here: ./results/grumpycat_DCL/latest_test/.

DCLGAN, SimDCL, CUT and CycleGAN

DCLGAN is a more robust unsupervised image-to-image translation model compared to previous models. Our performance is usually better than CUT & CycleGAN.

SIMDCL is a different version, it was designed to solve mode collpase. We recommend using it for small-scale, unbalanced dataset.

Datasets

Download CUT/CycleGAN/pix2pix datasets and learn how to create your own datasets.

Or download it here: https://people.eecs.berkeley.edu/~taesung_park/CycleGAN/datasets/.

Apply a pre-trained DCL model and evaluate

We provide our pre-trained DCLGAN models for:

Cat <-> Dog : https://drive.google.com/file/d/1-0SICLeoySDG0q2k1yeJEI2QJvEL-DRG/view?usp=sharing

Horse <-> Zebra: https://drive.google.com/file/d/16oPsXaP3RgGargJS0JO1K-vWBz42n5lf/view?usp=sharing

CityScapes: https://drive.google.com/file/d/1ZiLAhYG647ipaVXyZdBCsGeiHgBmME6X/view?usp=sharing

Download the pre-tained model, unzip it and put it inside ./checkpoints (You may need to create checkpoints folder by yourself if you didn't run the training code).

Example usage: Download the dataset of Horse2Zebra and test the model using:

python test.py --dataroot ./datasets/horse2zebra --name horse2zebra_dcl

For FID score, use pytorch-fid.

Test the FID for Horse-> Zebra:

python -m pytorch_fid ./results/horse2zebra_dcl/test_latest/images/fake_B ./results/horse2zebra_dcl/test_latest/images/real_B

and Zorse-> Hebra:

python -m pytorch_fid ./results/horse2zebra_dcl/test_latest/images/fake_A ./results/horse2zebra_dcl/test_latest/images/real_A

Citation

If you use our code or our results, please consider citing our paper. Thanks in advance!

@inproceedings{han2021dcl,
  title={Dual Contrastive Learning for Unsupervised Image-to-Image Translation},
  author={Junlin Han and Mehrdad Shoeiby and Lars Petersson and Mohammad Ali Armin},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops},
  year={2021}
}

If you use something included in CUT, you may also CUT.

@inproceedings{park2020cut,
  title={Contrastive Learning for Unpaired Image-to-Image Translation},
  author={Taesung Park and Alexei A. Efros and Richard Zhang and Jun-Yan Zhu},
  booktitle={European Conference on Computer Vision},
  year={2020}
}

Contact

[email protected] or [email protected]

Acknowledgments

Our code is developed based on pytorch-CycleGAN-and-pix2pix and CUT. We thank the awesome work provided by CycleGAN and CUT. We thank pytorch-fid for FID computation. Great thanks to the anonymous reviewers, from both the main CVPR conference and NTIRE. They provided invaluable feedbacks and suggestions.

Owner
Computer vision.
This is the official implementation for the paper "(Almost) Free Incentivized Exploration from Decentralized Learning Agents" in NeurIPS 2021.

Observe then Incentivize Experiments This is the code used for the paper "(Almost) Free Incentivized Exploration from Decentralized Learning Agents",

Cong Shen Research Group 0 Mar 08, 2022
The 2nd Version Of Slothybot

SlothyBot Go to this website: "https://bitly.com/SlothyBot" The 2nd Version Of Slothybot. The Bot Has Many Features, Such As: Moderation Commands; Kic

Slothy 0 Jun 01, 2022
A python library for implementing a recommender system

python-recsys A python library for implementing a recommender system. Installation Dependencies python-recsys is build on top of Divisi2, with csc-pys

Oscar Celma 1.5k Dec 17, 2022
Unofficial Alias-Free GAN implementation. Based on rosinality's version with expanded training and inference options.

Alias-Free GAN An unofficial version of Alias-Free Generative Adversarial Networks (https://arxiv.org/abs/2106.12423). This repository was heavily bas

dusk (they/them) 75 Dec 12, 2022
The materials used in the SaxonJS tutorial presented at Declarative Amsterdam, 2021

SaxonJS-Tutorial-2021, version 1.0.4 Last updated on 4 November, 2021. Table of contents Background Prerequisites Starting a web server Running a Java

Saxonica 11 Oct 23, 2022
Pytorch implementation of Generative Models as Distributions of Functions 🌿

Generative Models as Distributions of Functions This repo contains code to reproduce all experiments in Generative Models as Distributions of Function

Emilien Dupont 117 Dec 29, 2022
Underwater image enhancement

LANet Our work proposes an adaptive learning attention network (LANet) to solve the problem of color casts and low illumination in underwater images.

LiuShiBen 7 Sep 14, 2022
A distributed, plug-n-play algorithm for multi-robot applications with a priori non-computable objective functions

A distributed, plug-n-play algorithm for multi-robot applications with a priori non-computable objective functions Kapoutsis, A.C., Chatzichristofis,

Athanasios Ch. Kapoutsis 5 Oct 15, 2022
Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis"

StrengthNet Implementation of "StrengthNet: Deep Learning-based Emotion Strength Assessment for Emotional Speech Synthesis" https://arxiv.org/abs/2110

RuiLiu 65 Dec 20, 2022
The official repository for "Score Transformer: Generating Musical Scores from Note-level Representation" (MMAsia '21)

Score Transformer This is the official repository for "Score Transformer": Score Transformer: Generating Musical Scores from Note-level Representation

22 Dec 22, 2022
The datasets and code of ACL 2021 paper "Aspect-Category-Opinion-Sentiment Quadruple Extraction with Implicit Aspects and Opinions".

Aspect-Category-Opinion-Sentiment (ACOS) Quadruple Extraction This repo contains the data sets and source code of our paper: Aspect-Category-Opinion-S

NUSTM 144 Jan 02, 2023
Code for the paper: Learning Adversarially Robust Representations via Worst-Case Mutual Information Maximization (https://arxiv.org/abs/2002.11798)

Representation Robustness Evaluations Our implementation is based on code from MadryLab's robustness package and Devon Hjelm's Deep InfoMax. For all t

Sicheng 19 Dec 07, 2022
Pytorch implementation of Integrating Tree Path in Transformer for Code Representation

This is an official Pytorch implementation of the approaches proposed in: Han Peng, Ge Li, Wenhan Wang, Yunfei Zhao, Zhi Jin “Integrating Tree Path in

Han Peng 16 Dec 23, 2022
Python implementation of NARS (Non-Axiomatic-Reasoning-System)

Python implementation of NARS (Non-Axiomatic-Reasoning-System)

Bowen XU 11 Dec 20, 2022
Prompts - Read a textfile of prompts and import into anki via ankiconnect

prompts read a textfile of prompts and import into anki via ankiconnect Usage In

Alexander Cobleigh 2 Jul 28, 2022
A geometric deep learning pipeline for predicting protein interface contacts.

A geometric deep learning pipeline for predicting protein interface contacts.

44 Dec 30, 2022
Datasets, Transforms and Models specific to Computer Vision

torchvision The torchvision package consists of popular datasets, model architectures, and common image transformations for computer vision. Installat

13.1k Jan 02, 2023
Colab notebook and additional materials for Python-driven analysis of redlining data in Philadelphia

RedliningExploration The Google Colaboratory file contained in this repository contains work inspired by a project on educational inequality in the Ph

Benjamin Warren 1 Jan 20, 2022
Baseline powergrid model for NY

Baseline-powergrid-model-for-NY Table of Contents About The Project Built With Usage License Contact Acknowledgements About The Project As the urgency

Anderson Energy Lab at Cornell 6 Nov 24, 2022
Code repository for the paper "Doubly-Trained Adversarial Data Augmentation for Neural Machine Translation" with instructions to reproduce the results.

Doubly Trained Neural Machine Translation System for Adversarial Attack and Data Augmentation Languages Experimented: Data Overview: Source Target Tra

Steven Tan 1 Aug 18, 2022