[CVPR 2022] Unsupervised Image-to-Image Translation with Generative Prior

Overview

GP-UNIT - Official PyTorch Implementation

This repository provides the official PyTorch implementation for the following paper:

Unsupervised Image-to-Image Translation with Generative Prior
Shuai Yang, Liming Jiang, Ziwei Liu and Chen Change Loy
In CVPR 2022.
Project Page | Paper | Supplementary Video

Abstract: Unsupervised image-to-image translation aims to learn the translation between two visual domains without paired data. Despite the recent progress in image translation models, it remains challenging to build mappings between complex domains with drastic visual discrepancies. In this work, we present a novel framework, Generative Prior-guided UNsupervised Image-to-image Translation (GP-UNIT), to improve the overall quality and applicability of the translation algorithm. Our key insight is to leverage the generative prior from pre-trained class-conditional GANs (e.g., BigGAN) to learn rich content correspondences across various domains. We propose a novel coarse-to-fine scheme: we first distill the generative prior to capture a robust coarse-level content representation that can link objects at an abstract semantic level, based on which fine-level content features are adaptively learned for more accurate multi-level content correspondences. Extensive experiments demonstrate the superiority of our versatile framework over state-of-the-art methods in robust, high-quality and diversified translations, even for challenging and distant domains.

Updates

  • [03/2022] Paper and supplementary video are released.
  • [04/2022] Code and dataset are released.
  • [03/2022] This website is created.

Installation

Clone this repo:

git clone https://github.com/williamyang1991/GP-UNIT.git
cd GP-UNIT

Dependencies:

We have tested on:

  • CUDA 10.1
  • PyTorch 1.7.0
  • Pillow 8.0.1; Matplotlib 3.3.3; opencv-python 4.4.0; Faiss 1.7.0; tqdm 4.54.0

All dependencies for defining the environment are provided in environment/gpunit_env.yaml. We recommend running this repository using Anaconda:

conda env create -f ./environment/gpunit_env.yaml

We use CUDA 10.1 so it will install PyTorch 1.7.0 (corresponding to Line 16, Line 113, Line 120, Line 121 of gpunit_env.yaml). Please install PyTorch that matches your own CUDA version following https://pytorch.org/.


(1) Dataset Preparation

Human face dataset, animal face dataset and aristic human face dataset can be downloaded from their official pages. Bird, dog and car datasets can be built from ImageNet with our provided script.

Task Used Dataset
Male←→Female CelebA-HQ: divided into male and female subsets by StarGANv2
Dog←→Cat←→Wild AFHQ provided by StarGANv2
Face←→Cat or Dog CelebA-HQ and AFHQ
Bird←→Dog 4 classes of birds and 4 classes of dogs in ImageNet291. Please refer to dataset preparation for building ImageNet291 from ImageNet
Bird←→Car 4 classes of birds and 4 classes of cars in ImageNet291. Please refer to dataset preparation for building ImageNet291 from ImageNet
Face→MetFace CelebA-HQ and MetFaces

(2) Inference for Latent-Guided and Exemplar-Guided Translation

Inference Notebook


To help users get started, we provide a Jupyter notebook at ./notebooks/inference_playground.ipynb that allows one to visualize the performance of GP-UNIT. The notebook will download the necessary pretrained models and run inference on the images in ./data/.

Web Demo

Try Replicate web demo here Replicate

Pretrained Models

Pretrained models can be downloaded from Google Drive or Baidu Cloud (access code: cvpr):

Task Pretrained Models
Prior Distillation content encoder
Male←→Female generators for male2female and female2male
Dog←→Cat←→Wild generators for dog2cat, cat2dog, dog2wild, wild2dog, cat2wild and wild2cat
Face←→Cat or Dog generators for face2cat, cat2face, dog2face and face2dog
Bird←→Dog generators for bird2dog and dog2bird
Bird←→Car generators for bird2car and car2bird
Face→MetFace generator for face2metface

The saved checkpoints are under the following folder structure:

checkpoint
|--content_encoder.pt     % Content encoder
|--bird2car.pt            % Bird-to-Car translation model
|--bird2dog.pt            % Bird-to-Dog translation model
...

Latent-Guided Translation

Translate a content image to the target domain with randomly sampled latent styles:

python inference.py --generator_path PRETRAINED_GENERATOR_PATH --content_encoder_path PRETRAINED_ENCODER_PATH \ 
                    --content CONTENT_IMAGE_PATH --batch STYLE_NUMBER --device DEVICE

By default, the script will use .\checkpoint\dog2cat.pt as PRETRAINED_GENERATOR_PATH, .\checkpoint\content_encoder.pt as PRETRAINED_ENCODER_PATH, and cuda as DEVICE for using GPU. For running on CPUs, use --device cpu.

Take Dog→Cat as an example, run:

python inference.py --content ./data/afhq/images512x512/test/dog/flickr_dog_000572.jpg --batch 6

Six results translation_flickr_dog_000572_N.jpg (N=0~5) are saved in the folder .\output\. An corresponding overview image translation_flickr_dog_000572_overview.jpg is additionally saved to illustrate the input content image and the six results:

Evaluation Metrics: We use the code of StarGANv2 to calculate FID and Diversity with LPIPS in our paper.

Exemplar-Guided Translation

Translate a content image to the target domain in the style of a style image by additionally specifying --style:

python inference.py --generator_path PRETRAINED_GENERATOR_PATH --content_encoder_path PRETRAINED_ENCODER_PATH \ 
                    --content CONTENT_IMAGE_PATH --style STYLE_IMAGE_PATH --device DEVICE

Take Dog→Cat as an example, run:

python inference.py --content ./data/afhq/images512x512/test/dog/flickr_dog_000572.jpg --style ./data/afhq/images512x512/test/cat/flickr_cat_000418.jpg

The result translation_flickr_dog_000572_to_flickr_cat_000418.jpg is saved in the folder .\output\. An corresponding overview image translation_flickr_dog_000572_to_flickr_cat_000418_overview.jpg is additionally saved to illustrate the input content image, the style image, and the result:

Another example of Cat→Wild, run:

python inference.py --generator_path ./checkpoint/cat2wild.pt --content ./data/afhq/images512x512/test/cat/flickr_cat_000418.jpg --style ./data/afhq/images512x512/test/wild/flickr_wild_001112.jpg

The overview image is as follows:


(3) Training GP-UNIT

Download the supporting models to the ./checkpoint/ folder:

Model Description
content_encoder.pt Our pretrained content encoder which distills BigGAN prior from the synImageNet291 dataset.
model_ir_se50.pth Pretrained IR-SE50 model taken from TreB1eN for ID loss.

Train Image-to-Image Transaltion Network

python train.py --task TASK --batch BATCH_SIZE --iter ITERATIONS \
                --source_paths SPATH1 SPATH2 ... SPATHS --source_num SNUM1 SNUM2 ... SNUMS \
                --target_paths TPATH1 TPATH2 ... TPATHT --target_num TNUM1 TNUM2 ... TNUMT

where SPATH1~SPATHS are paths to S folders containing images from the source domain (e.g., S classes of ImageNet birds), SNUMi is the number of images in SPATHi used for training. TPATHi, TNUMi are similarily defined but for the target domain. By default, BATCH_SIZE=16 and ITERATIONS=75000. If --source_num/--target_num is not specified, all images in the folders are used.

The trained model is saved as ./checkpoint/TASK-ITERATIONS.pt. Intermediate results are saved in ./log/TASK/.

This training does not necessarily lead to the optimal results, which can be further customized with additional command line options:

  • --style_layer (default: 4): the discriminator layer to compute the feature matching loss. We found setting style_layer=5 gives better performance on human faces.
  • --use_allskip (default: False): whether using dynamic skip connections to compute the reconstruction loss. For tasks involving close domains like gender translation, season transfer and face stylization, using use_allskip gives better results.
  • --use_idloss (default: False): whether using the identity loss. For Cat/Dog→Face and Face→MetFace tasks, we use this loss.
  • --not_flip_style (default: False): whether not randomly flipping the style image when extracting the style feature. Random flipping prevents the network to learn position information from the style image.
  • --mitigate_style_bias(default: False): whether resampling style features when training the sampling network. For imbalanced dataset that has minor groups, mitigate_style_bias oversamples those style features that are far from the mean style feature of the whole dataset. This leads to more diversified latent-guided translation at the cost of slight image quality degradation. We use it on CelebA-HQ and AFHQ-related tasks.

Here are some examples:
(Parts of our tasks require the ImageNet291 dataset. Please refer to data preparation)

Male→Female

python train.py --task male2female --source_paths ./data/celeba_hq/train/male --target_paths ./data/celeba_hq/train/female --style_layer 5 --mitigate_style_bias --use_allskip --not_flip_style

Cat→Dog

python train.py --task cat2dog --source_paths ./data/afhq/images512x512/train/cat --source_num 4000 --target_paths ./data/afhq/images512x512/train/dog --target_num 4000 --mitigate_style_bias

Cat→Face

python train.py --task cat2face --source_paths ./data/afhq/images512x512/train/cat --source_num 4000 --target_paths ./data/ImageNet291/train/1001_face/ --style_layer 5 --mitigate_style_bias --not_flip_style --use_idloss

Bird→Car (translating 4 classes of birds to 4 classes of cars)

python train.py --task bird2car --source_paths ./data/ImageNet291/train/10_bird/ ./data/ImageNet291/train/11_bird/ ./data/ImageNet291/train/12_bird/ ./data/ImageNet291/train/13_bird/ --source_num 600 600 600 600 --target_paths ./data/ImageNet291/train/436_vehicle/ ./data/ImageNet291/train/511_vehicle/ ./data/ImageNet291/train/627_vehicle/ ./data/ImageNet291/train/656_vehicle/ --target_num 600 600 600 600

Train Content Encoder of Prior Distillation

We provide our pretrained model content_encoder.pt at Google Drive or Baidu Cloud (access code: cvpr). This model is obtained by:

python prior_distillation.py --unpaired_data_root ./data/ImageNet291/train/ --paired_data_root ./data/synImageNet291/train/ --unpaired_mask_root ./data/ImageNet291_mask/train/ --paired_mask_root ./data/synImageNet291_mask/train/

The training requires ImageNet291 and synImageNet291 datasets. Please refer to data preparation.


Results

Male-to-Female: close domains

male2female

Cat-to-Dog: related domains

cat2dog

Dog-to-Human and Bird-to-Dog: distant domains

dog2human

bird2dog

Bird-to-Car: extremely distant domains for stress testing

bird2car

Citation

If you find this work useful for your research, please consider citing our paper:

@inproceedings{yang2022Unsupervised,
  title={Unsupervised Image-to-Image Translation with Generative Prior},
  author={Yang, Shuai and Jiang, Liming and Liu, Ziwei and Loy, Chen Change},
  booktitle={CVPR},
  year={2022}
}

Acknowledgments

The code is developed based on StarGAN v2, SPADE and Imaginaire.

Owner
Official code for 'Robust Siamese Object Tracking for Unmanned Aerial Manipulator' and offical introduction to UAMT100 benchmark

SiamSA: Robust Siamese Object Tracking for Unmanned Aerial Manipulator Demo video 📹 Our video on Youtube and bilibili demonstrates the evaluation of

Intelligent Vision for Robotics in Complex Environment 12 Dec 18, 2022
DI-smartcross - Decision Intelligence Platform for Traffic Crossing Signal Control

DI-smartcross DI-smartcross - Decision Intelligence Platform for Traffic Crossin

OpenDILab 213 Jan 02, 2023
Implementation of the Swin Transformer in PyTorch.

Swin Transformer - PyTorch Implementation of the Swin Transformer architecture. This paper presents a new vision Transformer, called Swin Transformer,

597 Jan 03, 2023
This repo is about implementing different approaches of pose estimation and also is a sub-task of the smart hospital bed project :smile:

Pose-Estimation This repo is a sub-task of the smart hospital bed project which is about implementing the task of pose estimation 😄 Many thanks to th

Max 11 Oct 17, 2022
In generative deep geometry learning, we often get many obj files remain to be rendered

a python prompt cli script for blender batch render In deep generative geometry learning, we always get many .obj files to be rendered. Our rendered i

Tian-yi Liang 1 Mar 20, 2022
A Player for Kanye West's Stem Player. Sort of an emulator.

Stem Player Player Stem Player Player Usage Download the latest release here Optional: install ffmpeg, instructions here NOTE: DOES NOT ENABLE DOWNLOA

119 Dec 28, 2022
Code & Models for 3DETR - an End-to-end transformer model for 3D object detection

3DETR: An End-to-End Transformer Model for 3D Object Detection PyTorch implementation and models for 3DETR. 3DETR (3D DEtection TRansformer) is a simp

Facebook Research 487 Dec 31, 2022
A clean and extensible PyTorch implementation of Masked Autoencoders Are Scalable Vision Learners

A clean and extensible PyTorch implementation of Masked Autoencoders Are Scalable Vision Learners A PyTorch re-implementation of Mask Autoencoder trai

Tianyu Hua 23 Dec 13, 2022
tree-math: mathematical operations for JAX pytrees

tree-math: mathematical operations for JAX pytrees tree-math makes it easy to implement numerical algorithms that work on JAX pytrees, such as iterati

Google 137 Dec 28, 2022
AVD Quickstart Containerlab

AVD Quickstart Containerlab WARNING This repository is still under construction. It's fully functional, but has number of limitations. For example: RE

Carl Buchmann 3 Apr 10, 2022
Pytorch implementation for A-NeRF: Articulated Neural Radiance Fields for Learning Human Shape, Appearance, and Pose

A-NeRF: Articulated Neural Radiance Fields for Learning Human Shape, Appearance, and Pose Paper | Website | Data A-NeRF: Articulated Neural Radiance F

Shih-Yang Su 172 Dec 22, 2022
Towhee is a flexible machine learning framework currently focused on computing deep learning embeddings over unstructured data.

Towhee is a flexible machine learning framework currently focused on computing deep learning embeddings over unstructured data.

1.7k Jan 08, 2023
This program was designed to detect whether someone is wearing a facemask through a live video stream.

This program was designed to detect whether someone is wearing a facemask through a live video stream. A custom lightweight CNN trained with TensorFlow on a public dataset provided by Kaggle is used

0 Apr 02, 2022
Collection of TensorFlow2 implementations of Generative Adversarial Network varieties presented in research papers.

TensorFlow2-GAN Collection of tf2.0 implementations of Generative Adversarial Network varieties presented in research papers. Model architectures will

41 Apr 28, 2022
[WWW 2022] Zero-Shot Stance Detection via Contrastive Learning

PT-HCL for Zero-Shot Stance Detection The code of this repository is constantly being updated... Please look forward to it! Introduction This reposito

Akuchi 12 Dec 21, 2022
Deep Learning Specialization by Andrew Ng, deeplearning.ai.

Deep Learning Specialization on Coursera Master Deep Learning, and Break into AI This is my personal projects for the course. The course covers deep l

Engen 1.5k Jan 07, 2023
Convert human motion from video to .bvh

video_to_bvh Convert human motion from video to .bvh with Google Colab Usage 1. Open video_to_bvh.ipynb in Google Colab Go to https://colab.research.g

Dene 306 Dec 10, 2022
The challenge for Quantum Coalition Hackathon 2021

Qchack 2021 Google Challenge This is a challenge for the brave 2021 qchack.io participants. Instructions Hello, intrepid qchacker, welcome to the G|o

quantumlib 18 May 04, 2022
Predicting the duration of arrival delays for commercial flights.

Flight Delay Prediction Our objective is to predict arrival delays of commercial flights. According to the US Department of Transportation, about 21%

Jordan Silke 1 Jan 11, 2022
i-SpaSP: Structured Neural Pruning via Sparse Signal Recovery

i-SpaSP: Structured Neural Pruning via Sparse Signal Recovery This is a public code repository for the publication: i-SpaSP: Structured Neural Pruning

Cameron Ronald Wolfe 5 Nov 04, 2022