StyleMapGAN - Official PyTorch Implementation

Overview

StyleMapGAN - Official PyTorch Implementation

StyleMapGAN: Exploiting Spatial Dimensions of Latent in GAN for Real-time Image Editing
Hyunsu Kim, Yunjey Choi, Junho Kim, Sungjoo Yoo, Youngjung Uh
In CVPR 2021.

Paper: https://arxiv.org/abs/2104.14754
Video: https://youtu.be/qCapNyRA_Ng

Abstract: Generative adversarial networks (GANs) synthesize realistic images from random latent vectors. Although manipulating the latent vectors controls the synthesized outputs, editing real images with GANs suffers from i) time-consuming optimization for projecting real images to the latent vectors, ii) or inaccurate embedding through an encoder. We propose StyleMapGAN: the intermediate latent space has spatial dimensions, and a spatially variant modulation replaces AdaIN. It makes the embedding through an encoder more accurate than existing optimization-based methods while maintaining the properties of GANs. Experimental results demonstrate that our method significantly outperforms state-of-the-art models in various image manipulation tasks such as local editing and image interpolation. Last but not least, conventional editing methods on GANs are still valid on our StyleMapGAN. Source code is available at https://github.com/naver-ai/StyleMapGAN.

Demo

Youtube video Click the figure to watch the teaser video.

Interactive demo app Run demo in your local machine.

All test images are from CelebA-HQ, AFHQ, and LSUN.

python demo.py --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --dataset celeba_hq

Installation

ubuntu gcc 7.4.0 CUDA CUDA-driver cudnn7 conda Python 3.6.12 pytorch 1.4.0

Clone this repository:

git clone https://github.com/naver-ai/StyleMapGAN.git
cd StyleMapGAN/

Install the dependencies:

conda create -y -n stylemapgan python=3.6.12
conda activate stylemapgan
./install.sh

Datasets and pre-trained networks

We provide a script to download datasets used in StyleMapGAN and the corresponding pre-trained networks. The datasets and network checkpoints will be downloaded and stored in the data and expr/checkpoints directories, respectively.

CelebA-HQ. To download the CelebA-HQ dataset and parse it, run the following commands:

# Download raw images and create LMDB datasets using them
# Additional files are also downloaded for local editing
bash download.sh create-lmdb-dataset celeba_hq

# Download the pretrained network (256x256)
bash download.sh download-pretrained-network-256 celeba_hq

# Download the pretrained network (1024x1024 image / 16x16 stylemap / Light version of Generator)
bash download.sh download-pretrained-network-1024 ffhq_16x16

AFHQ. For AFHQ, change above commands from 'celeba_hq' to 'afhq'.

Train network

Implemented using DistributedDataParallel.

# CelebA-HQ
python train.py --dataset celeba_hq --train_lmdb data/celeba_hq/LMDB_train --val_lmdb data/celeba_hq/LMDB_val

# AFHQ
python train.py --dataset afhq --train_lmdb data/afhq/LMDB_train --val_lmdb data/afhq/LMDB_val

# CelebA-HQ / 1024x1024 image / 16x16 stylemap / Light version of Generator
python train.py --size 1024 --latent_spatial_size 16 --small_generator --dataset celeba_hq --train_lmdb data/celeba_hq/LMDB_train --val_lmdb data/celeba_hq/LMDB_val 

Generate images

Reconstruction Results are saved to expr/reconstruction.

# CelebA-HQ
python generate.py --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --mixing_type reconstruction --test_lmdb data/celeba_hq/LMDB_test

# AFHQ
python generate.py --ckpt expr/checkpoints/afhq_256_8x8.pt --mixing_type reconstruction --test_lmdb data/afhq/LMDB_test

W interpolation Results are saved to expr/w_interpolation.

# CelebA-HQ
python generate.py --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --mixing_type w_interpolation --test_lmdb data/celeba_hq/LMDB_test

# AFHQ
python generate.py --ckpt expr/checkpoints/afhq_256_8x8.pt --mixing_type w_interpolation --test_lmdb data/afhq/LMDB_test

Local editing Results are saved to expr/local_editing. We pair images using a target semantic mask similarity. If you want to see details, please follow preprocessor/README.md.

# Using GroundTruth(GT) segmentation masks for CelebA-HQ dataset.
python generate.py --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --mixing_type local_editing --test_lmdb data/celeba_hq/LMDB_test --local_editing_part nose

# Using half-and-half masks for AFHQ dataset.
python generate.py --ckpt expr/checkpoints/afhq_256_8x8.pt --mixing_type local_editing --test_lmdb data/afhq/LMDB_test

Unaligned transplantation Results are saved to expr/transplantation. It shows local transplantations examples of AFHQ. We recommend the demo code instead of this.

python generate.py --ckpt expr/checkpoints/afhq_256_8x8.pt --mixing_type transplantation --test_lmdb data/afhq/LMDB_test

Random Generation Results are saved to expr/random_generation. It shows random generation examples.

python generate.py --mixing_type random_generation --ckpt expr/checkpoints/celeba_hq_256_8x8.pt

Style Mixing Results are saved to expr/stylemixing. It shows style mixing examples.

python generate.py --mixing_type stylemixing --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --test_lmdb data/celeba_hq/LMDB_test

Semantic Manipulation Results are saved to expr/semantic_manipulation. It shows local semantic manipulation examples.

python semantic_manipulation.py --ckpt expr/checkpoints/celeba_hq_256_8x8.pt --LMDB data/celeba_hq/LMDB --svm_train_iter 10000

Metrics

  • Reconstruction: LPIPS, MSE
  • W interpolation: FIDlerp
  • Generation: FID
  • Local editing: MSEsrc, MSEref, Detectability (Refer to CNNDetection)

If you want to see details, please follow metrics/README.md.

License

The source code, pre-trained models, and dataset are available under Creative Commons BY-NC 4.0 license by NAVER Corporation. You can use, copy, tranform and build upon the material for non-commercial purposes as long as you give appropriate credit by citing our paper, and indicate if changes were made.

For business inquiries, please contact [email protected].
For technical and other inquires, please contact [email protected].

Citation

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

@inproceedings{kim2021stylemapgan,
  title={Exploiting Spatial Dimensions of Latent in GAN for Real-time Image Editing},
  author={Kim, Hyunsu and Choi, Yunjey and Kim, Junho and Yoo, Sungjoo and Uh, Youngjung},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  year={2021}
}

Related Projects

Model code starts from StyleGAN2 PyTorch unofficial code, which refers to StyleGAN2 official code. LPIPS, FID, and CNNDetection codes are used for evaluation. In semantic manipulation, we used StyleGAN pretrained network to get positive and negative samples by ranking. The demo code starts from Neural-Collage.

Owner
NAVER AI
Official account of NAVER AI, Korea No.1 Industrial AI Research Group
NAVER AI
Codes for NeurIPS 2021 paper "Adversarial Neuron Pruning Purifies Backdoored Deep Models"

Adversarial Neuron Pruning Purifies Backdoored Deep Models Code for NeurIPS 2021 "Adversarial Neuron Pruning Purifies Backdoored Deep Models" by Dongx

Dongxian Wu 31 Dec 11, 2022
Neural style transfer in PyTorch.

style-transfer-pytorch An implementation of neural style transfer (A Neural Algorithm of Artistic Style) in PyTorch, supporting CPUs and Nvidia GPUs.

Katherine Crowson 395 Jan 06, 2023
LaneDet is an open source lane detection toolbox based on PyTorch that aims to pull together a wide variety of state-of-the-art lane detection models

LaneDet is an open source lane detection toolbox based on PyTorch that aims to pull together a wide variety of state-of-the-art lane detection models. Developers can reproduce these SOTA methods and

TuZheng 405 Jan 04, 2023
Joint Detection and Identification Feature Learning for Person Search

Person Search Project This repository hosts the code for our paper Joint Detection and Identification Feature Learning for Person Search. The code is

712 Dec 17, 2022
[ICLR 2022] DAB-DETR: Dynamic Anchor Boxes are Better Queries for DETR

DAB-DETR This is the official pytorch implementation of our ICLR 2022 paper DAB-DETR. Authors: Shilong Liu, Feng Li, Hao Zhang, Xiao Yang, Xianbiao Qi

336 Dec 25, 2022
Bunch of different tools which helps visualizing and annotating images for semantic/instance segmentation tasks

Data Framework for Semantic/Instance Segmentation Bunch of different tools which helps visualizing, transforming and annotating images for semantic/in

Bruno Fernandes Carvalho 5 Dec 21, 2022
pytorch implementation of "Contrastive Multiview Coding", "Momentum Contrast for Unsupervised Visual Representation Learning", and "Unsupervised Feature Learning via Non-Parametric Instance-level Discrimination"

Unofficial implementation: MoCo: Momentum Contrast for Unsupervised Visual Representation Learning (Paper) InsDis: Unsupervised Feature Learning via N

Zhiqiang Shen 16 Nov 04, 2020
COPA-SSE contains crowdsourced explanations for the Balanced COPA dataset

COPA-SSE Repository for COPA-SSE: Semi-Structured Explanations for Commonsense Reasoning. COPA-SSE contains crowdsourced explanations for the Balanced

Ana Brassard 5 Jul 31, 2022
Learning embeddings for classification, retrieval and ranking.

StarSpace StarSpace is a general-purpose neural model for efficient learning of entity embeddings for solving a wide variety of problems: Learning wor

Facebook Research 3.8k Dec 22, 2022
TorchXRayVision: A library of chest X-ray datasets and models.

torchxrayvision A library for chest X-ray datasets and models. Including pre-trained models. ( ๐ŸŽฌ promo video about the project) Motivation: While the

Machine Learning and Medicine Lab 575 Jan 08, 2023
Generate indoor scenes with Transformers

SceneFormer: Indoor Scene Generation with Transformers Initial code release for the Sceneformer paper, contains models, train and test scripts for the

Chandan Yeshwanth 110 Dec 06, 2022
BMVC 2021: This is the github repository for "Few Shot Temporal Action Localization using Query Adaptive Transformers" accepted in British Machine Vision Conference (BMVC) 2021, Virtual

FS-QAT: Few Shot Temporal Action Localization using Query Adaptive Transformer Accepted as Poster in BMVC 2021 This is an official implementation in P

Sauradip Nag 14 Dec 09, 2022
This repository includes the official project for the paper: TransMix: Attend to Mix for Vision Transformers.

TransMix: Attend to Mix for Vision Transformers This repository includes the official project for the paper: TransMix: Attend to Mix for Vision Transf

Jie-Neng Chen 130 Jan 01, 2023
NeurIPS 2021 paper 'Representation Learning on Spatial Networks' code

Representation Learning on Spatial Networks This repository is the official implementation of Representation Learning on Spatial Networks. Training Ex

13 Dec 29, 2022
Probabilistic Programming and Statistical Inference in PyTorch

PtStat Probabilistic Programming and Statistical Inference in PyTorch. Introduction This project is being developed during my time at Cogent Labs. The

Stefano Peluchetti 109 Nov 26, 2022
On the Complementarity between Pre-Training and Back-Translation for Neural Machine Translation (Findings of EMNLP 2021))

PTvsBT On the Complementarity between Pre-Training and Back-Translation for Neural Machine Translation (Findings of EMNLP 2021) Citation Please cite a

Sunbow Liu 10 Nov 25, 2022
Neurolab is a simple and powerful Neural Network Library for Python

Neurolab Neurolab is a simple and powerful Neural Network Library for Python. Contains based neural networks, train algorithms and flexible framework

152 Dec 06, 2022
Convert dog pictures into various painting styles. Try LimnPet

LimnPet Cartoon stylization service project Try our service ยป Home page ยท Team notion ยท Members ๋ชฉ์ฐจ ํ”„๋กœ์ ํŠธ ์†Œ๊ฐœ ํ”„๋กœ์ ํŠธ ๋ชฉํ‘œ ์‚ฌ์šฉํ•œ ๊ธฐ์ˆ ์Šคํƒ๊ณผ ์ˆ˜ํ–‰๋„๊ตฌ ํŒ€์› ๊ตฌํ˜„ ๊ธฐ๋Šฅ ์ฃผ์š” ๊ธฐ๋Šฅ ์ถ”๊ฐ€ ๊ธฐ๋Šฅ

LiJell 7 Jul 14, 2022
SimpleDepthEstimation - An unified codebase for NN-based monocular depth estimation methods

SimpleDepthEstimation Introduction This is an unified codebase for NN-based monocular depth estimation methods, the framework is based on detectron2 (

8 Dec 13, 2022