Two-Stage Peer-Regularized Feature Recombination for Arbitrary Image Style Transfer

Overview

Two-Stage Peer-Regularized Feature Recombination for Arbitrary Image Style Transfer

Paper on arXiv

Public PyTorch implementation of two-stage peer-regularized feature recombination for arbitrary image style transfer presented at CVPR 2020. The model is trained on a selected set painters and generalizes well even to previously unseen style during testing.

Structure

The repository contains the code that we have used to produce some of the main results in the paper. We have left out additional modifications that were used to generate the ablation studies, etc.

Running examples

In order to get reasonable runtime, the code has to be run on a GPU. The code is multi-gpu ready. We have used 2 GPUs for training and a single GPU during test time. We have been running our code on a Nvidia Titan X (Pascal) 12GB GPU. Basic system requirements are to be found here.

Should you encounter some issues running the code, please first check Known issues and then consider opening a new issue in this repository.

Model training

The provided pre-trained model was trained by running the following command:

python train.py --dataroot photo2painter13 --checkpoints_dir=./checkpoints --dataset_mode=painters13 --name GanAuxModel --model gan_aux
--netG=resnet_residual --netD=disc_noisy --display_env=GanAuxModel --gpu_ids=0,1 --lambda_gen=1.0 --lambda_disc=1.0 --lambda_cycle=1.0
--lambda_cont=1.0 --lambda_style=1.0 --lambda_idt=25.0 --num_style_samples=1 --batch_size=2 --num_threads=8 --fineSize=256 --loadSize=286
--mapping_mode=one_to_all --knn=5 --ml_margin=1.0 --lr=4e-4 --peer_reg=bidir --print_freq=500 --niter=50 --niter_decay=150 --no_html

Model testing

We provide one pre-trained model that you can run and stylize images. The example below will use sample content and style images from the samples/data folder.

The pretrained model was trained on images with resolution 256 x 256, during test time it can however operate on images of arbitrary size. Current memory limitations restrict us to run images of size up to 768 x 768.

python test.py --checkpoints_dir=./samples/models --name GanAuxPretrained --model gan_aux --netG=resnet_residual --netD=disc_noisy
--gpu_ids=0 --num_style_samples=1 --loadSize=512 --fineSize=512 --knn=5 --peer_reg=bidir --epoch=200 --content_folder content_imgs
--style_folder style_imgs --output_folder out_imgs

Datasets

The full dataset that we have used for training is the same one as in this work.

Results

Comparison to existing approaches

Comparison image

Ablation study

Ablation image

Reference

If you make any use of our code or data, please cite the following:

@conference{svoboda2020twostage,
  title={Two-Stage Peer-Regularized Feature Recombination for Arbitrary Image Style Transfer},
  author={Svoboda, J. and Anoosheh, A. and Osendorfer, Ch. and Masci, J.},
  booktitle={Proceedings of the Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2020}
}

Acknowledgments

The code in this repository is based on pytorch-CycleGAN.

For any reuse and or redistribution of the code in this repository please follow the license agreement attached to this repository.

Owner
NNAISENSE
NNAISENSE
Most popular metrics used to evaluate object detection algorithms.

Most popular metrics used to evaluate object detection algorithms.

Rafael Padilla 4.4k Dec 25, 2022
This is a JAX implementation of Neural Radiance Fields for learning purposes.

learn-nerf This is a JAX implementation of Neural Radiance Fields for learning purposes. I've been curious about NeRF and its follow-up work for a whi

Alex Nichol 62 Dec 20, 2022
Unofficial implementation of MUSIQ (Multi-Scale Image Quality Transformer)

MUSIQ: Multi-Scale Image Quality Transformer Unofficial pytorch implementation of the paper "MUSIQ: Multi-Scale Image Quality Transformer" (paper link

41 Jan 02, 2023
Code for our WACV 2022 paper "Hyper-Convolution Networks for Biomedical Image Segmentation"

Hyper-Convolution Networks for Biomedical Image Segmentation Code for our WACV 2022 paper "Hyper-Convolution Networks for Biomedical Image Segmentatio

Tianyu Ma 17 Nov 02, 2022
This repository implements and evaluates convolutional networks on the Möbius strip as toy model instantiations of Coordinate Independent Convolutional Networks.

Orientation independent Möbius CNNs This repository implements and evaluates convolutional networks on the Möbius strip as toy model instantiations of

Maurice Weiler 59 Dec 09, 2022
A mini lib that implements several useful functions binding to PyTorch in C++.

Torch-gather A mini library that implements several useful functions binding to PyTorch in C++. What does gather do? Why do we need it? When dealing w

maxwellzh 8 Sep 07, 2022
Re-implementation of the Noise Contrastive Estimation algorithm for pyTorch, following "Noise-contrastive estimation: A new estimation principle for unnormalized statistical models." (Gutmann and Hyvarinen, AISTATS 2010)

Noise Contrastive Estimation for pyTorch Overview This repository contains a re-implementation of the Noise Contrastive Estimation algorithm, implemen

Denis Emelin 42 Nov 24, 2022
GAN-generated image detection based on CNNs

GAN-image-detection This repository contains a GAN-generated image detector developed to distinguish real images from synthetic ones. The detector is

Image and Sound Processing Lab 17 Dec 15, 2022
Unofficial PyTorch Implementation of AHDRNet (CVPR 2019)

AHDRNet-PyTorch This is the PyTorch implementation of Attention-guided Network for Ghost-free High Dynamic Range Imaging (CVPR 2019). The official cod

Yutong Zhang 4 Sep 08, 2022
A customisable game where you have to quickly click on black tiles in order of appearance while avoiding clicking on white squares.

W.I.P-Aim-Memory-Game A customisable game where you have to quickly click on black tiles in order of appearance while avoiding clicking on white squar

dE_soot 1 Dec 08, 2021
Source code for CVPR 2021 paper "Riggable 3D Face Reconstruction via In-Network Optimization"

Riggable 3D Face Reconstruction via In-Network Optimization Source code for CVPR 2021 paper "Riggable 3D Face Reconstruction via In-Network Optimizati

130 Jan 02, 2023
HandFoldingNet ✌️ : A 3D Hand Pose Estimation Network Using Multiscale-Feature Guided Folding of a 2D Hand Skeleton

HandFoldingNet ✌️ : A 3D Hand Pose Estimation Network Using Multiscale-Feature Guided Folding of a 2D Hand Skeleton Wencan Cheng, Jae Hyun Park, Jong

cwc1260 23 Oct 21, 2022
李云龙二次元风格化!打滚卖萌,使用了animeGANv2进行了视频的风格迁移

李云龙二次元风格化!一键star、fork,你也可以生成这样的团长! 打滚卖萌求star求fork! 0.效果展示 视频效果前往B站观看效果最佳:李云龙二次元风格化: github开源repo:李云龙二次元风格化 百度AIstudio开源地址,一键fork即可运行: 李云龙二次元风格化!一键fork

oukohou 44 Dec 04, 2022
Just playing with getting CLIP Guided Diffusion running locally, rather than having to use colab.

CLIP-Guided-Diffusion Just playing with getting CLIP Guided Diffusion running locally, rather than having to use colab. Original colab notebooks by Ka

Nerdy Rodent 336 Dec 09, 2022
Source code for our paper "Empathetic Response Generation with State Management"

Source code for our paper "Empathetic Response Generation with State Management" this repository is maintained by both Jun Gao and Yuhan Liu Model Ove

Yuhan Liu 3 Oct 08, 2022
An efficient PyTorch implementation of the winning entry of the 2017 VQA Challenge.

Bottom-Up and Top-Down Attention for Visual Question Answering An efficient PyTorch implementation of the winning entry of the 2017 VQA Challenge. The

Hengyuan Hu 731 Jan 03, 2023
OntoProtein: Protein Pretraining With Ontology Embedding

OntoProtein This is the implement of the paper "OntoProtein: Protein Pretraining With Ontology Embedding". OntoProtein is an effective method that mak

ZJUNLP 80 Dec 14, 2022
Prometheus Exporter for data scraped from datenplattform.darmstadt.de

darmstadt-opendata-exporter Scrapes data from https://datenplattform.darmstadt.de and presents it in the Prometheus Exposition format. Pull requests w

Martin Weinelt 2 Apr 12, 2022
True Few-Shot Learning with Language Models

This codebase supports using language models (LMs) for true few-shot learning: learning to perform a task using a limited number of examples from a single task distribution.

Ethan Perez 124 Jan 04, 2023
A PyTorch-based Semi-Supervised Learning (SSL) Codebase for Pixel-wise (Pixel) Vision Tasks

PixelSSL is a PyTorch-based semi-supervised learning (SSL) codebase for pixel-wise (Pixel) vision tasks. The purpose of this project is to promote the

Zhanghan Ke 255 Dec 11, 2022