[CVPR 2021] Region-aware Adaptive Instance Normalization for Image Harmonization

Overview

RainNet — Official Pytorch Implementation

Sample image

Region-aware Adaptive Instance Normalization for Image Harmonization
Jun Ling, Han Xue, Li Song*, Rong Xie, Xiao Gu

Paper: link
Video: link


Table of Contents

  1. Introduction
  2. Preparation
  3. Usage
  4. Results
  5. Citation
  6. Acknowledgement

Introduction

This work treats image harmonization as a style transfer problem. In particular, we propose a simple yet effective Region-aware Adaptive Instance Normalization (RAIN) module, which explicitly formulates the visual style from the background and adaptively applies them to the foreground. With our settings, our RAIN module can be used as a drop-in module for existing image harmonization networks and is able to bring significant improvements. Extensive experiments on the existing image harmonization benchmark datasets shows the superior capability of the proposed method.

Preparation

1. Clone this repo:

git clone https://github.com/junleen/RainNet
cd RainNet

2. Requirements

  • Both Linux and Windows are supported, but Linux is recommended for compatibility reasons.
  • We have tested on Python 3.6 with PyTorch 1.4.0 and PyTorch 1.8.1+cu11.

install the required packages using pip:

pip3 install -r requirements.txt

or conda:

conda create -n rainnet python=3.6
conda activate rainnet
pip install -r requirements.txt

3. Prepare the data

  • Download iHarmony4 dataset and extract the images. Because the images are too big in the origianl dataset, we suggest you to resize the images (eg, 512x512, or 256x256) and save the resized images in your local device.
  • We provide the code in data/preprocess_iharmony4.py. For example, you can run:
    python data/preprocess_iharmony4.py --dir_iharmony4 <DIR_of_iHarmony4> --save_dir <SAVE_DIR> --image_size <IMAGE_SIZE>
    This will help you to resize the images to a fixed size, eg, <image_size, image_size>. If you want to keep the aspect ratio of the original images, please run:
    python data/preprocess_iharmony4.py --dir_iharmony4 <DIR_of_iHarmony4> --save_dir <SAVE_DIR> --image_size <IMAGE_SIZE> --keep_aspect_ratio

4. Download our pre-trained model

  • Download the pretrained model from Google Drive, and put net_G.pth in the directory checkpoints/experiment_train. You can also save the checkpoint in other directories and change the checkpoints_dir and name in /util/config.py accordingly.

Usage

1. Evaluation

We provide the code in evaluate.py, which supports the model evaluation in iHarmony4 dataset.

Run:

python evaluate.py --dataset_root <DATA_DIR> --save_dir evaluated --batch_size 16 --device cuda 

If you want to save the harmonized images, you can add --store_image at the end of the command. The evaluating results will be saved in the evaluated directory.

2. Testing with your own examples

In this project, we also provide the easy testing code in test.py to help you test on other cases. However, you are required to assign image paths in the file for each trial. For example, you can follow:

comp_path = 'examples/1.png' or ['examples/1.png', 'examples/2.png']
mask_path = 'examples/1-mask.png' or ['examples/1-mask.png', 'examples/2-mask.png']
real_path = 'examples/1-gt.png' or ['examples/1-gt.png', 'examples/2-gt.png']

If there is no groundtruth image, you can set real_path to None

3. Training your own model

Please update the command arguments in scripts/train.sh and run:

bash scripts/train.sh

Results

Comparison1 Comparison2

Citation

If you use our code or find this work useful for your future research, please kindly cite our paper:

@inproceedings{ling2021Rainnet,
    title     = {Region-aware Adaptive Instance Normalization for Image Harmonization}, 
    author    = {Ling, Jun and Xue, Han and Song, Li and Xie, Rong and Gu, Xiao}, 
    booktitle = {IEEE Conference on Computer Vision and Pattern Recognition},
    year      = {2021}
}

Acknowledgement

For some of the data modules and model functions used in this source code, we need to acknowledge the repo of DoveNet and pix2pix.

Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Ibai Gorordo 35 Sep 07, 2022
Rethinking Transformer-based Set Prediction for Object Detection

Rethinking Transformer-based Set Prediction for Object Detection Here are the code for the ICCV paper. The code is adapted from Detectron2 and AdelaiD

Zhiqing Sun 62 Dec 03, 2022
UmlsBERT: Clinical Domain Knowledge Augmentation of Contextual Embeddings Using the Unified Medical Language System Metathesaurus

UmlsBERT: Clinical Domain Knowledge Augmentation of Contextual Embeddings Using the Unified Medical Language System Metathesaurus General info This is

71 Oct 25, 2022
Official Implementation of HRDA: Context-Aware High-Resolution Domain-Adaptive Semantic Segmentation

HRDA: Context-Aware High-Resolution Domain-Adaptive Semantic Segmentation by Lukas Hoyer, Dengxin Dai, and Luc Van Gool [Arxiv] [Paper] Overview Unsup

Lukas Hoyer 149 Dec 28, 2022
A very impractical 3D rendering engine that runs in the python terminal.

Terminal-3D-Render A very impractical 3D rendering engine that runs in the python terminal. do NOT try to run this program using the standard python I

23 Dec 31, 2022
PyTorch implementation of NeurIPS 2021 paper: "CoFiNet: Reliable Coarse-to-fine Correspondences for Robust Point Cloud Registration"

CoFiNet: Reliable Coarse-to-fine Correspondences for Robust Point Cloud Registration (NeurIPS 2021) PyTorch implementation of the paper: CoFiNet: Reli

76 Jan 03, 2023
AniGAN: Style-Guided Generative Adversarial Networks for Unsupervised Anime Face Generation

AniGAN: Style-Guided Generative Adversarial Networks for Unsupervised Anime Face Generation AniGAN: Style-Guided Generative Adversarial Networks for U

Bing Li 81 Dec 14, 2022
STRIVE: Scene Text Replacement In Videos

STRIVE: Scene Text Replacement In Videos Dataset Types: RoboText SynthText RealWorld videos RoboText : Videos of texts collected using navigation robo

15 Jul 11, 2022
code for "Self-supervised edge features for improved Graph Neural Network training",

Self-supervised edge features for improved Graph Neural Network training Data availability: Here is a link to the raw data for the organoids dataset.

Neal Ravindra 23 Dec 02, 2022
End-To-End Optimization of LiDAR Beam Configuration

End-To-End Optimization of LiDAR Beam Configuration arXiv | IEEE Xplore This repository is the official implementation of the paper: End-To-End Optimi

Niclas 30 Nov 28, 2022
Repository for self-supervised landmark discovery

self-supervised-landmarks Repository for self-supervised landmark discovery Requirements pytorch pynrrd (for 3d images) Usage The use of this models i

Riddhish Bhalodia 2 Apr 18, 2022
Synthetic structured data generators

Join us on What is Synthetic Data? Synthetic data is artificially generated data that is not collected from real world events. It replicates the stati

YData 850 Jan 07, 2023
Social Network Ads Prediction

Social network advertising, also social media targeting, is a group of terms that are used to describe forms of online advertising that focus on social networking services.

Khazar 2 Jan 28, 2022
This repository is based on Ultralytics/yolov5, with adjustments to enable polygon prediction boxes.

Polygon-Yolov5 This repository is based on Ultralytics/yolov5, with adjustments to enable polygon prediction boxes. Section I. Description The codes a

xinzelee 226 Jan 05, 2023
This code provides various models combining dilated convolutions with residual networks

Overview This code provides various models combining dilated convolutions with residual networks. Our models can achieve better performance with less

Fisher Yu 1.1k Dec 30, 2022
Pythonic particle-based (super-droplet) warm-rain/aqueous-chemistry cloud microphysics package with box, parcel & 1D/2D prescribed-flow examples in Python, Julia and Matlab

PySDM PySDM is a package for simulating the dynamics of population of particles. It is intended to serve as a building block for simulation systems mo

Atmospheric Cloud Simulation Group @ Jagiellonian University 32 Oct 18, 2022
A simple API wrapper for Discord interactions.

Your ultimate Discord interactions library for discord.py. About | Installation | Examples | Discord | PyPI About What is discord-py-interactions? dis

james 641 Jan 03, 2023
VSR-Transformer - This paper proposes a new Transformer for video super-resolution (called VSR-Transformer).

VSR-Transformer By Jiezhang Cao, Yawei Li, Kai Zhang, Luc Van Gool This paper proposes a new Transformer for video super-resolution (called VSR-Transf

Jiezhang Cao 225 Nov 13, 2022
Yolo Traffic Light Detection With Python

Yolo-Traffic-Light-Detection This project is based on detecting the Traffic light. Pretained data is used. This application entertained both real time

Ananta Raj Pant 2 Aug 08, 2022
Self-supervised Product Quantization for Deep Unsupervised Image Retrieval - ICCV2021

Self-supervised Product Quantization for Deep Unsupervised Image Retrieval Pytorch implementation of SPQ Accepted to ICCV 2021 - paper Young Kyun Jang

Young Kyun Jang 71 Dec 27, 2022