Project page of "IFCNN: A General Image Fusion Framework Based on Convolutional Neural Network, Information Fusion, 54 (2020) 99-118".
- pytorch=0.4.1
- python=3.x
- torchvision
- numpy
- opencv-python
- jupyter notebook (optional)
- anaconda (suggeted)
# Create your virtual environment using anaconda
conda create -n IFCNN python=3.5
# Activate your virtual environment
conda activate IFCNN
# Install the required libraries
conda install pytorch=0.4.1 cuda80 -c pytorch
conda install torchvision numpy jupyter notebook
pip install opencv-python
# Clone our code
git clone https://github.com/uzeful/IFCNN.git
cd IFCNN/Code
# Remember to activate your virtual enviroment before running our code
conda activate IFCNN
# Replicate our image method on fusing multiple types of images
python IFCNN_Main.py
# Or run code part by part in notebook
jupyter notebook IFCNN_Notebook.ipynb
- Eq. (4) in our paper is wrongly written, the correct expression can be referred to the official expression in OpenCV document, i.e., , where , , , and is the scale factor chosen for achieving .
- Stride and padding parameters of CONV4 are respectively 1 and 0, rather than both 0.
- Propose a general image fusion framework based on convolutional neural network
- Demonstrate good generalization ability for fusing various types of images
- Perform comparably or even better than other algorithms on four image datasets
- Create a large-scale and diverse multi-focus image dataset for training CNN models
- Incorporate perceptual loss to boost the model’s performance
- Multi-focus image dataset: Results/CMF
- Infrared and visual image dataset: Results/IV
- Multi-modal medical image dataset: Results/MD
- Multi-exposure image dataset: Results/ME
If you find this code is useful for your research, please consider to cite our paper. Yu Zhang, Yu Liu, Peng Sun, Han Yan, Xiaolin Zhao, Li Zhang, IFCNN: A General Image Fusion Framework Based on Convolutional Neural Network, Information Fusion, 54 (2020) 99-118.
@article{zhang2020IFCNN,
title={IFCNN: A General Image Fusion Framework Based on Convolutional Neural Network},
author={Zhang, Yu and Liu, Yu and Sun, Peng and Yan, Han and Zhao, Xiaolin and Zhang, Li},
journal={Information Fusion},
volume={54},
pages={99--118},
year={2020},
publisher={Elsevier}
}