Code of Multi-Task Learning Approach Using Dynamic Hyperparameter for Multi-Exposure Fusion
- High-dynamic-range (HDR) image synthesis is a technology developed to accurately reproduce the actual scene of an image on a display by extending the dynamic range of an image. Multi-exposure fusion (MEF) technology, which synthesizes multiple low-dynamic-range (LDR) images to create an HDR image, has been developed in various ways including pixel-based, patch-based, and deep learning-based methods. Recently, methods to improve the synthesis quality of images using deep-learning-based algorithms have mainly been studied in the field of MEF. Despite the various advantages of deep learning, deep-learning-based methods have a problem in that numerous multi-exposed and ground-truth images are required for training. In this study, we propose a self-supervised learning method that generates and learns reference images based on input images during the training process. In addition, we propose a method to train a deep learning model for an MEF with multiple tasks using dynamic hyperparameters on the loss functions. It enables effective network optimization across multiple tasks and high-quality image synthesis while preserving a simple network architecture. Our learning method applied to the deep learning model shows superior synthesis results compared to other existing deep-learning-based image synthesis algorithms.
- We developed code based on this code
- Training dataset
@article{math11071620,
author = {Im, Chan-Gi and Son, Dong-Min and Kwon, Hyuk-Ju and Lee, Sung-Hak},
title = {Multi-Task Learning Approach Using Dynamic Hyperparameter for Multi-Exposure Fusion},
journal = {Mathematics},
volume = {11},
year = {2023},
number = {7},
article-number = {1620},
url = {https://www.mdpi.com/2227-7390/11/7/1620},
issn = {2227-7390},
doi = {10.3390/math11071620}
}
If you have any question, please email to me [email protected].