Image fusion meets deep learning: A survey and perspective
Image fusion, which refers to extracting and then combining the most meaningful information
from different source images, aims to generate a single image that is more informative and …
from different source images, aims to generate a single image that is more informative and …
Current advances and future perspectives of image fusion: A comprehensive review
Multiple imaging modalities can be combined to provide more information about the real
world than a single modality alone. Infrared images discriminate targets with respect to their …
world than a single modality alone. Infrared images discriminate targets with respect to their …
SwinFusion: Cross-domain long-range learning for general image fusion via swin transformer
This study proposes a novel general image fusion framework based on cross-domain long-
range learning and Swin Transformer, termed as SwinFusion. On the one hand, an attention …
range learning and Swin Transformer, termed as SwinFusion. On the one hand, an attention …
DIVFusion: Darkness-free infrared and visible image fusion
As a vital image enhancement technology, infrared and visible image fusion aims to
generate high-quality fused images with salient targets and abundant texture in extreme …
generate high-quality fused images with salient targets and abundant texture in extreme …
Visible and infrared image fusion using deep learning
Visible and infrared image fusion (VIF) has attracted a lot of interest in recent years due to its
application in many tasks, such as object detection, object tracking, scene segmentation …
application in many tasks, such as object detection, object tracking, scene segmentation …
SwinFuse: A residual swin transformer fusion network for infrared and visible images
The existing deep learning fusion methods mainly concentrate on convolutional neural
networks (CNNs), and few attempts are made with transformer. Meanwhile, the …
networks (CNNs), and few attempts are made with transformer. Meanwhile, the …
GAN-FM: Infrared and visible image fusion using GAN with full-scale skip connection and dual Markovian discriminators
A good result of infrared and visible image fusion should not only maintain significant
contrast for distinguishing targets from the backgrounds, but also contain rich scene textures …
contrast for distinguishing targets from the backgrounds, but also contain rich scene textures …
Dif-fusion: Towards high color fidelity in infrared and visible image fusion with diffusion models
Color plays an important role in human visual perception, reflecting the spectrum of objects.
However, the existing infrared and visible image fusion methods rarely explore how to …
However, the existing infrared and visible image fusion methods rarely explore how to …
Res2Fusion: Infrared and visible image fusion based on dense Res2net and double nonlocal attention models
Z Wang, Y Wu, J Wang, J Xu… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
Infrared and visible image fusion intends to generate a synthetic image with superior scene
representation and better visual perception. The existing deep learning-based fusion …
representation and better visual perception. The existing deep learning-based fusion …
DRF: Disentangled representation for visible and infrared image fusion
In this article, we propose a novel decomposition method by applying disentangled
representation for visible and infrared image fusion (DRF). According to the imaging …
representation for visible and infrared image fusion (DRF). According to the imaging …