This paper presents a novel Res2Net-based fusion framework for infrared and visible images. The proposed fusion model has three parts: an encoder, a fusion layer and a decoder, respectively. The Res2Net-based encoder is used to extract multi-scale features of source images, the paper introducing a new training strategy for training a Res2Net-based encoder that uses only a single image. Then, a new fusion strategy is developed based on the attention model. Finally, the fused image is reconstructed by the decoder. The proposed approach is also analyzed in detail. Experiments show that our method achieves state-of-the-art fusion performance in objective and subjective assessment by comparing with the existing methods
In this paper, we design an infrared (IR) and visible (VIS) image fusion via unsupervised dense netw...
In image fusion approaches, feature extraction and processing are key tasks, and the fusion performa...
This paper presents an algorithm for infrared and visible image fusion using significance detection ...
Pixel-level image fusion is an effective way to fully exploit the rich texture information of visibl...
Image fusion model based on autoencoder network gets more attention because it does not need to desi...
Infrared and visible image fusion is an effective method to solve the lack of single sensor imaging....
Abstract Infrared and visible images come from different sensors, and they have their advantages and...
Image fusion operation is beneficial to many applications and is also one of the most common and cri...
In infrared (IR) and visible image fusion, the significant information is extracted from each source...
This paper presents an image fusion network based on a special residual network and attention mechan...
Although the traditional image fusion method can obtain rich image results, obvious artificial noise...
Infrared images have good anti-environmental interference ability and can capture hot target informa...
Infrared and visible image fusion is a hot topic due to the perfect complementarity of their informa...
To improve the fusion quality of infrared and visible images and highlight target and scene details,...
Visible images contain clear texture information and high spatial resolution but are unreliable unde...
In this paper, we design an infrared (IR) and visible (VIS) image fusion via unsupervised dense netw...
In image fusion approaches, feature extraction and processing are key tasks, and the fusion performa...
This paper presents an algorithm for infrared and visible image fusion using significance detection ...
Pixel-level image fusion is an effective way to fully exploit the rich texture information of visibl...
Image fusion model based on autoencoder network gets more attention because it does not need to desi...
Infrared and visible image fusion is an effective method to solve the lack of single sensor imaging....
Abstract Infrared and visible images come from different sensors, and they have their advantages and...
Image fusion operation is beneficial to many applications and is also one of the most common and cri...
In infrared (IR) and visible image fusion, the significant information is extracted from each source...
This paper presents an image fusion network based on a special residual network and attention mechan...
Although the traditional image fusion method can obtain rich image results, obvious artificial noise...
Infrared images have good anti-environmental interference ability and can capture hot target informa...
Infrared and visible image fusion is a hot topic due to the perfect complementarity of their informa...
To improve the fusion quality of infrared and visible images and highlight target and scene details,...
Visible images contain clear texture information and high spatial resolution but are unreliable unde...
In this paper, we design an infrared (IR) and visible (VIS) image fusion via unsupervised dense netw...
In image fusion approaches, feature extraction and processing are key tasks, and the fusion performa...
This paper presents an algorithm for infrared and visible image fusion using significance detection ...