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RFN-Nest: An end-to-end residual fusion network for infrared and visible images

About

In the image fusion field, the design of deep learning-based fusion methods is far from routine. It is invariably fusion-task specific and requires a careful consideration. The most difficult part of the design is to choose an appropriate strategy to generate the fused image for a specific task in hand. Thus, devising learnable fusion strategy is a very challenging problem in the community of image fusion. To address this problem, a novel end-to-end fusion network architecture (RFN-Nest) is developed for infrared and visible image fusion. We propose a residual fusion network (RFN) which is based on a residual architecture to replace the traditional fusion approach. A novel detail-preserving loss function, and a feature enhancing loss function are proposed to train RFN. The fusion model learning is accomplished by a novel two-stage training strategy. In the first stage, we train an auto-encoder based on an innovative nest connection (Nest) concept. Next, the RFN is trained using the proposed loss functions. The experimental results on public domain data sets show that, compared with the existing methods, our end-to-end fusion network delivers a better performance than the state-of-the-art methods in both subjective and objective evaluation. The code of our fusion method is available at https://github.com/hli1221/imagefusion-rfn-nest

Hui Li, Xiao-Jun Wu, Josef Kittler• 2021

Related benchmarks

TaskDatasetResultRank
Object DetectionM3FD dataset
mAP@0.579.6
48
Infrared-Visible Image FusionRoadScene (test)
Average Gradient (AG)2.62
40
Infrared and Visible Image FusionTNO image fusion--
30
Infrared-Visible Image FusionLLVIP (test)
EN6.37
23
Image FusionM3FD (test)
Inference Time (s)0.163
10
Image FusionMSRS (test)
Entropy5.89
10
Image FusionHarvard Medicine Dataset (test)
Entropy (EN)5.34
10
Image FusionTNO (test)
Inference Time (s)0.143
10
Image FusionMSRS (test)
Inference Time (s)0.136
10
Image FusionRoadScene (test)
Inference Time (s)0.127
10
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