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DIDFuse: Deep Image Decomposition for Infrared and Visible Image Fusion

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Infrared and visible image fusion, a hot topic in the field of image processing, aims at obtaining fused images keeping the advantages of source images. This paper proposes a novel auto-encoder (AE) based fusion network. The core idea is that the encoder decomposes an image into background and detail feature maps with low- and high-frequency information, respectively, and that the decoder recovers the original image. To this end, the loss function makes the background/detail feature maps of source images similar/dissimilar. In the test phase, background and detail feature maps are respectively merged via a fusion module, and the fused image is recovered by the decoder. Qualitative and quantitative results illustrate that our method can generate fusion images containing highlighted targets and abundant detail texture information with strong robustness and meanwhile surpass state-of-the-art (SOTA) approaches.

Zixiang Zhao, Shuang Xu, Chunxia Zhang, Junmin Liu, Pengfei Li, Jiangshe Zhang• 2020

Related benchmarks

TaskDatasetResultRank
Semantic segmentationMFNet (test)
mIoU43.3
134
Semantic segmentationFMB (test)
mIoU50.6
59
Object DetectionM3FD dataset--
48
Object DetectionM³FD (test)
mAP@0.5 (Full)82.09
34
Infrared and Visible Image FusionTNO image fusion
MI (Mutual Information)15.3
30
Semantic segmentationFMB
mIoU0.506
26
Infrared and Visible Image FusionFLIR image fusion
EN7.344
9
Infrared and Visible Image FusionRGB-NIR Scene Dataset
EN7.357
9
Multimodal Image FusionM3FD (test)
Entropy (EN)6.13
8
Multimodal Image FusionRoadScene (test)
EN6.67
8
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