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LUMINANCE-PRESERVING VISIBLE AND NEAR-INFRARED IMAGE FUSION NETWORK WITH EDGE GUIDANCE

Ruoxi Zhu, Yi Ling, Xiankui Xiong, Dong Xu, Xuanpeng Zhu, Yibo Fan

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Lecture 09 Oct 2023

Near-infrared (NIR) images and visible (VIS) images can provide mutually complementary information for each other, thus the fusion of the two modalities can create images of high quality even in adverse conditions. However, the luminance of NIR and VIS images may be inconsistent in some regions, resulting in color distortion and unrealistic appearance in the fused images. The existing methods perform poorly at luminance retention. Aiming at the problem and based on deep learning framework, we propose an edge-guided method which can be applied to the image fusion network. Edge maps are utilized as prior knowledge of images to boost the performance of the neural network. Additionally, we propose a luminance-preserving loss function combined with max-edge loss to further improve the image quality. Experimental results show the superiority of our method. Codes will be released after acceptance.

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  • SPS
    Members: Free
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  • SPS
    Members: Free
    IEEE Members: $11.00
    Non-members: $15.00