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Infrared and visible image fusion via dual-domain adversarial learning

2022-10-20 05:01:20
Xiaowen Liu, Renhua Wang, Hongtao Huo, Jing Li, Xin Yang

Abstract

The GAN-based infrared and visible image fusion methods have gained ever-increasing attention due to its effectiveness and superiority. However, the existing methods adopt the global pixel distribution of source images as the basis for discrimination, which fails to focus on the key modality information. Moreover, the dual-discriminator based methods suffer from the confrontation between the discriminators. To this end, we propose a dual-domain adversarial based infrared and visible image fusion method (D2AFGAN). In this method, two unique discrimination strategies are designed to improve the fusion performance. Specifically, we introduce the spatial attention modules (SAM) into the generator to obtain the spatial attention maps, and then the attention maps are utilized to force the discrimination of infrared images to focus on the target regions. In addition, we extend the discrimination range of visible information to the wavelet subspace, which can force the generator to restore the high-frequency details of visible images. Ablation experiments demonstrate the effectiveness of our method in eliminating the confrontation between discriminators. And the comparison experiments on public datasets demonstrate the effectiveness and superiority of the proposed method.

Abstract (translated)

URL

https://arxiv.org/abs/2210.11018

PDF

https://arxiv.org/pdf/2210.11018.pdf


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