4.7 Article

Saliency-Guided Remote Sensing Image Super-Resolution

Journal

REMOTE SENSING
Volume 13, Issue 24, Pages -

Publisher

MDPI
DOI: 10.3390/rs13245144

Keywords

salient object detection; image super-resolution; generative adversarial network; remote sensing image

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This paper introduces a saliency-guided remote sensing image super-resolution (SG-GAN) method that utilizes saliency maps to guide the recovery process, achieving the generation of high-resolution salient objects in remote sensing images while maintaining competitive PSNR and SSIM values. Experimental results show the superiority of SG-GAN in restoring structures and generating remote sensing super-resolution images.
Deep learning has recently attracted extensive attention and developed significantly in remote sensing image super-resolution. Although remote sensing images are composed of various scenes, most existing methods consider each part equally. These methods ignore the salient objects (e.g., buildings, airplanes, and vehicles) that have more complex structures and require more attention in recovery processing. This paper proposes a saliency-guided remote sensing image super-resolution (SG-GAN) method to alleviate the above issue while maintaining the merits of GAN-based methods for the generation of perceptual-pleasant details. More specifically, we exploit the salient maps of images to guide the recovery in two aspects: On the one hand, the saliency detection network in SG-GAN learns more high-resolution saliency maps to provide additional structure priors. On the other hand, the well-designed saliency loss imposes a second-order restriction on the super-resolution process, which helps SG-GAN concentrate more on the salient objects of remote sensing images. Experimental results show that SG-GAN achieves competitive PSNR and SSIM compared with the advanced super-resolution methods. Visual results demonstrate our superiority in restoring structures while generating remote sensing super-resolution images.

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