Abstract

A novel super-resolution (SR) method is proposed in this paper to reconstruct high-resolution (HR) remote sensing images. Different scenes of remote sensing images have great disparities in structural complexity. Nevertheless, most existing SR methods ignore these differences, which increases the difficulty to train an SR network. Therefore, we first propose a preclassification strategy and adopt different SR networks to process the remote sensing images with different structural complexity. Furthermore, the main edge of low-resolution images are extracted as the shallow features and fused with the deep features extracted by the network to solve the blurry edge problem in remote sensing images. Finally, an edge loss function and a cycle consistent loss function are added to guide the training process to keep the edge details and main structures in a reconstructed image. A large number of comparative experiments on two typical remote sensing images datasets (WHURS and AID) illustrate that our approach achieves better performance than state-of-the-art approaches in both quantitative indicators and visual qualities. The peak signal-to-noise ratio (PSNR) value and the structural similarity (SSIM) value using the proposed method are improved by 0.5353 dB and 0.0262, respectively, over the average values of five typical deep learning methods on the ×4 AID testing set. Our method obtains satisfactory reconstructed images for the subsequent applications based on HR remote sensing images.

Highlights

  • Because remote sensing images are obtained with long optical paths, one pixel in a remote sensing image generally corresponds to a size of several square meters on the ground

  • We divide remote sensing images into three classes according to the structural complexity of scenes

  • In view of the characteristics of remote sensing images, we propose an SR method for remote sensing images using preclassification strategy and deep–shallow features fusion

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Summary

Introduction

Because remote sensing images are obtained with long optical paths, one pixel in a remote sensing image generally corresponds to a size of several square meters on the ground. The remote sensing images generally are low-resolution (LR), which brings a lot of inconvenience to the later advanced processing, e.g., object detection [1,2]. It is significant to apply super-resolution (SR) methods to improve the resolutions of remote sensing images. The SR research is mainly for natural images and these SR methods are not appropriate for remote sensing images [5]. The SR methods for natural images will not obtain satisfactory effect when they are directly applied to remote sensing images.

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