Abstract

Panchromatic (PAN) images contain abundant spatial information that is useful for earth observation, but always suffer from low-resolution ( LR) due to the sensor limitation and large-scale view field. The current super-resolution (SR) methods based on traditional attention mechanism have shown remarkable advantages but remain imperfect to reconstruct the edge details of SR images. To address this problem, an improved SR model which involves the self-attention augmented Wasserstein generative adversarial network ( SAA-WGAN) is designed to dig out the reference information among multiple features for detail enhancement. We use an encoder-decoder network followed by a fully convolutional network (FCN) as the backbone to extract multi-scale features and reconstruct the High-resolution (HR) results. To exploit the relevance between multi-layer feature maps, we first integrate a convolutional block attention module (CBAM) into each skip-connection of the encoder-decoder subnet, generating weighted maps to enhance both channel-wise and spatial-wise feature representation automatically. Besides, considering that the HR results and LR inputs are highly similar in structure, yet cannot be fully reflected in traditional attention mechanism, we, therefore, designed a self augmented attention (SAA) module, where the attention weights are produced dynamically via a similarity function between hidden features; this design allows the network to flexibly adjust the fraction relevance among multi-layer features and keep the long-range inter information, which is helpful to preserve details. In addition, the pixel-wise loss is combined with perceptual and gradient loss to achieve comprehensive supervision. Experiments on benchmark datasets demonstrate that the proposed method outperforms other SR methods in terms of both objective evaluation and visual effect.

Highlights

  • Introduction iationsPanchromatic (PAN) images have been widely used in various applications, such as weather forecasts, environmental monitor, and earth observation

  • We propose a WGAN-based network (SAA-WGAN) for PAN image SR, which is integrated with the encode-decode structure and convolutional block attention module (CBAM)

  • We test the performance of self augmented attention (SAA)-WGAN and the castrated model without SAA

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Summary

Introduction

Introduction iationsPanchromatic (PAN) images have been widely used in various applications, such as weather forecasts, environmental monitor, and earth observation. Since the PAN images are always taken from space satellites with a large field of view, their spatial resolution is usually quite limited, and details of ground objects, for this reason, cannot be well distinguished. To resolve this problem, recent works began to focus on the superresolution (SR) of PAN images. Due to the limitation of sensors, the PAN images captured from satellite sensors suffers from the heavy image degradation, which is an urgent need for SR to improve resolution and rich image texture through image processing algorithms. The conventional supervised learning model tries to minimize the error between ground truth and SR results, whereas this design cannot well utilize the difference

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