Loading [MathJax]/extensions/MathMenu.js
Efficient Pyramidal GAN for Versatile Missing Data Reconstruction in Remote Sensing Images | IEEE Journals & Magazine | IEEE Xplore

Efficient Pyramidal GAN for Versatile Missing Data Reconstruction in Remote Sensing Images


Abstract:

Missing data reconstruction is a classical, yet challenging problem in remote sensing (RS) image processing due to the complex atmospheric environment and variability of ...Show More

Abstract:

Missing data reconstruction is a classical, yet challenging problem in remote sensing (RS) image processing due to the complex atmospheric environment and variability of satellite sensors. Most of the contemporary reconstruction methods either handle only one specific task or require supplementary data, while the single input for multitask reconstruction has not been explored yet. In this article, we propose a novel generative adversarial network-based unified framework for missing RS image reconstruction, which is capable of various reconstruction tasks given only single-source data as input. Specifically, we first propose a mask extraction network (MEN) to obtain a united soft mask, which represents the intrinsic prior under various scenarios and indicates not only location, but also context information. The versatility of mask extraction enables the multitask reconstruction of RS images. Besides, we propose a unified inpainting network (UIN) to repair diverse degraded images. Being specifically tailored for RS images, dilated pyramidal convolutions (DPCs) and an attention fusion mechanism (AFM) are introduced to further improve the feature extraction ability and thus exhaustly leveraging the single-input information. Extensive experiments demonstrate the uncompromising performance of the proposed method against state-of-the-art multiinput methods on diverse missing restoration. Moreover, further exploration shows the potential of the proposed method to utilize joint spatial–spectral–temporal information, which is evaluated to outperform existing competitors on remote sense images.
Article Sequence Number: 5626014
Date of Publication: 06 July 2022

ISSN Information:

Funding Agency:


I. Introduction

Image inpainting refers to the process of reconstituting damaged regions using the known information of images in a visually plausible manner. Driven by the rapid development of satellite technology, remote sensing (RS) images processing has attracted extensive attention from both academia and industry. Although many techniques have been developed for missing data reconstruction in RS imagery, it is still difficult due to the complex reconstruction scenarios, as shown in Fig. 1. These problems obscure land surface features, hampering subsequent image processing such as classification, detection, and segmentation [1]–[4]. Hence, recovering the missing information of RS imagery remains an urgent task. Most of the existing missing data reconstruction methods in RS images [5]–[7] utilize the high correlations or regular fluctuations between different sources of data, so as to repair the image. These contemporary approaches are mainly designed as a single-task solution with specialized architectures or loss functions, limiting their generalization ability in various scenes. Besides, these above models require other forms of data as supplementary input (e.g., spatial, temporal, or spectral images), which may be unavailable under certain circumstances. Very recently, a few universal reconstruction methods [8], [9] have been presented. However, these approaches are also data-intensive, while the additional images are not always acquirable and the fusion of multisource inputs requires tricky design. Nevertheless, these methods reconstruct the images from the respective feature extraction and fusion, which usually fail to learn reasonable feature representation when dealing with large-region missing. To sum up, contemporary state-of-the-art (SOTA) reconstruction methods either struggle with limited missing scenarios or require multisource information as supplementary inputs.

Exemplar reconstruction results of our method on versatile scenarios in RS images. From left to right, we show the corrupted input image, the extracted mask, and reasonable outputs of our model without any postprocessing.

Contact IEEE to Subscribe

References

References is not available for this document.