Publication | Closed Access
Edge-Enhanced GAN for Remote Sensing Image Superresolution
532
Citations
53
References
2019
Year
Super-resolution ImagingImage AnalysisMachine LearningEngineeringImage ContoursGenerative Adversarial NetworkEdge-enhanced GanRemote SensingSingle-image Super-resolutionImage DenoisingComputational ImagingVideo Super-resolutionSuper-resolutionCurrent SuperresolutionDeep LearningImage HallucinationComputer VisionSynthetic Image Generation
The current superresolution (SR) methods based on deep learning have shown remarkable comparative advantages but remain unsatisfactory in recovering the high-frequency edge details of the images in noise-contaminated imaging conditions, e.g., remote sensing satellite imaging. In this paper, we propose a generative adversarial network (GAN)-based edge-enhancement network (EEGAN) for robust satellite image SR reconstruction along with the adversarial learning strategy that is insensitive to noise. In particular, EEGAN consists of two main subnetworks: an ultradense subnetwork (UDSN) and an edge-enhancement subnetwork (EESN). In UDSN, a group of 2-D dense blocks is assembled for feature extraction and to obtain an intermediate high-resolution result that looks sharp but is eroded with artifacts and noises as previous GAN-based methods do. Then, EESN is constructed to extract and enhance the image contours by purifying the noise-contaminated components with mask processing. The recovered intermediate image and enhanced edges can be combined to generate the result that enjoys high credibility and clear contents. Extensive experiments on Kaggle Open Source Data set, Jilin-1 video satellite images, and Digitalglobe show superior reconstruction performance compared to the state-of-the-art SR approaches.
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