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Deep Learning for Multiple-Image Super-Resolution of Sentinel-2 Data

Michał Kawulok, Tomasz Tarasiewicz, Jakub Nalepa, Diana Tyrna, Daniel Kostrzewa

202119 citationsDOI

Abstract

Super-resolution (SR) reconstruction is a common term for techniques aimed at generating a high-resolution image from a single low-resolution image or multiple images showing the same scene. Multiple-image SR benefits from data fusion which allows for more accurate reconstruction of the underlying high-resolution information. Deep learning is extensively used for single-image SR, but its application to multiple-image SR is much less explored. Recently, several deep networks were proposed to enhance Proba-V images, and in this paper, we focus on employing them to super-resolve the Sentinel-2 images. In particular, we investigate the influence of the training data, including real and simulated low-resolution images, on the final SR outcome. Also, we make the simulated data publicly available.

Topics & Concepts

Artificial intelligenceComputer scienceFocus (optics)SuperresolutionImage (mathematics)Deep learningComputer visionImage resolutionImage fusionResolution (logic)Iterative reconstructionHigh resolutionPattern recognition (psychology)Remote sensingGeologyOpticsPhysicsAdvanced Image Processing TechniquesImage and Signal Denoising MethodsAdvanced Image Fusion Techniques
Deep Learning for Multiple-Image Super-Resolution of Sentinel-2 Data | Litcius