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An Approach to Super-Resolution of Sentinel-2 Images Based on Generative Adversarial Networks

2019-12-12 15:04:25
Kexin Zhang, Gencer Sumbul, Begüm Demir

Abstract

This paper presents a Generative Adversarial Network based super-resolution (SR) approach (which is called as S2GAN) to enhance the spatial resolution of Sentinel-2 spectral bands. The proposed approach consists of two main steps. The first step aims to increase the spatial resolution of 20m and 60m bands by the scaling factor of 2 and 6, respectively. To this end, we introduce a generator network that performs SR on the lower resolution bands with the guidance of 10m bands by utilizing the convolutional layers with residual connections and a long skip-connection between inputs and outputs. The second step aims to distinguish SR bands from their ground truth bands. This is achieved by the proposed discriminator network, which alternately characterizes the high level features of the two sets of bands and applying binary classification on the extracted features. Then, we formulate the adversarial learning of the generator and discriminator networks as a min-max game. In this learning procedure, the generator aims to produce realistic SR bands as much as possible so that the discriminator will incorrectly classify SR bands. Experimental results obtained on different Sentinel-2 images show the effectiveness of the proposed approach compared to both conventional and deep learning based SR approaches.

Abstract (translated)

URL

https://arxiv.org/abs/1912.06013

PDF

https://arxiv.org/pdf/1912.06013.pdf


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