Super-Resolutıon Image Generatıon From Earth Observatıon Satellıtes Usıng Generatıve Adversarıal Networks
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Date
2022-02-15Author
Gazel Bulut, Ezgi Burçin
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The spatial resolution is one of the main criteria representing the level of detail in an image.
The necessity for the high spatial resolution has increased with the development in satellite
technologies. Using modern sensors and optics is an expensive way to improve image spatial
resolution. Image super resolution is one of the most important computer vision research
topics that aims to obtain higher spatial resolution image(s) from one or more lower spatial
resolution ones. It is a cheaper and more effective way as it does not require any modification
to the camera hardware.
In this thesis, the Super-Resolution Generative Adversarial Networks (SRGAN) and the
Enhanced Super-Resolution Generative Adversarial Network (ESRGAN) both trained with
Google Earth were utilised for the super-resolution enhancement of Sentinel-2 and Göktürk-2
images. The results of the pre-trained deep learning models using the different data sources
with multi-sensor and multi-temporal characteristics were analyzed and their super resolution
performances were evaluated. The results show that the perceptual image quality of low
spatial resolution satellite images can be improved by using SRGAN and ESRGAN methods.