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This article presents a comparison of Generative Adversarial Networks for the image super-resolution problem. This is a relevant problem in several research areas and many real-world applications. The research consists of four steps: selecting successful Generative Adversarial Networks architectures, implementing two promising models, evaluating their image quality results, and analyzing their transfer learning capabilities. The main results indicate that both models are able to compute accurate results, with a reasonable deviation from state-of-the-art results and good transfer capabilities.
Cobelli et al. (Wed,) studied this question.