Combination of Single Image Super Resolution and Digital Inpainting Algorithms Based on GANs for Robust Image Completion

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Sparik Hayrapetyan
Gevorg Karapetyan
Viacheslav Voronin
Hakob Sarukhanyan

Abstract

Image inpainting, a technique of completing missing or corrupted image regions in undetected form, is an open problem in digital image processing. Inpainting of large regions using Deep Convolutional Generative Adversarial Nets (DCGAN) is a new and powerful approach. In described approaches the size of generated image and size of input image should be the same. In this paper we propose a new method where the size of input image with corrupted region can be up to 4 times larger than generated image.

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