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Image Inpainting Using AutoEncoder and Guided...
Journal article

Image Inpainting Using AutoEncoder and Guided Selection of Predicted Pixels

Abstract

Image inpainting is one of the most important ways to enhance corrupted digital images or pictures with missing pixels. For this purpose, different methods have been proposed. Some methods use the information of neighboring pixels to reconstruct the image. However, recent advances in deep learning have shown that receiving reasonable structural and semantic details from images can solve this problem. In this paper, we propose a network for image inpainting. This network, similar to U-Net, extracts various features from images, leading to better results. We improve the final results by replacing the damaged pixels with the recovered pixels of the output images. Our experimental results show that this method produces high-quality results compare to the traditional methods.

Authors

Givkashi MH; Hadipour M; PariZanganeh A; Nabizadeh Z; Karimi N; Samavi S

Journal

, Vol. 00, , pp. 700–704

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

May 19, 2022

DOI

10.1109/icee55646.2022.9827427
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