Image inpainting: A review
Omar Elharrouss, Noor Almaadeed, Somaya Al-Maadeed, Younes Akbari

TL;DR
This paper reviews existing image inpainting methods, categorizing them into three groups, and compiles datasets and evaluation metrics to aid researchers in comparing techniques and advancing the field.
Contribution
It provides a comprehensive classification of inpainting methods and a curated list of datasets, addressing the lack of dataset resources for researchers.
Findings
Evaluation of methods on various datasets
Comparison of performance metrics
Identification of dataset gaps
Abstract
Although image inpainting, or the art of repairing the old and deteriorated images, has been around for many years, it has gained even more popularity because of the recent development in image processing techniques. With the improvement of image processing tools and the flexibility of digital image editing, automatic image inpainting has found important applications in computer vision and has also become an important and challenging topic of research in image processing. This paper is a brief review of the existing image inpainting approaches we first present a global vision on the existing methods for image inpainting. We attempt to collect most of the existing approaches and classify them into three categories, namely, sequential-based, CNN-based and GAN-based methods. In addition, for each category, a list of methods for the different types of distortion on the images is presented.…
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