2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) 2020
DOI: 10.1109/cvpr42600.2020.00753
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Contextual Residual Aggregation for Ultra High-Resolution Image Inpainting

Abstract: Fig. 1: Inpainting results on ultra high-resolution images.

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Cited by 270 publications
(228 citation statements)
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References 34 publications
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“…Previous image inpainting methods, such as exemplar-based inpainting, can find the approximate nearest neighbor to match image patches [16]. With the rise of learning-based image inpainting methods, the inpainting results have become more realistic and reasonable [24].…”
Section: B Generative Adversarial Inpaintingmentioning
confidence: 99%
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“…Previous image inpainting methods, such as exemplar-based inpainting, can find the approximate nearest neighbor to match image patches [16]. With the rise of learning-based image inpainting methods, the inpainting results have become more realistic and reasonable [24].…”
Section: B Generative Adversarial Inpaintingmentioning
confidence: 99%
“…• Combining the Two: The third class of approaches attempted to combine the two to overcome the limitations of replication methods or modeling methods. Not only do these methods learned to build image distributions in a data-driven manner, but they were also designed to explicitly borrow patches or features from background regions [16]. However, when the training dataset and the content of the processed images do not match, the generated image quality is not satisfactory.…”
Section: B Generative Adversarial Inpaintingmentioning
confidence: 99%
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“…At each level of the decoder, these attention maps are concatenated with the decoder features coming from the encoder path. Finally, in [34], the authors adopt most of the techniques described above, including a coarse-to-fine architecture, attention and gated convolutions, with an approach aimed at performing inpainting on images of arbitrary size. This is achieved by downsampling the image and performing inpainting, and subsequently upscaling just the inpainted region to the original resolution, and pasting it on top of the original image.…”
Section: A Convolutional Neural Network For Inpaintingmentioning
confidence: 99%
“…It can be used for restoring damaged paintings, removing unwanted objects, and generating new content for incomplete scenes. Many approaches have been proposed for this non-trivial task, including diffusion-based methods [8,13,14,113], patch-based methods [10,32,33,89]) and learning-based methods [86,123,139,146,208,214]. While these approaches rapidly improve the completion results, they produce only one "optimal" result for a given masked image and do not have the capacity to generate a variety of semantically meaningful results.…”
Section: Introductionmentioning
confidence: 99%