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Natural and realistic single image super-resolution with explicit natural manifold discrimination

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Author(s)
Soh, Jae WoongPark, Gu YongJo, JunhoCho, Nam Ik
Type
Conference Paper
Citation
32nd IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2019, pp.8114 - 8123
Issued Date
2019-06-16
Abstract
Recently, many convolutional neural networks for single image super-resolution (SISR) have been proposed, which focus on reconstructing the high-resolution images in terms of objective distortion measures. However, the networks trained with objective loss functions generally fail to reconstruct the realistic fine textures and details that are essential for better perceptual quality. Recovering the realistic details remains a challenging problem, and only a few works have been proposed which aim at increasing the perceptual quality by generating enhanced textures. However, the generated fake details often make undesirable artifacts and the overall image looks somewhat unnatural. Therefore, in this paper, we present a new approach to reconstructing realistic super-resolved images with high perceptual quality, while maintaining the naturalness of the result. In particular, we focus on the domain prior properties of SISR problem. Specifically, we define the naturalness prior in the low-level domain and constrain the output image in the natural manifold, which eventually generates more natural and realistic images. Our results show better naturalness compared to the recent super-resolution algorithms including perception-oriented ones. © 2019 IEEE.
Publisher
IEEE Computer Society
Conference Place
US
Long Beach
URI
https://scholar.gist.ac.kr/handle/local/34059
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