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Critical Review on Deep Learning and Smart Technologies for Image Super-Resolution | IEEE Conference Publication | IEEE Xplore

Critical Review on Deep Learning and Smart Technologies for Image Super-Resolution


Abstract:

Image super-resolution is an extremely useful way to improve the quality of an image. It is miracle that making use of the current signal processing and deep learning tec...Show More

Abstract:

Image super-resolution is an extremely useful way to improve the quality of an image. It is miracle that making use of the current signal processing and deep learning technologies, the image can look much appealing after the super-solution. This review paper is to highlight important techniques, especially to point out recent key contributions to make superior success of super-resolution of the recent years, especially on face super-resolution. We will start with a very brief and quick review on using conventional signal processing and classic learning approaches for super-resolution, and then concentrate on giving the advantages of deep learning, in particular, the recent powerful concepts on using latent vector and facial priors to achieve superior performance. Further topics of discussion include generative adversarial network (GAN), StyleGAN, latent space, facial priors and diffusion models. Our concentration is on the reasons for the success of these techniques. Attractive demonstrations on a few state-of-the-art models, including some of our work, are provided
Date of Conference: 01-04 November 2022
Date Added to IEEE Xplore: 20 December 2022
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Conference Location: Hong Kong, Hong Kong

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I. Introduction

Nowadays, a low resolution image gives us the impression of low-tech, old fashion, awkward style and uncertainty. This is particularly true if the image is used for advertisement, surveillance, medical diagnosis or object recognition. The low quality face image might devalue a person's beauty and faith. In order to relieve the problem we may turn the image into higher resolution, with super-resolution technology. Image super-resolution (SR) usually refers to an increase of the resolution of a single low-resolution (LR) image by up-sampling, deblurring and denoising, while the resultant high-resolution (HR) image should preserve the characteristics of the natural image, such as sharp edges and rich texture.

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1.
X. Li and M. T. Orchard, "New edge-directed interpolation", IEEE Trans. Image Process., vol. 10, no. 10, pp. 1521-1527, Oct. 2001.
2.
Wing-Shan Tam, Chi-Wah Kok and Wan-Chi Siu, "A Modified Edge Directed Interpolation for Images", Journal of Electronic Imaging, vol. 19, no. 1, pp. 13011_1-20, Jan-Mar 2010.
3.
Chi-Shing Wong and Wan-Chi Siu, "Improved Edge-directed Interpolation and Fast EDI for SDTV to HDTV Conversion", Proceedings, pp. 309-313, 23–27 August, 2010.
4.
L. Zhang and X. Wu, "An edge guided image interpolation algorithm via directional filtering and data fusion", IEEE Trans. Image Process., vol. 15, no. 8, pp. 2226-2238, Aug. 2006.
5.
X. Zhang and X. Wu, "Image interpolation by adaptive 2D autoregressive modeling and soft-decision estimation", IEEE Trans. Image Process., vol. 17, no. 6, pp. 887-896, Jun. 2008.
6.
X. Liu, D. Zhao, R. Xiong, S. Ma, W. Gao and H. Sun, "Image interpolation via regularized local linear regression", IEEE Trans. Image Process., vol. 20, no. 12, pp. 3455-69, Dec. 2011.
7.
K.W. Hung and W.C. Siu, "Robust soft-decision interpolation using weighted least squares", IEEE Trans. Image Process., vol. 21, no. 3, pp. 1061-1069, March 2012.
8.
W. Dong, L. Zhang, R. Lukac and G. Shi, "Sparse representation based image interpolation with nonlocal autoregressive modeling", IEEE Trans. Image Process., vol. 22, no. 4, pp. 1382-1394, Apr. 2013.
9.
J. Yang, J. Wright, T. Huang and Y. Ma, "Image super-resolution via sparse representation", IEEE Trans. Image Process., vol. 19, no. 11, pp. 2861-2873, Nov. 2010.
10.
K. Kim and Y. Kwon, "Single-image super-resolution using sparse regression and natural image prior", IEEE Trans. Pattern Anal. Mach. Intel., vol. 32, no. 6, pp. 1127-1133, Jun. 2010.
11.
Jun-jie Huang, Wan-Chi Siu and Tian-Rui Liu, "Fast Image Interpolation via Random Forests", IEEE Transactions on Image Processing, vol. 24, no. 10, pp. 3232-3245, October 2015.
12.
H. Chang, D.T. Yeung and Y. Xiong, "Super-resolution through neighbor embedding", Proceedings IEEE International Conference on Computer Vision and Pattern Recognition (CVPR 2004), vol. 1, 2004.
13.
D. Glasner, S. Bagon and M. Irani, "Super-resolution from a single image", Proceedings IEEE International Conference on Computer Vision (ICCV 2009), pp. 349-356, 2009.
14.
Wan-Chi Siu and Kwok-Wai Hung, "Review of Image Interpolation and Super-resolution", Proceedings Paper 337 Invited Paper 2012 APSIPA Annual Summit and Conf. (APSIPA-ASC2012), Dec. 3–6, 2012.
15.
He He and Wan-Chi Siu, "Single Image Super-Resolution using Gaussian Process Regression", IEEE CVPR 2011, pp. 449-456, June 20-24, 2011.
16.
Kwok-Wai Hung and Wan-Chi Siu, "Novel DCT-based Image Up-sampling using Learning-based Adaptive k-NN MMSE Estimation", IEEE Transactions on Circuits and Systems for Video Technology, vol. 24, no. 12, pp. 2018-2033, December 2014.
17.
R. Zeyde, M. Elad and M. Protter, "On single image scale-up using sparse-representations" in Curves and Surfaces, Berlin Heidelberg:Springer, pp. 711-730, 2012.
18.
R. Timofte, V. De and L. V. Gool, "Anchored neighborhood regression for fast example-based super-resolution", Proceedings IEEE International Conference on Computer Vision (ICCV 2013, pp. 1920-1927, 2013.
19.
L. He, H. Qi and R. Zaretzki, "Beta process joint dictionary learning for coupled feature spaces with application to single image super-resolution", Proceedings IEEE International Conference on Computer Vision and Pattern Recognition (CVPR 2013), pp. 345-352, 2013.
20.
C. Dong, C. C. Loy, L. He and X. Tang, "Learning a deep convolutional network for image super-resolution", Proceedings ECCV2014, pp. 184-199, 2014.
21.
Chao Dong, Chen Change Loy, Kaiming He and Xiaoou Tang, "Image super-resolution using deep convolutional networks", IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 38, no. 2, Feb 2016.
22.
Wenhan Yang, Jiashi Feng, Jianchao Yang, Fang Zhao, Jiaying Liu, Zongming Guo, et al., "Deep Edge Guided Recurrent Residual Learning for Image Super-Resolution", ECCV, Apr, 2016.
23.
Ding Liu, Zhaowen Wang, Bihan Wen, Jianchao Yang, Wei Han and Thomas S. Huang, "Robust Single Image Super-Resolution via Deep Networks with Sparse Prior", IEEE Transactions on Image Processing, 2016.
24.
R. Timofte, V. De and L. V. Gool, "A+: Adjusted Anchored Neighborhood Regression for Fast Super-Resolution", IEEE Asian Conference on Computer Vision (ACCV 2014), 2014.
25.
J. Kim, J. K. Lee and K. M. Lee, "Accurate image super-resolution using very deep convolutional networks", Proceedings of the IEEE conference on computer vision and pattern recognition, pp. 1646-1654, 2016.
26.
Y. Zhang, K. Li, K. Li, L. Wang, B. Zhong and Y. Fu, "Image super-resolution using very deep residual channel attention networks", Proceedings of the European conference on computer vision (ECCV), pp. 286-301, 2018.
27.
M. Haris, G. Shakhnarovich and N. Ukita, "Deep back-projection networks for single image super-resolution", IEEE Trans. on Pattern Analysis and Machine Intelligence, 2020.
28.
J. Liang, J. Cao, G. Sun, K. Zhang, L. Van Gool and R. Timofte, "Swinir: Image restoration using swin transformer", Proceedings of the IEEE/CVF International Conference on Computer Vision, pp. 1833-1844, 2021.
29.
A. Bulat and G. Tzimiropoulos, "Super-fan: Integrated facial landmark localization and super-resolution of real-world low resolution faces in arbitrary poses with gans", Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 109-117, 2018.
30.
Y. Chen, Y. Tai, X. Liu, C. Shen and J. Yang, "Fsrnet: End-to-end learning face super-resolution with facial priors", Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 2492-2501, 2018.

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References

References is not available for this document.