Lingran An1, Fengzhi Dai2, Linghe An3
14th Department of Basic, North China Computing Technology Institute, Beijing,
100083, China
2College of Electronic Information and Automation, Tianjin University of
Science and Technology, China
3Changchun University of Science and Technology, China
pp. 163-167
ABSTRACT
The traditional super-resolution method has limited ability of feature
extraction and feature expression, which cannot meet the requirements of
high quality image in practical application. This paper mainly applies
the relevant theories of deep learning to image super-resolution reconstruction
technology. By comparing three classical network models used for image
super-resolution (SR), finally a generative adversarial network (GAN) is
selected to implement image super-resolution, which is called SRGAN. SRGAN
consists of a generator and a discriminator that uses both perceived loss
and counter loss to enhance the realism of the output image in detail.
Compared with other algorithms, although the improvement of PSNR and SSIM
values of the SGRAN network obtained by the final training is not obvious,
the output high-resolution images are the best in the subjective feelings
of human eyes, and the reconstruction effect in the image details is far
higher than that of other networks.
ARTICLE INFO
Article History
Received 25 October 2019
Accepted 17 August 2020
Keywords
Super-resolution
Deep learning
Neural network
Generative adversarial network
JAALR1401
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