Abstract
In recent years, artificial intelligence has drawn the attention of the world, and the contributions of deep learning is enormous. The convolution neural network (CNN) provides more opportunities and better choices for our work. This paper explores the potential of deep neural networks in single image super-resolution (SR). In fact, some models based on deep neural networks have achieved remarkable performance in the reconstruction accuracy of individual images, but there is more room for development. In this paper, we removed the bicubic interpolation operation which is handcraft up-sampling and not intelligent enough. And we introduced deconvolution layer instead of up-sampling layer. In addition, we designed the local polymorphic parallel network and many-to-many connections. On the basis of this theory, we have carried out a simulation experiment to prove the excellent effectiveness of the proposed method.








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Park SC, Min KP, Kang MG (2003) Super-resolution image reconstruction: a technical overview. IEEE Signal Process Mag 20(3):21–36
Timofte R, Lee KM, Wang X et al (2017) NTIRE 2017 challenge on single image super-resolution: methods and results. In: Computer vision and pattern recognition workshops (CVPRW 2017). Maryland, pp 1110–1121
Hayat K (2017) Super-resolution via deep learning. arXiv:1706.09077
Dong C, Chen CL, He K et al (2014) Learning a deep convolutional network for image super-resolution. In: European conference on computer vision (ECCV 2014). Zurich, pp 184– 199
Dong C, Chen CL, Tang X (2016) Accelerating the super-resolution convolutional neural network. In: European conference on computer vision (ECCV 2016). Amsterdam, pp 391–407
Schulter S, Leistner C, Bischof H (2015) Fast and accurate image upscaling with super-resolution forests. In: IEEE conference on computer vision and pattern recognition (CVPR 2015). Boston, pp 3791–3799
Shi W, Caballero J, Huszar F et al (2016) Real-time single image and video super-resolution using an efficient sub-pixel convolutional neural network. In: IEEE conference on computer vision and pattern recognition (CVPR 2016). Las Vegas, pp 1874–1883
Goodfellow IJ, Pougetabadie J, Mirza M et al (2014) Generative adversarial networks. In: Neural information processing systems (NIPS 2014). Montréal, pp 2672–2680
He K, Zhang X, Ren S et al (2016) Deep residual learning for image recognition. In: IEEE conference on computer vision and pattern recognition (CVPR 2016). Las Vegas, pp 770–778
Tai Y, Yang J, Liu X (2017) Image super-resolution via deep recursive residual network. In: IEEE conference on computer vision and pattern recognition (CVPR 2017). Honolulu, pp 2790–2798
Lim B, Son S, Kim H et al (2017) Enhanced deep residual networks for single image super-resolution. In: Computer vision and pattern recognition workshops (CVPRW 2017). Honolulu, pp 1132–1140
Ledig C, Wang Z, Shi W et al (2017) Photo-realistic single image super-resolution using a generative adversarial network. In: IEEE conference on computer vision and pattern recognition (CVPR 2017). Honolulu, pp 105–114
Lin M, Chen q, Yan S (2013) Network in network. Computer Science
Zeiler MD, Krishnan D, Taylor GW et al (2010) Deconvolutional networks. In: IEEE conference on computer vision and pattern recognition (CVPR 2010). San Francisco, pp 2528–2535
Zeiler MD, Taylor GW, Fergus R (2011) Adaptive deconvolutional networks for mid and high level feature learning. In: International conference on computer vision (ICCV 2011). Barcelona, pp 2018–2025
Tang Y, Gong W, Yi Q, et al (2018) Combining sparse coding with structured output regression machine for single image super-resolution. Inf Sci 430(10):577–598
Zhang Y, Fan Q, Bao F, et al (2018) Single-image super-resolution based on rational fractal interpolation. IEEE Trans Image Process 27(8):3782–3797
Acknowledgments
This work was supported by the Fundamental Research Funds for the Central Universities (no. 2017XKZD03).
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Zeng, K., Ding, S. & Jia, W. Single image super-resolution using a polymorphic parallel CNN. Appl Intell 49, 292–300 (2019). https://doi.org/10.1007/s10489-018-1270-7
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DOI: https://doi.org/10.1007/s10489-018-1270-7