COMBINING SUPER-RESOLUTION ALGORITHM (GAUSSIAN DENOISING AND KERNEL BLURRING) AND COMPARING WITH CAMERA SUPER- RESOLUTION
DOI:
https://doi.org/10.30818/jitu.4.1.3914Keywords:
Camera, Image, ResolutionAbstract
A good Super Resolution (SR) algorithm is one of the key successes to filter frequency that creates noise to a picture. Previous research that has published was concluded the Camera SR is the best algorithm to filter this frequency based on their Peak Signal to Noise Ratio (PSNR) and Mean Square Error (MSE) results. However, the current approach to achieving high resolution have not yielded enough signal to filter unwanted pixel. Hence, there is a need to find a better approach to those leads to higher resolution through lower noise reduction. To fulfill this need, this thesis proposed to utilize two proven SR algorithms; Gaussian Denoising and Kernel Blurring. This thesis will not only be obtaining these two existing algorithms in a stand-alone form but hence the combination of them (two combinations) will also be obtained as the new possible algorithms that can be utilized to filter frequency that create noise to a picture. To reach the research objective, the method that will be used is by training a total of four algorithms one by one to a public data set that contains 200 pictures and gets the PSNR and MSE results of each algorithm. Comprehensive experimental results show that all those four SR algorithms outperform previous SR algorithms in commonly used data set with variously higher PSNR by 21% and lower MSE by 5%.
References
Kai Zhang, Wang meng Zuo, and Lei Zhang. Learning a single convolutional super-resolution network for multiple degradations. In CVPR, 2018.
Xin Deng. Enhancing image quality via style transfer for single image super-resolution. IEEE Signal Processing Letters, 25(4):571–575, 2018.
Adrian Bulat and Georgios Tzimiropoulos. Super-fan: Integrated facial landmark localization and super-resolution of real-world low resolution faces in arbitrary poses with gans. In CVPR, 2018.
Muhammad Haris, Gregory Shakhnarovich, and Norimichi Ukita. Deep back-projection networks for super-resolution. In CVPR, 2018.
Yulun Zhang, Kunpeng Li, Kai Li, Lichen Wang, Bineng Zhong, and Yun Fu. Image super-resolution using very deep residual channel attention networks. In ECCV, 2018.
Chang Chen, Zhiwei Xiong, Xinmei Tian, Zheng-Jun Zha and Feng Wu. Camera Lens Super-Resolution. In CVPR, 2019. [7] M. S. M. Sajjadi, B. Schlkopf, and M. Hirsch. Enhancenet: Single image super-resolution through automated texture synthesis. In ICCV, 2017.
Xintao Wang, Ke Yu, Chao Dong, and Chen Change Loy. Recovering realistic texture in image super-resolution by deep spatial feature transform. In CVPR, 2018.
Jianchao Yang, John Wright and Thomas S. Huang,Yi Ma. Image Super Resolution Via Sparse Representation. In IEEE Transaction on Image Processing, 19(11):2861-2873, November 2010.
Fei Zhou, Wenming Yang, and Qingmin Liao. Interpolation-Based Image Super-resolution Using Multisurface Fitting. IN IEEE Transaction on Image Processing, 21(7):3312-18. July 2012.
Christian Ledig, Lucas Theis, Ferenc Huszr, Jose Caballero, Andrew Cunningham, Alejandro Acosta, Andrew Aitken, Alykhan Tejani, Johannes Totz, Zehan Wang, and Wenzhe Shi. Photo-realistic single image super-resolution using a generative adversarial network. In CVPR, 2017.
Wang X, Wang H, Yang J, Zhang Y. A new method for nonlocal means image denoising using multiple images. In Computational Visual Media, 2(1), 2016.
Mafi M, Izquierdo W, Cabrerizo M, Barreto A, Andrian J, David N and Adjouadi M. Survey on mixed impulse and Gaussian denoising filters. In IET Image Processing, 14(16), 2020.
Jiwon Kim, Jung Kwon Lee, and Kyoung Mu Lee. Accurate image super-resolution using very deep convolutional networks. In CVPR, 2016.
He He and Wan-Chi Siu. Single Image Super-Resolution using Gaussian Process Regression. In Proceedings of the IEEEComputer Society Conference on Computer Vision and Pattern Recognition , 5995713:449-456, 2011, Colorado Springs, CO, USA.
Yulun Zhang, Yapeng Tian, Yu Kong, Bineng Zhong, and Yun Fu. Residual dense network for image super-resolution. In CVPR, 2018.
Seyyedyazdi, S and Hassanpour, H. Improving super- resolution techniques via employing blurriness information of the image. In International Journal of Engineering, Transactions B: Applications, 31(2), 2018.
Zhao X, Wu Y, Tian J and Zhang H. Single image super- resolution via blind blurring estimation and anchored space mapping. In Computational Visual Media, 2(1), 2016.
Angelis G, Gillam J, Kyme A, Fulton R and Meikle S. Image-based modelling of residual blurring in motion corrected small animal PET imaging using motion dependent point spread functions. In Biomedical Physics and Engineering Express, 4(3), 2018.
Jiang X, Wang L, Luo X, Wang S and Luo S. Forward- motion blurring kernel based on generalized motion blurring model. In Ruan Jian Xue Bao/Journal of Software, 27(8), 2016. [21] Awad A. Denoising images corrupted with impulse, Gaussian, or a mixture of impulse and Gaussian noise. In Engineering Science and Technology, an International Journal, 22(3), 2019.
Yang W, Yuan T, Wang W, Zhou F and Liao Q. Single- Image Super-Resolution by Subdictionary Coding and Kernel Regression. In IEEE Transactions on Systems, Man, and Cybernetics: Systems, 47(9), 2017.
Vandel Maha Putra Salawazo, Desta Putra Jaya Gea, Richard Foarota Gea, Fadhillah Azmi. Implementasi Metode CNN pada Pengenalan Objek Video CCTV. In Jurnal Mantik Penusa, 3(11), 2019.
Mariska Marlia Dwi Purnamawati. Denoising Pada Citra Grayscale Menggunakan Bayesian Tresholding dan Gaussian Noise. In SEMANTIK, 2013.
Tugiono, Hafizah, Asyahri Hadi Nasyuha. Implementasi Pengolahan Citra dengan menggunakan Teknik Konvolusi Untuk Pelembutan Citra (Image Smoothing) dalam Operasi Reduksi Noise. In Jurnal Ilmiah SAINTIKOM, 16(2), 2017.
Wei-Sheng Lai, Jia-Bin Huang, Narendra Ahuja, and MingHsuan Yang. Deep laplacian pyramid networks for fast and accurate super-resolution. In CVPR, 2017.
Bee Lim, Sanghyun Son, Heewon Kim, Seungjun Nah, and Kyoung Mu Lee. Enhanced deep residual networks for single image super-resolution. In CVPR Workshop, 2017.
Assaf Shocher, Nadav Cohen, and Michal Irani. zero-shot super-resolution using deep internal learning. In CVPR, 2018.
Ying Tai, Jian Yang, and Xiaoming Liu. Image super resolution via deep recursive residual network. In CVPR, 2017. [30] Tong Tong, Gen Li, Xiejie Liu, and Qinquan Gao. Image super-resolution using dense skip connections. In ICCV, 2017. [31] Z. Xiong, X. Sun, and F. Wu. Robust web image/video super-resolution. IEEE Transactions on Image Processing,
(8):2017–2028, 2010.
Z. Xiong, D. Xu, X. Sun, and F. Wu. Example-based super
resolution with soft information and decision. IEEE Transactions on Multimedia, 15(6):1458–1465, 2013.
Adrian Bulat, Jing Yang, and Georgios Tzimiropoulos. 2018 pirm challenge on perceptual image super-resolution. In ECCV Workshop, 2018.
Justin Johnson, Alexandre Alahi, and Li Fei-Fei. Perceptual losses for real-time style transfer and super- resolution. In ECCV, 2016.
Tomer Michaeli and Michal Irani. Nonparametric blind super-resolution. In CVPR, 2013.
Radu Timofte, Shuhang Gu, Jiqing Wu, and Luc Van Gool. Ntire 2018 challenge on single image super-resolution: Methods and results. In CVPR Workshop, 2018.
Adrian Bulat, Jing Yang, and Georgios Tzimiropoulos. To learn image super-resolution, use a gan to learn how to do image degradation first. In ECCV, 2018.
Xiao Zeng and Hua Huang. Super-Resolution Method for Multiview Face Recognition From a Single Image Per Person Using Nonlinear Mappings on Coherent Features. In IEEE Signal Processing Letters, 19(4):195-198, April 2012.
A. Maalouf and M.C. Larabi. Colour image super- resolution using geometric grouplets. In IET Image Processing, 6(2):168-180, 2012.
K. Guo X. Yang W. Lin R. and Zhang S. Yu. Learning- based super-resolution method with a combining of both global and local constraints. In IET Image Processing, 6(4):337-34, 2012.
Downloads
Published
Issue
Section
License
The proposed policy for journals that offer open access
Authors who publish with this journal agree to the following terms:
- Copyright on any article is retained by the author(s).
- Author grant the journal, right of first publication with the work simultaneously licensed under a Creative Commons Attribution License that allows others to share the work with an acknowledgement of the work’s authorship and initial publication in this journal.
- Authors are able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal’s published version of the work (e.g., post it to an institutional repository or publish it in a book), with an acknowledgement of its initial publication in this journal.
- Authors are permitted and encouraged to post their work online (e.g., in institutional repositories or on their website) prior to and during the submission process, as it can lead to productive exchanges, as well as earlier and greater citation of published work.
- The article and any associated published material is distributed under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License