Image quality improvement by method of spatial spectrum extrapolation
Authors: Gurchenkov A.A., Bochkareva V.G., Murynin A.B., Trekin A.N. | Published: 04.04.2016 |
Published in issue: #2(65)/2016 | |
DOI: 10.18698/1812-3368-2016-2-91-102 | |
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control and Information Processing | |
Keywords: image quality improvement, spectral transformation, spatial spectrum |
In this research we explore methods of image quality improvement using spatial spectral representation and describe two formulations of the problem. In the first one the information on high-resolution details is available from the additional reference image. High-resolution image is obtained by combining the spectra of the source and reference images. In the second formulation additional information is not available. High-resolution image is synthesized by analytic continuation of the source image spectrum. The findings of the research are given.
References
[1] Bikkenin R.R., Chesnokov M.N. Teoriya elektricheskoy svyazi [Theory of Electrical Communication]. Moscow, Akademiya Publ., 2010. 329 p.
[2] Getreuer P. Linear Methods for Image Interpolation. Image Processing On Line, 2011.
[3] Turkowski K., Gabriel S. Filters for Common Resampling Tasks. Boston, Graphics Gems I. Academic Press, 1990, pp. 147-165.
[4] Tsurkov V.I. An analytical model of edge protection under noise suppression by anisotropic diffusion. J. Computer and Systems Sciences International, 2000, vol. 39, no. 3, pp. 437-440.
[5] Tsurkov V.I., Kovkov D.V. Sposob udaleniya shuma v izobrazhenii [Method of Removing Noise in the Image]. Patent RF no. RUS 2316816, 25.08.2005.
[6] Mironov A.A., Tsurkov V.I. Approximation and decomposition by extremal graphs. Computational Mathematics and Mathematical Physics, 1993, vol. 33, no. 2, pp. 251-262.
[7] Mironov A.A., Tsurkov V.I. Network models with fixed parameters at the communication nodes. II. J. Computer and Systems Sciences International, 1994, vol. 32, no. 6, pp. 1-11.
[8] Mironov A.A., Tsurkov V.I. Transport and network problems with the minimax criterion. Computational Mathematics and Mathematical Physics, 1995, vol. 35, no. 1, pp. 15-30.
[9] Bondur V.G. Phase-Spectral Method’s Modeling of Two-Dimension Stochastic Brightness Field, Formed at the Airspace Apparatus Entrance. Issled. Zemli iz kosmosa [Izvestiya. Atmospheric and Oceanic Physics Earth Observation and Remote Sensing], 2000, no. 5, pp. 28-44 (in Russ.).
[10] Zomet A., Peleg S. Multi-sensor super-resolution. Proc. 6th IEEE Workshop Applications of Computer Vision, 2002, pp. 27-31.
[11] Matveev I.A., Murynin A.B. Principles of Development of a Stereovision System for Motion Control of a Robot. Journal of Computer and Systems Sciences International, 2003, vol. 42, no. 3, p. 490.
[12] Matveev I.A., Murynin A.B. Identification of Objects on the Basis of Stereo Images: Optimization of Algorithms for Reconstruction of a Surface. Journal of Computer and Systems Sciences International, 1998, vol. 37, no. 3, p. 487.
[13] Soyfer V.A., ed. Metody komp’yuternoy obrabotki izobrazheniy [Methods of Computer Image Processing]. Moscow, Fizmatlit Publ., 2003.
[14] Gao Y., Rehman A., Wang Z. CW-SSIM Based image classification. 18th IEEE International Conference on Image Processing (ICIP). 2011. IEEE, 2011, pp. 1249-1252.
[15] Greenspan H., Anderson C.H., Akber S. Image enhancement by nonlinear extrapolation in frequency space. IEEE Transactions on Image Processing, 2000, vol. 9, no. 6, pp. 1035-1048.
[16] Khonina S.N., Baranov V.G., Kotlyar V.V. Spectral Method for the Digital Image Fragment Increasing. Komp’yuternaya optika [Computer Optics], 1999, vol. 19, pp. 165-173 (in Russ.).
[17] Alparone L. et al. Comparison of pansharpening algorithms: Outcome of the 2006 GRS-S data-fusion contest. IEEE Transactions on Geoscience and Remote Sensing, 2007, vol. 45, no. 10, pp. 3012-3021.