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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.

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