Adaptive oriented filtration of digital images in the spatial domain

This article describes the developed method of adaptive-oriented filtration of digital images in the spatial domain, which is designed to remove noise and enhance the visual quality of images. as the kernel of filter an oriented two-dimensional gaussian distribution is used. as a result of this filtration, the contours of the images are blurred slightly, since the filtration is mainly carried out along the contour direction, that is, the filter parameters are adapted to each image region. the proposed method of image filtering is implemented in Matlab.

[1]  Ryszard S. Romaniuk,et al.  Laser photoplethysmography in integrated evaluation of collateral circulation of lower extremities , 2015, Optical Fibers and Their Applications.

[2]  Igor M. Fodchuk,et al.  Local deformation in diamond crystals defined by the Fourier transformations of Kikuchi patterns , 2013, Journal of Superhard Materials.

[3]  S. V. Pavlov,et al.  Diagnostics of pathologically changed birefringent networks by means of phase Mueller matrix tomography , 2013, Other Conferences.

[4]  Piotr Popiel,et al.  Offsetting and blending with perturbation functions , 2019, Optical Fibers and Their Applications.

[5]  Mikolaj Karpinski,et al.  Automatic identification method of blurred images , 2015 .

[6]  Oleh Pitsun,et al.  Development of a metric and the methods for quantitative estimation of the segmentation of biomedical images , 2017 .

[7]  S. V. Pavlov,et al.  Method of anti-aliasing with the use of the new pixel model , 2015, Optical Fibers and Their Applications.

[8]  Rafael C. González,et al.  Digital image processing using MATLAB , 2006 .

[9]  S. V. Balovsyak,et al.  Automatic Determination of the Gaussian Noise Level on Digital Images by High-Pass Filtering for Regions of Interest , 2018 .

[10]  Alan C. Bovik,et al.  The Essential Guide to Image Processing , 2009, J. Electronic Imaging.

[11]  John C. Russ,et al.  The Image Processing Handbook , 2016, Microscopy and Microanalysis.

[12]  Saule Smailova,et al.  Method of image texture segmentation using Laws' energy measures , 2017, Symposium on Photonics Applications in Astronomy, Communications, Industry, and High-Energy Physics Experiments (WILGA).

[13]  Richard Szeliski,et al.  Automatic Estimation and Removal of Noise from a Single Image , 2008, IEEE Transactions on Pattern Analysis and Machine Intelligence.