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ISSN: 1023-5086

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ISSN: 1023-5086

Scientific and technical

Opticheskii Zhurnal

A full-text English translation of the journal is published by Optica Publishing Group under the title “Journal of Optical Technology”

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DOI: 10.17586/1023-5086-2020-87-05-63-76

Directional smoothing model-based image denoising algorithm

For Russian citation (Opticheskii Zhurnal):

Zhao Xiaoming, Bai Yashuo, Liu Xin, Gao Miao, Cheng Kun, Ma Shengcun , Dong Lei. Алгоритм снижения шумов изображения на основе сглаживания, использующего ориентированные модели // Оптический журнал. 2020. Т. 87. № 5. С. 63–76. http://doi.org/10.17586/1023-5086-2020-87-05-63-76

 

Zhao Xiaoming, Bai Yashuo, Liu Xin, Gao Miao, Cheng Kun, Ma Shengcun , Dong Lei. Directional smoothing model-based image denoising algorithm [in Russian] // Opticheskii Zhurnal. 2020. V. 87. № 5. P. 63–76. http://doi.org/10.17586/1023-5086-2020-87-05-63-76

For citation (Journal of Optical Technology):
X. Zhao, Y. Bai, X. Liu, M. Gao, K. Cheng, S. Ma, and L. Dong, "Directional-smoothing-model-based image denoising algorithm," Journal of Optical Technology .  87(5), 299-309 (2020). https://doi.org/10.1364/JOT.87.000299
Abstract:

This study focuses on edge preservation and noise smoothing in the process of denoising. To achieve the two aims, the image has to be processed in such a way that the noise is removed to give people a pleasing vision without reducing the perceptibility of edges and details. In the proposed algorithm, edge orientations are taken into account by using directional templates during edge extraction. The results of convolution would be adopted to control coefficients of the corresponding denoising filter. These two steps play a leading role to guarantee the preservation of edges. Finally, flat regions distinguished from edges and details by local standard deviation would be further operated by incorporating the preliminary filtering result and mean filtering result to make better vision perception. Its great performance with lower complexity is validated by the experiential results, which provides an important opportunity for hardware implementation.

Keywords:

reduction of image noise, selection of boundaries, preservation of sharpness, Gaussian filtering

OCIS codes: 100.2000

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