Published April 20, 2024 | Version v1
Journal article Open

COLOR CORRECTION OF THE INPUT IMAGE AS AN ELEMENT OF IMPROVING THE QUALITY OF ITS VISUALIZATION

  • 1. Department of Media Systems and Technology, Kharkiv National University of Radio Electronics, Ukraine
  • 2. Department of Informatics, Kharkiv National University of Radio Electronics, Ukraine
  • 3. Faculty of Information Technology, Department of Computer Science, Ajloun National University, Ajloun, Jordan

Description

Image analysis and processing is constantly in the focus of attention of researchers. At the same time, special attention is paid to improving the quality of visualization, which is in demand in various applications: from medicine to printing. The solution to the problem is proposed to be achieved by correcting the color rendition of the original image, where the corresponding image perception metrics are used for analysis. The paper presents the results of the study based on the example of a well-known digital image.

Files

79-88 Mykola Y TSRU.pdf

Files (677.6 kB)

Name Size Download all
md5:96c6fbe4651de595a1da817ec7cad4ab
677.6 kB Preview Download

Additional details

References

  • 1. Abu-Jassar, A. T., Al-Sharo, Y. M., Lyashenko, V., & Sotnik, S. (2021). Some Features of Classifiers Implementation for Object Recognition in Specialized Computer systems. TEM Journal: Technology, Education, Management, Informatics, 10(4), 1645-1654.
  • 2. Rabotiahov, A., Kobylin, O., Dudar, Z., & Lyashenko, V. (2018, February). Bionic image segmentation of cytology samples method. In 2018 14th International Conference on Advanced Trends in Radioelecrtronics, Telecommunications and Computer Engineering (TCSET) (pp. 665-670). IEEE.
  • 3. Al-Sharo, Y. M., Abu-Jassar, A. T., Sotnik, S., & Lyashenko, V. (2021). Neural networks as a tool for pattern recognition of fasteners. International Journal of Engineering Trends and Technology, 69(10), 151-160.
  • 4. Lyashenko, V. V., Matarneh, R., & Deineko, Z. V. (2016). Using the Properties of Wavelet Coefficients of Time Series for Image Analysis and Processing. Journal of Computer Sciences and Applications, 4(2), 27-34.
  • 5. Lyashenko, V. V., Lyubchenko, V., Ahmad, M. A., Khan, A., & Kobylin, O. A. (2016). The methodology of image processing in the study of the properties of fiber as a reinforcing agent in polymer compositions. International Journal of Advanced Research in Computer Science, 7(1), 15-18.
  • 6. Lyashenko, V., Kobylin, O., & Ahmad, M. A. (2014). General methodology for implementation of image normalization procedure using its wavelet transform. International Journal of Science and Research (IJSR), 3(11), 2870-2877.
  • 7. Lyashenko, V., Kobylin, O., & Selevko, O. (2020). Wavelet analysis and contrast modification in the study of cell structures images. International Journal of Advanced Trends in Computer Science and Engineering, 9(4), 4701-4706.
  • 8. Lyashenko, V. V., Babker, A. M. A. A., & Kobylin, O. A. (2016). The methodology of wavelet analysis as a tool for cytology preparations image processing. Cukurova Medical Journal, 41(3), 453-463.
  • 9. Kobylin, O., & Lyashenko, V. (2014). Comparison of standard image edge detection techniques and of method based on wavelet transform. International Journal, 2(8), 572-580.
  • 10. Гиренко, А. В., Ляшенко, В. В., Машталир, В. П., & Путятин, Е. П. (1996). Методы корреляционного обнаружения объектов. Харьков: АО "БизнесИнформ, 112.