COLOR CORRECTION OF THE INPUT IMAGE AS AN ELEMENT OF IMPROVING THE QUALITY OF ITS VISUALIZATION
PDF
DOI
SLIB.UZ

Keywords

Analysis, Metrics, Color rendition, Visualization, Correction, Quality, Digital image, RGB image

How to Cite

Mykola Yevstratov, Valentin Lyubchenko, Amer Abu-Jassar, & Vyacheslav Lyashenko. (2024). COLOR CORRECTION OF THE INPUT IMAGE AS AN ELEMENT OF IMPROVING THE QUALITY OF ITS VISUALIZATION. TECHNICAL SCIENCE RESEARCH IN UZBEKISTAN, 2(4), 79–88. Retrieved from https://universalpublishings.com/index.php/tsru/article/view/5245

Abstract

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.

PDF
DOI
SLIB.UZ

References

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.

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.

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.

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.

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.

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.

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.

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.

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.

Гиренко, А. В., Ляшенко, В. В., Машталир, В. П., & Путятин, Е. П. (1996). Методы корреляционного обнаружения объектов. Харьков: АО “БизнесИнформ, 112.

Lyubchenko, V., & et al.. (2016). Digital image processing techniques for detection and diagnosis of fish diseases. International Journal of Advanced Research in Computer Science and Software Engineering, 6(7), 79-83.

Lyashenko, V., Matarneh, R., & Kobylin, O. (2016). Contrast modification as a tool to study the structure of blood components. Journal of Environmental Science, Computer Science and Engineering & Technology, 5(3), 150-160.

Lyashenko, V. V., Matarneh, R., Kobylin, O., & Putyatin, Y. P. (2016). Contour detection and allocation for cytological images using Wavelet analysis methodology. International Journal, 4(1), 85-94.

Mousavi, S. M. H., Lyashenko, V., & Prasath, S. (2019). Analysis of a robust edge detection system in different color spaces using color and depth images. Компьютерная оптика, 43(4), 632-646.

Orobinskyi, P., Petrenko, D., & Lyashenko, V. (2019, February). Novel Approach to Computer-Aided Detection of Lung Nodules of Difficult Location with Use of Multifactorial Models and Deep Neural Networks. In 2019 IEEE 15th International Conference on the Experience of Designing and Application of CAD Systems (CADSM) (pp. 1-5). IEEE.

Orobinskyi, P., & et al.. (2020). Comparative Characteristics of Filtration Methods in the Processing of Medical Images. American Journal of Engineering Research, 9(4), 20-25.

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.

Lyashenko, V. V., Babker, A. M., & Lyubchenko, V. A. (2017). Wavelet Analysis of Cytological Preparations Image in Different Color Systems. Open Access Library Journal, 4, e3760.

Tahseen A. J. A., & et al.. (2023). Binarization Methods in Multimedia Systems when Recognizing License Plates of Cars. International Journal of Academic Engineering Research (IJAER), 7(2), 1-9.

Lyashenko, V. V., abd allah Babker, A. M. A., & Kobylin, O. A. (2016). Using the methodology of wavelet analysis for processing images of cytology preparations. National Journal of Medical Research, 6(01), 98-102.

Uchqun o‘g‘li, B. S., Valentin, L., & Vyacheslav, L. (2023). Image Processing Techniques as a Tool for the Analysis of Liver Diseases. Journal of Universal Science Research, 1(8), 223-233.

Ahmad, M. A., Kuzemin, O., Lyashenko, V., & Ahmad, N. A. (2015). Microsituations as part of the formalization of avalanche climate to avalanche-riskiness and avalanche-safety classes in the emergency situations separation. International Journal, 3(4), 684-691.

Al-Sharo Y., & et al. (2023). A Robo-hand prototype design gripping device within the framework of sustainable development. Indian Journal of Engineering, 2023, 20, e37ije1673.

Kuzomin, O., Lyashenko, V., Dudka, O., Radchenko, V., & Vasylenko, O. (2020). Using of ontologies for building databases and knowledge bases for consequences management of emergency. International Journal of Advanced Trends in Computer Science and Engineering, 9(4), 5040-5045.

Babker, A. M., Suliman, R. S., Elshaikh, R. H., Boboyorov, S., & Lyashenko, V. (2024). Sequence of Simple Digital Technologies for Detection of Platelets in Medical Images. Biomedical & Pharmacology Journal, 17(1), 141-152.

Lee, S. H., & Choi, J. S. (2008). Design and implementation of color correction system for images captured by digital camera. IEEE Transactions on consumer electronics, 54(2), 268-276.

Isa, N. A. M. (2012). Pixel distribution shifting color correction for digital color images. Applied Soft Computing, 12(9), 2948-2962.

Rizzi, A., Gatta, C., & Marini, D. (2003). A new algorithm for unsupervised global and local color correction. Pattern Recognition Letters, 24(11), 1663-1677.

Sinthanayothin, C., Bholsithi, W., & Wongwaen, N. (2016, October). Color correction on digital image based on reference color charts surrounding object. In 2016 International Symposium on Intelligent Signal Processing and Communication Systems (ISPACS) (pp. 1-6). IEEE.

Lee, D. H., Yoon, Y. J., Kang, S. J., & Ko, S. J. (2014). Correction of the overexposed region in digital color image. IEEE Transactions on Consumer Electronics, 60(2), 173-178.

Carnec, M., Le Callet, P., & Barba, D. (2008). Objective quality assessment of color images based on a generic perceptual reduced reference. Signal Processing: Image Communication, 23(4), 239-256.

Cheng, D., Prasad, D. K., & Brown, M. S. (2014). Illuminant estimation for color constancy: why spatial-domain methods work and the role of the color distribution. JOSA A, 31(5), 1049-1058.

Akazawa, T., Kinoshita, Y., & Kiya, H. (2021, March). Multi-color balancing for correctly adjusting the intensity of target colors. In 2021 IEEE 3rd Global Conference on Life Sciences and Technologies (LifeTech) (pp. 8-12). IEEE.

Kehoe, D. M., & Gutu, A. (2006). Responding to color: the regulation of complementary chromatic adaptation. Annu. Rev. Plant Biol., 57, 127-150.

Limare, N., Lisani, J. L., Morel, J. M., Petro, A. B., & Sbert, C. (2011). Simplest color balance. Image Processing On Line, 1, 297-315.

Lindbloom, B. J. (1989, July). Accurate color reproduction for computer graphics applications. In Proceedings of the 16th annual conference on Computer graphics and interactive techniques (pp. 117-126).

Lindbloom, B. Chromatic Adaptation. http://www.brucelindbloom.com/index.html?Eqn_ChromAdapt.html.

Mittal, A., Soundararajan, R., & Bovik, A. C. (2012). Making a “completely blind” image quality analyzer. IEEE Signal processing letters, 20(3), 209-212.

Mittal, A., Moorthy, A. K., & Bovik, A. C. (2012). No-reference image quality assessment in the spatial domain. IEEE Transactions on image processing, 21(12), 4695-4708.

Mittal, A., Moorthy, A. K., & Bovik, A. C. (2011, November). Referenceless image spatial quality evaluation engine. In 45th Asilomar Conference on Signals, Systems and Computers (Vol. 38, pp. 53-54).

Ebner, M. (2021). Color constancy. In Computer Vision: A Reference Guide (pp. 168-175). Cham: Springer International Publishing.

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.