RESEARCH OF DIGITAL IMAGE PRE-PROCESSING ALGORITHMS
Keywords:
Digital image, preprocessing, filtrationAbstract
This article studies preprocessing algorithms aimed at effectively eliminating noise in digital images and improving image quality. During the study, the principles of operation of linear and nonlinear filtering methods were comparatively analyzed. According to the experimental results, the Gaussian filter showed high efficiency in smoothing white noise, and the Median filter showed high efficiency in eliminating impulse noise. Based on the analysis, a software package was developed using the Python programming language and the OpenCV library to filter images
References
1. Gonzalez R.C., Woods R.E. Digital Image Processing (4th Edition). – New York: Pearson,
2018. – P. 162-175.
2. Bradski G., Kaehler A. Learning OpenCV: Computer Vision with the OpenCV Library. –
Sebastopol: O‘Reilly Media, 2008. – P. 128-140.
3. Szeliski R. Computer Vision: Algorithms and Applications. – London: Springer Nature,
2022. – P. 105-118.
4. Pratt W.K. Digital Image Processing: PIKS Scientific Inside. – New York: WileyInterscience, 2007. – P. 280-295.
5. Kamilov M.M., Hudayberdiyev M.X. Tasvirlarga ishlov berish va ob’ektlarni aniqlash
usullari. – Toshkent: Fan va texnologiyalar, 2019. – B. 45-58.
6. Muda N.Z., El-Khatib A.M. Performance Analysis of Image Denoising Filters: A Review //
International Journal of Advanced Science and Technology. – 2020. – Vol. 29. № 5. – P. 145-152.
7. Abdug‘aniev A.A. Raqamli tasvirlardagi shovqinlarni filtrlashda median algoritmlarining
samaradorligi // O‘zbekiston Milliy universiteti xabarlari. – 2021. – № 3. – B. 34-38.
8. Rosebrock A. Deep Learning for Computer Vision with Python. – PyImageSearch, 2017. –
P. 22-28.
9. Jain A.K. Fundamentals of Digital Image Processing. – New Jersey: Prentice Hall, 1989. – P.
244-250.