Home| Contact Us| New Journals| Browse Journals| Journal Prices| For Authors|

Print ISSN: 0976-4127
Online ISSN:
0976-4135


  About JMPT
  DLINE Portal Home
Home
Aims & Scope
Editorial Board
Current Issue
Next Issue
Previous Issue
Sample Issue
Upcoming Conferences
Self-archiving policy
Alert Services
Be a Reviewer
Publisher
Paper Submission
Subscription
Contact us
 
  How To Order
  Order Online
Price Information
Request for Complimentary
Print Copy
 
  For Authors
  Guidelines for Contributors
Online Submission
Call for Papers
Author Rights
 
 
RELATED JOURNALS
Journal of Digital Information Management (JDIM)
International Journal of Computational Linguistics Research (IJCL)
International Journal of Web Application (IJWA)

 

 
Journal of Multimedia Processing and Technologies
 

 

Influence of Neural Networks on the precision of image Processing
Saida S. Beknazarova, Dinara K. Kozhamzharova
Tashkent University of Information Technologies named by Muhammad Al-Khwarizmi, A.Timur, 108, Tashkent, 100096 Uzbekistan., Dinara K. Kozhamzharova International Information Technology University Manas St. 34/1, Almaty, 050040, Kazakhstan
Abstract: This paper delves into a novel area of research, exploring how natural events impact the functioning of visualization systems, particularly in maintaining the integrity of the image processing algorithm. As part of this study, a unique filter was devised to eliminate distortions caused by fog. A correction filter was innovatively developed, and an in-depth analysis of the neural network’s performance with images of varying resolutions was undertaken, leading to insightful recommendations for augmenting the precision of image processing.
Keywords: Image Processing, Image Filtering, Visualization Systems, Specific Identification Influence of Neural Networks on the precision of image Processing
DOI:https://doi.org/10.6025/jmpt/2024/15/2/45-57
Full_Text   PDF 2.93 MB   Download:   4  times
References:

[1] Schechner, Y. Y., Narasimhan, S. G., Nayar, S. K. (2001). Instant dehazing of images using polarization. In IEEE Computer Society Conference on Computer Vision and Pattern Recognition (pp. 325-332).

[2] Fattal, R. (2008). Single image dehazing. In International Conference on Computer Graphics and Interactive Techniques archive ACM SIGGRAPH (pp. 1-9). https://doi.org/10.1145/1399504.1360619.

[3] Tan, R. T. (2008). Visibility in bad weather from a single image. In IEEE Conference on Computer Vision and Pattern Recognition (pp. 1-8). https://doi.org/10.1109/CVPR.2008.4587643.

[4] Kopf, J., Neubert, B., Chen, B., Cohen, M., Cohen-Or, D., Deussen, O., Uyttendaele, M., & Lischinski, D. (2008). Deep photo: Model-based photograph enhancement and viewing. ACM Transactions on Graphics, 27(5), 116:1-116:10. https://doi.org/10.1145/1409060.1409076.

[5] Fang, S., Zhan, J., Cao, Y., Rao, R. (2010). Improved single image dehazing using segmentation. In IEEE International Conference on Image Processing (ICIP) (pp. 3589-3592). https://doi.org/10.1109/ICIP.2010.5653957.

[6] Matveyev, L. T. (1984). Kurs obschei meteorologii. Fizika atmosfery. Leningrad: Gidrometeodizdat. 

[7] Beknazarova, S., Mukhamadiyev, A. Sh., Jaumitbayeva, M. K. (2019). Processing color images, brightness and color conversion. In International Conference on Information Science and Communications Technologies (ICISCT 2019) Applications, Trends and Opportunities. Tashkent.

[8] Beknazarova, S., Mukhamadiyev, A. Sh., Park, I., Adbullayev, S. (2020). The mask of objects in intellectual irrigation systems. In International Conference on Information Science and Communications Technologies (ICISCT 2020) Applications, Trends and Opportunities. Tashkent.

[9] Beknazarova, S., Sadullaeva, Sh., Abdurakhmanov, K., Beknazarov, K. (2020). Nonlinear cross-systems of numerical simulation of diffusion processes. In International Conference on Information Science and Communications Technologies (ICISCT 2020) Applications, Trends and Opportunities. Tashkent.

[10] Korikov, A. M., Syryamkin, V. I., Titov, V. S. (2000). Correlation visual systems of robots (p. 264). Tomsk: Radio and Communications.

[11] Klevakin, V. A., Polivanov, A. Y. (2010). Systems of technical vision in industrial robotics. Mechatronics, Automation, Control, 9, 26-36.

[12] Gorinov, A. N., Yakovchenko, S. I. (2017). Selection of parametrically specified objects in a low-resolution image. Reports of TUSUR, 20(2), 88-90.

[13] International Telecommunication Union. (2015). Recommendation ITU-R BT.709-6. Parameter values for the HDTV standards for production and international programme exchange.

[14] Gonzalez, R., Woods, R. (2005). Digital image processing (p. 1072). Moscow: Technosphere.

[15] Otsu, N. (2009). A threshold selection method from gray-level histograms. IEEE Transactions on Systems, Man and Cybernetics, 9(1), 62-66. https://doi.org/10.1109/TSMC.1979.4310076.


Home | Aim & Scope | Editorial Board | Author Guidelines | Publisher | Subscription | Previous Issue | Contact Us |Upcoming Conferences|Sample Issues|Library Recommendation Form|

 

Copyright © 2011 dline.info