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ITI
əməkdaslarının elmi isləri
Elektron kitabxana
Konfranslar İnformasiya Sistemi
Qəzetlər
UOT 004
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| ITI əməkdaşlarının elmi işləri - tezis |
| Biblioqrafik təsvir | | Abdullayeva , F.D. Cloud Cyber Attack Images Classification using GAN and ViT+ML Algorithms / F.D. Abdullayeva // 6th International Conference on Problems of Cybernetics and Informatics (PCI2025). - Bakı, 2025. - P. 152-156. | | Annotasiya | | The emergence of the Industry 4.0 concept and
the development of modern technologies have made the
detection of cyber attacks in cloud systems an important issue.
In the article, a hybrid model based on the combination of
machine learning algorithms with Generative Adversarial
Networks (GANs) was developed to identify various attack
categories targeting cloud systems. In the model, the
integration of functions that enhance image quality within the
GAN algorithm significantly improved classification
performance by increasing the quality of cyber attack images.
Here the damage in the images is repaired, and their
appearance is restored and generated to resemble the original
as closely as possible. To enhance the models robustness
against various changes in input images, during the data
augmentation phase, the process of rotating images and
generating them in different variations was also carried out
using GAN. The proposed method classified various cyber
attacks on cloud systems more effectively than existing
methods, achieving a classification accuracy of 0.9451. | | | Elektron variant | | Elektron variant |
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