DSpace Repository

Enhancing Deepfake Detection Through Quantum Transfer Learning and Class-Attention Vision Transformer Architecture

Show simple item record

dc.creator KÜÇÜKSİLLE, Ecir Uğur
dc.creator KATI, Bekir Eray
dc.creator Sarıman, Güncel
dc.date 2025-01-01T00:00:00Z
dc.date.accessioned 2025-02-25T10:40:20Z
dc.date.available 2025-02-25T10:40:20Z
dc.identifier e36f4cc9-7554-4e53-8cf9-d0483a43828d
dc.identifier 10.3390/app15020525
dc.identifier https://avesis.sdu.edu.tr/publication/details/e36f4cc9-7554-4e53-8cf9-d0483a43828d/oai
dc.identifier.uri http://acikerisim.sdu.edu.tr/xmlui/handle/123456789/101704
dc.description The widespread use of the internet, coupled with the increasing production of digital content, has caused significant challenges in information security and manipulation. Deepfake detection has become a critical research topic in both academic and practical domains, as it involves identifying forged elements in artificially generated videos using various deep learning and artificial intelligence techniques. In this dissertation, an innovative model was developed for detecting deepfake videos by combining the Quantum Transfer Learning (QTL) and Class-Attention Vision Transformer (CaiT) architectures. The Deepfake Detection Challenge (DFDC) dataset was used for training, and a system capable of detecting spatiotemporal inconsistencies was constructed by integrating QTL and CaiT technologies. In addition to existing preprocessing methods in the literature, a novel preprocessing function tailored to the requirements of deep learning models was developed for the dataset. The advantages of quantum computing offered by QTL were merged with the global feature extraction capabilities of the CaiT. The results demonstrated that the proposed method achieved a remarkable performance in detecting deepfake videos, with an accuracy of 90% and ROC AUC score of 0.94 achieved. The model’s performance was compared with other methods evaluated on the DFDC dataset, highlighting its efficiency in resource utilization and overall effectiveness. The findings reveal that the proposed QTL-CaiT-based system provides a strong foundation for deepfake detection and contributes significantly to the academic literature. Future research should focus on testing the model on real quantum devices and applying it to larger datasets to further enhance its applicability.
dc.language eng
dc.rights info:eu-repo/semantics/closedAccess
dc.title Enhancing Deepfake Detection Through Quantum Transfer Learning and Class-Attention Vision Transformer Architecture
dc.type info:eu-repo/semantics/article


Files in this item

Files Size Format View

There are no files associated with this item.

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account