Please use this identifier to cite or link to this item: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31792
Title: Deepfake Image Detection Using ResNet-50: A Systematic Literature Review
Authors: OJENIYI, Joseph Adebayo
YISA, Rhoda N.
SUBAIRU, Sikiru Olanrewaju
ABDULHAMID, SHAFII M.
ALHASSAN, John Kolo
NOEL, Moses Dogonyaro
Keywords: Deepfake image Detection, Machine Learning, Deep Learning, ResNet-50
Issue Date: Mar-2026
Publisher: Journal of Advances in Mathematical & Computational Sciences
Series/Report no.: Vol. 14 No. 1, March 2026 Series;
Abstract: With the rapid proliferation of deepfake technologies, the generation and propagation of manipulated images pose significant threats to digital security, privacy, and public trust. Convolutional Neural Networks (CNNs), particularly ResNet-50, have gained attention for their robust feature extraction capabilities in deepfake detection tasks. This systematic literature review aims to synthesize recent research efforts that leverage ResNet-50 for the detection of deepfake images. Following PRISMA guidelines, we analyzed peer-reviewed articles published between 2020 and 2025 across major scientific databases including IEEE Xplore, Science Direct, SpringerLink, and ACM Digital Library. Our review explores how ResNet-50 is employed either as a standalone classifier, a transfer learning backbone, or part of hybrid architectures and evaluates its performance across various datasets such as, Flickr / FFHQ FaceForensics++, Celeb-DF, and DFDC. We identify key limitations in current approaches, particularly in terms of generalization to unseen manipulations, dataset biases, and adversarial robustness. The findings indicate that while ResNet-50 demonstrates competitive accuracy and computational efficiency, challenges remain in ensuring model reliability in real-world applications. This review provides a foundational reference for future work aimed at enhancing deepfake image detection systems using deep learning.
URI: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31792
Appears in Collections:Cyber Security Science

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