Detection of Visual Deepfakes using Deep Convolutional Networks
Balara, Viliam
Machová, Kristína
Mach, Marián
2025-08-06T06:17:05Z
2025-08-06T06:17:05Z
2025
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/31937
With social media being a significant part of everyday life, the possibilities of
misinformation spreading in textual, visual or audio form are now significantly in
comparison to past. With the onset of widely available generative AI models, the need for
effective classification methods for generated or altered content grew even larger. This
article focuses on the problem of Deepfake detection, particularly in a domain of
artificially generated depictions of human faces. For the detection, we have selected a
variety of CNN (Convolutional Neural Networks) based architectures which have recently
proven their capabilities in image classification tasks. We have selected five models and
performed testing on a two-class dataset which contained Deepfakes created with state-of-
the-art StyleGAN. The achieved results of selected models were comparable, each model
attaining sufficient classification capability.
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Detection of Visual Deepfakes using Deep Convolutional Networks