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Study from Nataraj et al.
Nataraj et al. proposed a detection system based on a combination of pixel co-occurrence matrices and Convolutional Neural Networks (CNN). Their proposed approach was initially tested through a database of various objects and scenes created through CycleGAN. Besides, the authors performed an interesting analysis to see the robustness of the proposed approach against fake images created through different GAN architectures (CycleGAN vs. StarGAN), with good generalisation results. This detection approach was implemented later on in considering images from the 100K-Faces database, achieving an EER of 12.3% for the best fake detection performance.
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Updated 2021-08-13
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Data Science