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DeepFeatureX Net: Deep Features eXtractors based Network for discriminating synthetic from real images

About

Deepfakes, synthetic images generated by deep learning algorithms, represent one of the biggest challenges in the field of Digital Forensics. The scientific community is working to develop approaches that can discriminate the origin of digital images (real or AI-generated). However, these methodologies face the challenge of generalization, that is, the ability to discern the nature of an image even if it is generated by an architecture not seen during training. This usually leads to a drop in performance. In this context, we propose a novel approach based on three blocks called Base Models, each of which is responsible for extracting the discriminative features of a specific image class (Diffusion Model-generated, GAN-generated, or real) as it is trained by exploiting deliberately unbalanced datasets. The features extracted from each block are then concatenated and processed to discriminate the origin of the input image. Experimental results showed that this approach not only demonstrates good robust capabilities to JPEG compression but also outperforms state-of-the-art methods in several generalization tests. Code, models and dataset are available at https://github.com/opontorno/block-based_deepfake-detection.

Orazio Pontorno, Luca Guarnera, Sebastiano Battiato (1) __INSTITUTION_3__ University of Catania)• 2024

Related benchmarks

TaskDatasetResultRank
Synthetic Face DetectionVQGAN OOD
Accuracy78.1
7
Synthetic Face DetectionIDDPM OOD
Accuracy98.6
7
Synthetic Face DetectionStyleGAN ID
Accuracy99.8
7
Synthetic Face DetectionOverall (Average)
Accuracy66.9
7
Synthetic Face DetectionREAL ID
Accuracy95.3
7
Synthetic Face DetectionADM ID
Accuracy (%)74.9
7
Synthetic Face DetectionStyleGAN2 OOD
Accuracy5.5
7
Synthetic Face DetectionLDM OOD
Accuracy1.6
7
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