Detect Fake with Fake: Leveraging Synthetic Data-driven Representation for Synthetic Image Detection
Are general-purpose visual representations acquired solely from synthetic data useful for detecting fake images? In this work, we show the effectiveness of synthetic data-driven representations for synthetic image detection. Upon analysis, we find that vision transformers trained by the latest visua...
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Zusammenfassung: | Are general-purpose visual representations acquired solely from synthetic
data useful for detecting fake images? In this work, we show the effectiveness
of synthetic data-driven representations for synthetic image detection. Upon
analysis, we find that vision transformers trained by the latest visual
representation learners with synthetic data can effectively distinguish fake
from real images without seeing any real images during pre-training. Notably,
using SynCLR as the backbone in a state-of-the-art detection method
demonstrates a performance improvement of +10.32 mAP and +4.73% accuracy over
the widely used CLIP, when tested on previously unseen GAN models. Code is
available at https://github.com/cvpaperchallenge/detect-fake-with-fake. |
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DOI: | 10.48550/arxiv.2409.08884 |