FrePGAN: Robust Deepfake Detection Using Frequency-level Perturbations
- URL: http://arxiv.org/abs/2202.03347v1
- Date: Mon, 7 Feb 2022 16:45:11 GMT
- Title: FrePGAN: Robust Deepfake Detection Using Frequency-level Perturbations
- Authors: Yonghyun Jeong, Doyeon Kim, Youngmin Ro, Jongwon Choi
- Abstract summary: We design a framework to generalize the deepfake detector for both the known and unseen GAN models.
Our framework generates the frequency-level perturbation maps to make the generated images indistinguishable from the real images.
For experiments, we design new test scenarios varying from the training settings in GAN models, color manipulations, and object categories.
- Score: 12.027711542565315
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Various deepfake detectors have been proposed, but challenges still exist to
detect images of unknown categories or GAN models outside of the training
settings. Such issues arise from the overfitting issue, which we discover from
our own analysis and the previous studies to originate from the frequency-level
artifacts in generated images. We find that ignoring the frequency-level
artifacts can improve the detector's generalization across various GAN models,
but it can reduce the model's performance for the trained GAN models. Thus, we
design a framework to generalize the deepfake detector for both the known and
unseen GAN models. Our framework generates the frequency-level perturbation
maps to make the generated images indistinguishable from the real images. By
updating the deepfake detector along with the training of the perturbation
generator, our model is trained to detect the frequency-level artifacts at the
initial iterations and consider the image-level irregularities at the last
iterations. For experiments, we design new test scenarios varying from the
training settings in GAN models, color manipulations, and object categories.
Numerous experiments validate the state-of-the-art performance of our deepfake
detector.
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