A Dataless FaceSwap Detection Approach Using Synthetic Images
- URL: http://arxiv.org/abs/2212.02571v1
- Date: Mon, 5 Dec 2022 19:49:45 GMT
- Title: A Dataless FaceSwap Detection Approach Using Synthetic Images
- Authors: Anubhav Jain, Nasir Memon, Julian Togelius
- Abstract summary: We propose a deepfake detection methodology that eliminates the need for any real data by making use of synthetically generated data using StyleGAN3.
This not only performs at par with the traditional training methodology of using real data but it shows better generalization capabilities when finetuned with a small amount of real data.
- Score: 5.73382615946951
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Face swapping technology used to create "Deepfakes" has advanced
significantly over the past few years and now enables us to create realistic
facial manipulations. Current deep learning algorithms to detect deepfakes have
shown promising results, however, they require large amounts of training data,
and as we show they are biased towards a particular ethnicity. We propose a
deepfake detection methodology that eliminates the need for any real data by
making use of synthetically generated data using StyleGAN3. This not only
performs at par with the traditional training methodology of using real data
but it shows better generalization capabilities when finetuned with a small
amount of real data. Furthermore, this also reduces biases created by facial
image datasets that might have sparse data from particular ethnicities.
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