WildDeepfake: A Challenging Real-World Dataset for Deepfake Detection
Bojia Zi, Minghao Chang, Jingjing Chen, Xingjun Ma, Yu-Gang Jiang

TL;DR
WildDeepfake introduces a challenging real-world dataset for deepfake detection, highlighting the limitations of existing datasets and proposing attention-based detection networks that improve robustness against real-world deepfakes.
Contribution
The paper presents WildDeepfake, a new real-world deepfake dataset, and introduces attention-based detection networks that outperform existing methods on this challenging dataset.
Findings
WildDeepfake is more challenging than existing datasets.
Attention-based detection networks improve deepfake detection accuracy.
Detection performance drops significantly on WildDeepfake with existing detectors.
Abstract
In recent years, the abuse of a face swap technique called deepfake has raised enormous public concerns. So far, a large number of deepfake videos (known as "deepfakes") have been crafted and uploaded to the internet, calling for effective countermeasures. One promising countermeasure against deepfakes is deepfake detection. Several deepfake datasets have been released to support the training and testing of deepfake detectors, such as DeepfakeDetection and FaceForensics++. While this has greatly advanced deepfake detection, most of the real videos in these datasets are filmed with a few volunteer actors in limited scenes, and the fake videos are crafted by researchers using a few popular deepfake softwares. Detectors developed on these datasets may become less effective against real-world deepfakes on the internet. To better support detection against real-world deepfakes, in this paper,…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Anomaly Detection Techniques and Applications · Digital Media Forensic Detection
