Countering Malicious DeepFakes: Survey, Battleground, and Horizon
Felix Juefei-Xu, Run Wang, Yihao Huang, Qing Guo, Lei Ma, and Yang Liu

TL;DR
This survey comprehensively reviews DeepFake generation, detection, and evasion techniques, analyzing their interactions, challenges, and future directions to guide ongoing research in this rapidly evolving field.
Contribution
It provides a detailed taxonomy of DeepFake methods, analyzes the battleground between generators and detectors, and offers interactive tools for exploring research trends.
Findings
Over 318 papers surveyed on DeepFake techniques
Detailed analysis of the adversarial battleground
Identification of research challenges and future directions
Abstract
The creation or manipulation of facial appearance through deep generative approaches, known as DeepFake, have achieved significant progress and promoted a wide range of benign and malicious applications, e.g., visual effect assistance in movie and misinformation generation by faking famous persons. The evil side of this new technique poses another popular study, i.e., DeepFake detection aiming to identify the fake faces from the real ones. With the rapid development of the DeepFake-related studies in the community, both sides have formed the relationship of battleground, pushing the improvements of each other and inspiring new directions, e.g., the evasion of DeepFake detection. Nevertheless, the overview of such battleground and the new direction is unclear and neglected by recent surveys due to the rapid increase of related publications, limiting the in-depth understanding of the…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Adversarial Robustness in Machine Learning · Digital Media Forensic Detection
